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|
| import concurrent |
| import os |
| import warnings |
| from typing import Dict, List, Tuple |
|
|
| import numpy as np |
| import soundfile as sf |
| import torch |
| from omegaconf import OmegaConf |
| from scipy.signal import convolve |
| from scipy.signal.windows import cosine, hamming, hann |
| from tqdm import tqdm |
|
|
| from nemo.collections.asr.parts.preprocessing.perturb import process_augmentations |
| from nemo.collections.asr.parts.utils.data_simulation_utils import ( |
| DataAnnotator, |
| SpeechSampler, |
| build_speaker_samples_map, |
| get_background_noise, |
| get_cleaned_base_path, |
| get_random_offset_index, |
| get_speaker_ids, |
| get_speaker_samples, |
| get_split_points_in_alignments, |
| load_speaker_sample, |
| normalize_audio, |
| per_speaker_normalize, |
| perturb_audio, |
| read_audio_from_buffer, |
| read_noise_manifest, |
| ) |
| from nemo.collections.asr.parts.utils.manifest_utils import read_manifest |
| from nemo.collections.asr.parts.utils.speaker_utils import get_overlap_range, is_overlap, merge_float_intervals |
| from nemo.utils import logging |
|
|
| try: |
| import pyroomacoustics as pra |
| from pyroomacoustics.directivities import CardioidFamily, DirectionVector, DirectivityPattern |
|
|
| PRA = True |
| except ImportError: |
| PRA = False |
| try: |
| from gpuRIR import att2t_SabineEstimator, beta_SabineEstimation, simulateRIR, t2n |
|
|
| GPURIR = True |
| except ImportError: |
| GPURIR = False |
|
|
|
|
| class MultiSpeakerSimulator(object): |
| """ |
| Multispeaker Audio Session Simulator - Simulates multispeaker audio sessions using single-speaker audio files and |
| corresponding word alignments. |
| |
| Args: |
| cfg: OmegaConf configuration loaded from yaml file. |
| |
| Configuration parameters (YAML):: |
| |
| Parameters: |
| manifest_filepath (str): Manifest file with paths to single speaker audio files |
| sr (int): Sampling rate of the input audio files from the manifest |
| random_seed (int): Seed to random number generator |
| |
| session_config: |
| num_speakers (int): Number of unique speakers per multispeaker audio session |
| num_sessions (int): Number of sessions to simulate |
| session_length (int): Length of each simulated multispeaker audio session (seconds) |
| |
| session_params: |
| max_audio_read_sec (int): Max audio length in seconds when loading an audio file |
| sentence_length_params (list): k,p values for a negative_binomial distribution |
| dominance_var (float): Variance in speaker dominance |
| min_dominance (float): Minimum percentage of speaking time per speaker |
| turn_prob (float): Probability of switching speakers after each utterance |
| mean_silence (float): Mean proportion of silence to speaking time [0, 1) |
| mean_silence_var (float): Variance for mean silence in all audio sessions |
| per_silence_var (float): Variance for each silence in an audio session |
| per_silence_min (float): Minimum duration for each silence (default: 0) |
| per_silence_max (float): Maximum duration for each silence (default: -1, no max) |
| mean_overlap (float): Mean proportion of overlap in non-silence duration [0, 1) |
| mean_overlap_var (float): Variance for mean overlap in all audio sessions |
| per_overlap_var (float): Variance for per overlap in each session |
| per_overlap_min (float): Minimum per overlap duration in seconds |
| per_overlap_max (float): Maximum per overlap duration in seconds (-1 for no max) |
| start_window (bool): Whether to window the start of sentences |
| window_type (str): Type of windowing ("hamming", "hann", "cosine") |
| window_size (float): Length of window at start/end of segmented utterance (seconds) |
| start_buffer (float): Buffer of silence before the start of the sentence |
| split_buffer (float): Split RTTM labels if greater than twice this amount of silence |
| release_buffer (float): Buffer before window at end of sentence |
| normalize (bool): Normalize speaker volumes |
| normalization_type (str): "equal" or "var" volume per speaker |
| normalization_var (str): Variance in speaker volume |
| min_volume (float): Minimum speaker volume (variable normalization only) |
| max_volume (float): Maximum speaker volume (variable normalization only) |
| end_buffer (float): Buffer at the end of the session to leave blank |
| |
| outputs: |
| output_dir (str): Output directory for audio sessions and label files |
| output_filename (str): Output filename for the wav and RTTM files |
| overwrite_output (bool): If true, delete the output directory if it exists |
| output_precision (int): Number of decimal places in output files |
| |
| background_noise: |
| add_bg (bool): Add ambient background noise if true |
| background_manifest (str): Path to background noise manifest file |
| snr (int): SNR for background noise (using average speaker power) |
| snr_min (int): Min random SNR (set null to use fixed SNR) |
| snr_max (int): Max random SNR (set null to use fixed SNR) |
| |
| segment_augmentor: |
| add_seg_aug (bool): Enable augmentation on each speech segment (Default: False) |
| segmentor.gain: |
| prob (float): Probability of gain augmentation |
| min_gain_dbfs (float): minimum gain in dB |
| max_gain_dbfs (float): maximum gain in dB |
| |
| session_augmentor: |
| add_sess_aug (bool): Enable audio augmentation on the whole session (Default: False) |
| segmentor.white_noise: |
| prob (float): Probability of adding white noise (Default: 1.0) |
| min_level (float): minimum gain in dB |
| max_level (float): maximum gain in dB |
| |
| speaker_enforcement: |
| enforce_num_speakers (bool): Enforce all requested speakers are present |
| enforce_time (list): Percentage through session that enforcement triggers |
| |
| segment_manifest: |
| window (float): Window length for segmentation |
| shift (float): Shift length for segmentation |
| step_count (int): Number of unit segments per utterance |
| deci (int): Rounding decimals for segment manifest file |
| """ |
|
|
| def __init__(self, cfg): |
| self._params = cfg |
| self.annotator = DataAnnotator(cfg) |
| self.sampler = SpeechSampler(cfg) |
| |
| self._manifest = read_manifest(self._params.data_simulator.manifest_filepath) |
| self._speaker_samples = build_speaker_samples_map(self._manifest) |
| self._noise_samples = [] |
| self._sentence = None |
| self._text = "" |
| self._words = [] |
| self._alignments = [] |
| |
| self._min_alignment_count = 2 |
| self._merged_speech_intervals = [] |
| |
| self._furthest_sample = [0 for n in range(self._params.data_simulator.session_config.num_speakers)] |
| |
| self._missing_overlap = 0 |
| |
| self.base_manifest_filepath = None |
| self.segment_manifest_filepath = None |
| self._max_audio_read_sec = self._params.data_simulator.session_params.max_audio_read_sec |
| self._turn_prob_min = self._params.data_simulator.session_params.get("turn_prob_min", 0.5) |
| |
| self._volume = None |
| self._speaker_ids = None |
| self._device = torch.device("cuda") if torch.cuda.is_available() else torch.device("cpu") |
| self._audio_read_buffer_dict = {} |
| self.add_missing_overlap = self._params.data_simulator.session_params.get("add_missing_overlap", False) |
|
|
| if ( |
| self._params.data_simulator.segment_augmentor.get("augmentor", None) |
| and self._params.data_simulator.segment_augmentor.add_seg_aug |
| ): |
| self.segment_augmentor = process_augmentations( |
| augmenter=self._params.data_simulator.segment_augmentor.augmentor |
| ) |
| else: |
| self.segment_augmentor = None |
|
|
| if ( |
| self._params.data_simulator.session_augmentor.get("augmentor", None) |
| and self._params.data_simulator.session_augmentor.add_sess_aug |
| ): |
| self.session_augmentor = process_augmentations( |
| augmenter=self._params.data_simulator.session_augmentor.augmentor |
| ) |
| else: |
| self.session_augmentor = None |
|
|
| |
| self._check_args() |
|
|
| |
| self._permutated_speaker_inds = self._init_speaker_permutations( |
| num_sess=self._params.data_simulator.session_config.num_sessions, |
| num_speakers=self._params.data_simulator.session_config.num_speakers, |
| all_speaker_ids=self._speaker_samples.keys(), |
| random_seed=self._params.data_simulator.random_seed, |
| ) |
|
|
| |
| self.num_workers = self._params.get("num_workers", 1) |
| self.multiprocessing_chunksize = self._params.data_simulator.get('multiprocessing_chunksize', 10000) |
| self.chunk_count = self._init_chunk_count() |
|
|
| def _init_speaker_permutations(self, num_sess: int, num_speakers: int, all_speaker_ids: List, random_seed: int): |
| """ |
| Initialize the speaker permutations for the number of speakers in the session. |
| When generating the simulated sessions, we want to include as many speakers as possible. |
| This function generates a set of permutations that can be used to sweep all speakers in |
| the source dataset to make sure we maximize the total number of speakers included in |
| the simulated sessions. |
| |
| Args: |
| num_sess (int): Number of sessions to generate |
| num_speakers (int): Number of speakers in each session |
| all_speaker_ids (list): List of all speaker IDs |
| |
| Returns: |
| permuted_inds (np.array): |
| Array of permuted speaker indices to use for each session |
| Dimensions: (num_sess, num_speakers) |
| """ |
| np.random.seed(random_seed) |
| all_speaker_id_counts = len(list(all_speaker_ids)) |
|
|
| |
| perm_set_count = int(np.ceil(num_speakers * num_sess / all_speaker_id_counts)) |
|
|
| target_count = num_speakers * num_sess |
| for count in range(perm_set_count): |
| if target_count < all_speaker_id_counts: |
| seq_len = target_count |
| else: |
| seq_len = all_speaker_id_counts |
| if seq_len <= 0: |
| raise ValueError(f"seq_len is {seq_len} at count {count} and should be greater than 0") |
|
|
| if count == 0: |
| permuted_inds = np.random.permutation(len(all_speaker_ids))[:seq_len] |
| else: |
| permuted_inds = np.hstack((permuted_inds, np.random.permutation(len(all_speaker_ids))[:seq_len])) |
| target_count -= seq_len |
|
|
| logging.info(f"Total {all_speaker_id_counts} speakers in the source dataset.") |
| logging.info(f"Initialized speaker permutations for {num_sess} sessions with {num_speakers} speakers each.") |
| return permuted_inds.reshape(num_sess, num_speakers) |
|
|
| def _init_chunk_count(self): |
| """ |
| Initialize the chunk count for multi-processing to prevent over-flow of job counts. |
| The multi-processing pipeline can freeze if there are more than approximately 10,000 jobs |
| in the pipeline at the same time. |
| """ |
| return int(np.ceil(self._params.data_simulator.session_config.num_sessions / self.multiprocessing_chunksize)) |
|
|
| def _check_args(self): |
| """ |
| Checks YAML arguments to ensure they are within valid ranges. |
| """ |
| if self._params.data_simulator.session_config.num_speakers < 1: |
| raise Exception("At least one speaker is required for making audio sessions (num_speakers < 1)") |
| if ( |
| self._params.data_simulator.session_params.turn_prob < 0 |
| or self._params.data_simulator.session_params.turn_prob > 1 |
| ): |
| raise Exception("Turn probability is outside of [0,1]") |
| if ( |
| self._params.data_simulator.session_params.turn_prob < 0 |
| or self._params.data_simulator.session_params.turn_prob > 1 |
| ): |
| raise Exception("Turn probability is outside of [0,1]") |
| elif ( |
| self._params.data_simulator.session_params.turn_prob < self._turn_prob_min |
| and self._params.data_simulator.speaker_enforcement.enforce_num_speakers == True |
| ): |
| logging.warning( |
| "Turn probability is less than {self._turn_prob_min} while enforce_num_speakers=True, which may result in excessive session lengths. Forcing turn_prob to 0.5." |
| ) |
| self._params.data_simulator.session_params.turn_prob = self._turn_prob_min |
| if self._params.data_simulator.session_params.max_audio_read_sec < 2.5: |
| raise Exception("Max audio read time must be greater than 2.5 seconds") |
|
|
| if self._params.data_simulator.session_params.sentence_length_params[0] <= 0: |
| raise Exception( |
| "k (number of success until the exp. ends) in Sentence length parameter value must be a positive number" |
| ) |
|
|
| if not (0 < self._params.data_simulator.session_params.sentence_length_params[1] <= 1): |
| raise Exception("p (success probability) value in sentence length parameter must be in range (0,1]") |
|
|
| if ( |
| self._params.data_simulator.session_params.mean_overlap < 0 |
| or self._params.data_simulator.session_params.mean_overlap > 1 |
| ): |
| raise Exception("Mean overlap is outside of [0,1]") |
| if ( |
| self._params.data_simulator.session_params.mean_silence < 0 |
| or self._params.data_simulator.session_params.mean_silence > 1 |
| ): |
| raise Exception("Mean silence is outside of [0,1]") |
| if self._params.data_simulator.session_params.mean_silence_var < 0: |
| raise Exception("Mean silence variance is not below 0") |
| if ( |
| self._params.data_simulator.session_params.mean_silence > 0 |
| and self._params.data_simulator.session_params.mean_silence_var |
| >= self._params.data_simulator.session_params.mean_silence |
| * (1 - self._params.data_simulator.session_params.mean_silence) |
| ): |
| raise Exception("Mean silence variance should be lower than mean_silence * (1-mean_silence)") |
| if self._params.data_simulator.session_params.per_silence_var < 0: |
| raise Exception("Per silence variance is below 0") |
|
|
| if self._params.data_simulator.session_params.mean_overlap_var < 0: |
| raise Exception("Mean overlap variance is not larger than 0") |
| if ( |
| self._params.data_simulator.session_params.mean_overlap > 0 |
| and self._params.data_simulator.session_params.mean_overlap_var |
| >= self._params.data_simulator.session_params.mean_overlap |
| * (1 - self._params.data_simulator.session_params.mean_overlap) |
| ): |
| raise Exception("Mean overlap variance should be lower than mean_overlap * (1-mean_overlap)") |
| if self._params.data_simulator.session_params.per_overlap_var < 0: |
| raise Exception("Per overlap variance is not larger than 0") |
|
|
| if ( |
| self._params.data_simulator.session_params.min_dominance < 0 |
| or self._params.data_simulator.session_params.min_dominance > 1 |
| ): |
| raise Exception("Minimum dominance is outside of [0,1]") |
| if ( |
| self._params.data_simulator.speaker_enforcement.enforce_time[0] < 0 |
| or self._params.data_simulator.speaker_enforcement.enforce_time[0] > 1 |
| ): |
| raise Exception("Speaker enforcement start is outside of [0,1]") |
| if ( |
| self._params.data_simulator.speaker_enforcement.enforce_time[1] < 0 |
| or self._params.data_simulator.speaker_enforcement.enforce_time[1] > 1 |
| ): |
| raise Exception("Speaker enforcement end is outside of [0,1]") |
|
|
| if ( |
| self._params.data_simulator.session_params.min_dominance |
| * self._params.data_simulator.session_config.num_speakers |
| > 1 |
| ): |
| raise Exception("Number of speakers times minimum dominance is greater than 1") |
|
|
| if ( |
| self._params.data_simulator.session_params.window_type not in ['hamming', 'hann', 'cosine'] |
| and self._params.data_simulator.session_params.window_type is not None |
| ): |
| raise Exception("Incorrect window type provided") |
|
|
| if len(self._manifest) == 0: |
| raise Exception("Manifest file is empty. Check that the source path is correct.") |
|
|
| def clean_up(self): |
| """ |
| Clear the system memory. Cache data for audio files and alignments are removed. |
| """ |
| self._sentence = None |
| self._words = [] |
| self._alignments = [] |
| self._audio_read_buffer_dict = {} |
| torch.cuda.empty_cache() |
|
|
| def _get_speaker_dominance(self) -> List[float]: |
| """ |
| Get the dominance value for each speaker, accounting for the dominance variance and |
| the minimum per-speaker dominance. |
| |
| Returns: |
| dominance (list): Per-speaker dominance |
| """ |
| dominance_mean = 1.0 / self._params.data_simulator.session_config.num_speakers |
| dominance = np.random.normal( |
| loc=dominance_mean, |
| scale=self._params.data_simulator.session_params.dominance_var, |
| size=self._params.data_simulator.session_config.num_speakers, |
| ) |
| dominance = np.clip(dominance, a_min=0, a_max=np.inf) |
| |
| total = np.sum(dominance) |
| if total == 0: |
| for i in range(len(dominance)): |
| dominance[i] += self._params.data_simulator.session_params.min_dominance |
| |
| dominance = (dominance / total) * ( |
| 1 |
| - self._params.data_simulator.session_params.min_dominance |
| * self._params.data_simulator.session_config.num_speakers |
| ) |
| for i in range(len(dominance)): |
| dominance[i] += self._params.data_simulator.session_params.min_dominance |
| if ( |
| i > 0 |
| ): |
| dominance[i] = dominance[i] + dominance[i - 1] |
| return dominance |
|
|
| def _increase_speaker_dominance( |
| self, base_speaker_dominance: List[float], factor: int |
| ) -> Tuple[List[float], bool]: |
| """ |
| Increase speaker dominance for unrepresented speakers (used only in enforce mode). |
| Increases the dominance for these speakers by the input factor (and then re-normalizes the probabilities to 1). |
| |
| Args: |
| base_speaker_dominance (list): Dominance values for each speaker. |
| factor (int): Factor to increase dominance of unrepresented speakers by. |
| Returns: |
| dominance (list): Per-speaker dominance |
| enforce (bool): Whether to keep enforce mode turned on |
| """ |
| increase_percent = [] |
| for i in range(self._params.data_simulator.session_config.num_speakers): |
| if self._furthest_sample[i] == 0: |
| increase_percent.append(i) |
| |
| if len(increase_percent) > 0: |
| |
| dominance = np.copy(base_speaker_dominance) |
| for i in range(len(dominance) - 1, 0, -1): |
| dominance[i] = dominance[i] - dominance[i - 1] |
| |
| for i in increase_percent: |
| dominance[i] = dominance[i] * factor |
| |
| dominance = dominance / np.sum(dominance) |
| for i in range(1, len(dominance)): |
| dominance[i] = dominance[i] + dominance[i - 1] |
| enforce = True |
| else: |
| dominance = base_speaker_dominance |
| enforce = False |
| return dominance, enforce |
|
|
| def _set_speaker_volume(self): |
| """ |
| Set the volume for each speaker (either equal volume or variable speaker volume). |
| """ |
| if self._params.data_simulator.session_params.normalization_type == 'equal': |
| self._volume = np.ones(self._params.data_simulator.session_config.num_speakers) |
| elif self._params.data_simulator.session_params.normalization_type == 'variable': |
| self._volume = np.random.normal( |
| loc=1.0, |
| scale=self._params.data_simulator.session_params.normalization_var, |
| size=self._params.data_simulator.session_config.num_speakers, |
| ) |
| self._volume = np.clip( |
| np.array(self._volume), |
| a_min=self._params.data_simulator.session_params.min_volume, |
| a_max=self._params.data_simulator.session_params.max_volume, |
| ).tolist() |
|
|
| def _get_next_speaker(self, prev_speaker: int, dominance: List[float]) -> int: |
| """ |
| Get the next speaker (accounting for turn probability and dominance distribution). |
| |
| Args: |
| prev_speaker (int): Previous speaker turn. |
| dominance (list): Dominance values for each speaker. |
| Returns: |
| prev_speaker/speaker_turn (int): Speaker turn |
| """ |
| if self._params.data_simulator.session_config.num_speakers == 1: |
| prev_speaker = 0 if prev_speaker is None else prev_speaker |
| return prev_speaker |
| else: |
| if ( |
| np.random.uniform(0, 1) > self._params.data_simulator.session_params.turn_prob |
| and prev_speaker is not None |
| ): |
| return prev_speaker |
| else: |
| speaker_turn = prev_speaker |
| while speaker_turn == prev_speaker: |
| rand = np.random.uniform(0, 1) |
| speaker_turn = 0 |
| while rand > dominance[speaker_turn]: |
| speaker_turn += 1 |
| return speaker_turn |
|
|
| def _get_window(self, window_amount: int, start: bool = False): |
| """ |
| Get window curve to alleviate abrupt change of time-series signal when segmenting audio samples. |
| |
| Args: |
| window_amount (int): Window length (in terms of number of samples). |
| start (bool): If true, return the first half of the window. |
| |
| Returns: |
| window (tensor): Half window (either first half or second half) |
| """ |
| if self._params.data_simulator.session_params.window_type == 'hamming': |
| window = hamming(window_amount * 2) |
| elif self._params.data_simulator.session_params.window_type == 'hann': |
| window = hann(window_amount * 2) |
| elif self._params.data_simulator.session_params.window_type == 'cosine': |
| window = cosine(window_amount * 2) |
| else: |
| raise Exception("Incorrect window type provided") |
|
|
| window = torch.from_numpy(window).to(self._device) |
|
|
| |
| if start: |
| return window[:window_amount] |
| else: |
| return window[window_amount:] |
|
|
| def _get_start_buffer_and_window(self, first_alignment: int) -> Tuple[int, int]: |
| """ |
| Get the start cutoff and window length for smoothing the start of the sentence. |
| |
| Args: |
| first_alignment (int): Start of the first word (in terms of number of samples). |
| Returns: |
| start_cutoff (int): Amount into the audio clip to start |
| window_amount (int): Window length |
| """ |
| window_amount = int(self._params.data_simulator.session_params.window_size * self._params.data_simulator.sr) |
| start_buffer = int(self._params.data_simulator.session_params.start_buffer * self._params.data_simulator.sr) |
|
|
| if first_alignment < start_buffer: |
| window_amount = 0 |
| start_cutoff = 0 |
| elif first_alignment < start_buffer + window_amount: |
| window_amount = first_alignment - start_buffer |
| start_cutoff = 0 |
| else: |
| start_cutoff = first_alignment - start_buffer - window_amount |
|
|
| return start_cutoff, window_amount |
|
|
| def _get_end_buffer_and_window( |
| self, current_sample_cursor: int, remaining_dur_samples: int, remaining_len_audio_file: int |
| ) -> Tuple[int, int]: |
| """ |
| Get the end buffer and window length for smoothing the end of the sentence. |
| |
| Args: |
| current_sample_cursor (int): Current location in the target file (in terms of number of samples). |
| remaining_dur_samples (int): Remaining duration in the target file (in terms of number of samples). |
| remaining_len_audio_file (int): Length remaining in audio file (in terms of number of samples). |
| Returns: |
| release_buffer (int): Amount after the end of the last alignment to include |
| window_amount (int): Window length |
| """ |
| window_amount = int(self._params.data_simulator.session_params.window_size * self._params.data_simulator.sr) |
| release_buffer = int( |
| self._params.data_simulator.session_params.release_buffer * self._params.data_simulator.sr |
| ) |
|
|
| if current_sample_cursor + release_buffer > remaining_dur_samples: |
| release_buffer = remaining_dur_samples - current_sample_cursor |
| window_amount = 0 |
| elif current_sample_cursor + window_amount + release_buffer > remaining_dur_samples: |
| window_amount = remaining_dur_samples - current_sample_cursor - release_buffer |
|
|
| if remaining_len_audio_file < release_buffer: |
| release_buffer = remaining_len_audio_file |
| window_amount = 0 |
| elif remaining_len_audio_file < release_buffer + window_amount: |
| window_amount = remaining_len_audio_file - release_buffer |
|
|
| return release_buffer, window_amount |
|
|
| def _check_missing_speakers(self, num_missing: int = 0): |
| """ |
| Check if any speakers were not included in the clip and display a warning. |
| |
| Args: |
| num_missing (int): Number of missing speakers. |
| """ |
| for k in range(len(self._furthest_sample)): |
| if self._furthest_sample[k] == 0: |
| num_missing += 1 |
| if num_missing != 0: |
| warnings.warn( |
| f"{self._params.data_simulator.session_config.num_speakers - num_missing}" |
| "speakers were included in the clip instead of the requested amount of " |
| f"{self._params.data_simulator.session_config.num_speakers}" |
| ) |
|
|
| def _add_file( |
| self, |
| audio_manifest: dict, |
| audio_file, |
| sentence_word_count: int, |
| max_word_count_in_sentence: int, |
| max_samples_in_sentence: int, |
| random_offset: bool = False, |
| ) -> Tuple[int, torch.Tensor]: |
| """ |
| Add audio file to current sentence (up to the desired number of words). |
| Uses the alignments to segment the audio file. |
| NOTE: 0 index is always silence in `audio_manifest['words']`, so we choose `offset_idx=1` as the first word |
| |
| Args: |
| audio_manifest (dict): Line from manifest file for current audio file |
| audio_file (tensor): Current loaded audio file |
| sentence_word_count (int): Running count for number of words in sentence |
| max_word_count_in_sentence (int): Maximum count for number of words in sentence |
| max_samples_in_sentence (int): Maximum length for sentence in terms of samples |
| |
| Returns: |
| sentence_word_count+current_word_count (int): Running word count |
| len(self._sentence) (tensor): Current length of the audio file |
| """ |
| |
| if random_offset: |
| offset_idx = np.random.randint(low=1, high=len(audio_manifest['words'])) |
| else: |
| offset_idx = 1 |
|
|
| first_alignment = int(audio_manifest['alignments'][offset_idx - 1] * self._params.data_simulator.sr) |
| start_cutoff, start_window_amount = self._get_start_buffer_and_window(first_alignment) |
| if not self._params.data_simulator.session_params.start_window: |
| start_window_amount = 0 |
|
|
| |
| sentence_samples = len(self._sentence) |
|
|
| remaining_dur_samples = max_samples_in_sentence - sentence_samples |
| remaining_duration = max_word_count_in_sentence - sentence_word_count |
| prev_dur_samples, dur_samples, curr_dur_samples = 0, 0, 0 |
| current_word_count = 0 |
| word_idx = offset_idx |
| silence_count = 1 |
| while ( |
| current_word_count < remaining_duration |
| and dur_samples < remaining_dur_samples |
| and word_idx < len(audio_manifest['words']) |
| ): |
| dur_samples = int(audio_manifest['alignments'][word_idx] * self._params.data_simulator.sr) - start_cutoff |
|
|
| |
| if curr_dur_samples + dur_samples > remaining_dur_samples: |
| |
| break |
|
|
| word = audio_manifest['words'][word_idx] |
|
|
| if silence_count > 0 and word == "": |
| break |
|
|
| self._words.append(word) |
| self._alignments.append( |
| float(sentence_samples * 1.0 / self._params.data_simulator.sr) |
| - float(start_cutoff * 1.0 / self._params.data_simulator.sr) |
| + audio_manifest['alignments'][word_idx] |
| ) |
|
|
| if word == "": |
| word_idx += 1 |
| silence_count += 1 |
| continue |
| elif self._text == "": |
| self._text += word |
| else: |
| self._text += " " + word |
|
|
| word_idx += 1 |
| current_word_count += 1 |
| prev_dur_samples = dur_samples |
| curr_dur_samples += dur_samples |
|
|
| |
| if self._params.data_simulator.session_params.window_type is not None: |
| if start_window_amount > 0: |
| window = self._get_window(start_window_amount, start=True) |
| self._sentence = self._sentence.to(self._device) |
| self._sentence = torch.cat( |
| ( |
| self._sentence, |
| torch.multiply(audio_file[start_cutoff : start_cutoff + start_window_amount], window), |
| ), |
| 0, |
| ) |
| self._sentence = torch.cat( |
| ( |
| self._sentence, |
| audio_file[start_cutoff + start_window_amount : start_cutoff + prev_dur_samples], |
| ), |
| 0, |
| ).to(self._device) |
|
|
| else: |
| self._sentence = torch.cat( |
| (self._sentence, audio_file[start_cutoff : start_cutoff + prev_dur_samples]), 0 |
| ).to(self._device) |
|
|
| |
| if ( |
| word_idx < len(audio_manifest['words']) |
| ) and self._params.data_simulator.session_params.window_type is not None: |
| release_buffer, end_window_amount = self._get_end_buffer_and_window( |
| prev_dur_samples, |
| remaining_dur_samples, |
| len(audio_file[start_cutoff + prev_dur_samples :]), |
| ) |
| self._sentence = torch.cat( |
| ( |
| self._sentence, |
| audio_file[start_cutoff + prev_dur_samples : start_cutoff + prev_dur_samples + release_buffer], |
| ), |
| 0, |
| ).to(self._device) |
|
|
| if end_window_amount > 0: |
| window = self._get_window(end_window_amount, start=False) |
| sig_start = start_cutoff + prev_dur_samples + release_buffer |
| sig_end = start_cutoff + prev_dur_samples + release_buffer + end_window_amount |
| windowed_audio_file = torch.multiply(audio_file[sig_start:sig_end], window) |
| self._sentence = torch.cat((self._sentence, windowed_audio_file), 0).to(self._device) |
|
|
| del audio_file |
| return sentence_word_count + current_word_count, len(self._sentence) |
|
|
| def _build_sentence( |
| self, |
| speaker_turn: int, |
| speaker_ids: List[str], |
| speaker_wav_align_map: Dict[str, list], |
| max_samples_in_sentence: int, |
| ): |
| """ |
| Build a new sentence by attaching utterance samples together until the sentence has reached a desired length. |
| While generating the sentence, alignment information is used to segment the audio. |
| |
| Args: |
| speaker_turn (int): Current speaker turn. |
| speaker_ids (list): LibriSpeech speaker IDs for each speaker in the current session. |
| speaker_wav_align_map (dict): Dictionary containing speaker IDs and their corresponding wav filepath and alignments. |
| max_samples_in_sentence (int): Maximum length for sentence in terms of samples |
| """ |
| |
| sl = ( |
| np.random.negative_binomial( |
| self._params.data_simulator.session_params.sentence_length_params[0], |
| self._params.data_simulator.session_params.sentence_length_params[1], |
| ) |
| + 1 |
| ) |
|
|
| |
| self._sentence = torch.zeros(0, dtype=torch.float64, device=self._device) |
| self._text = "" |
| self._words, self._alignments = [], [] |
| sentence_word_count, sentence_samples = 0, 0 |
|
|
| |
| while sentence_word_count < sl and sentence_samples < max_samples_in_sentence: |
| audio_manifest = load_speaker_sample( |
| speaker_wav_align_map=speaker_wav_align_map, |
| speaker_ids=speaker_ids, |
| speaker_turn=speaker_turn, |
| min_alignment_count=self._min_alignment_count, |
| ) |
|
|
| offset_index = get_random_offset_index( |
| audio_manifest=audio_manifest, |
| audio_read_buffer_dict=self._audio_read_buffer_dict, |
| offset_min=0, |
| max_audio_read_sec=self._max_audio_read_sec, |
| min_alignment_count=self._min_alignment_count, |
| ) |
|
|
| audio_file, sr, audio_manifest = read_audio_from_buffer( |
| audio_manifest=audio_manifest, |
| buffer_dict=self._audio_read_buffer_dict, |
| offset_index=offset_index, |
| device=self._device, |
| max_audio_read_sec=self._max_audio_read_sec, |
| min_alignment_count=self._min_alignment_count, |
| read_subset=True, |
| ) |
|
|
| |
| if self._params.data_simulator.segment_augmentor.add_seg_aug: |
| audio_file = perturb_audio(audio_file, sr, self.segment_augmentor, device=self._device) |
|
|
| sentence_word_count, sentence_samples = self._add_file( |
| audio_manifest, audio_file, sentence_word_count, sl, max_samples_in_sentence |
| ) |
|
|
| |
| if self._params.data_simulator.session_params.normalize and torch.max(torch.abs(self._sentence)) > 0: |
| splits = get_split_points_in_alignments( |
| words=self._words, |
| alignments=self._alignments, |
| split_buffer=self._params.data_simulator.session_params.split_buffer, |
| sr=self._params.data_simulator.sr, |
| sentence_audio_len=len(self._sentence), |
| ) |
| self._sentence = per_speaker_normalize( |
| sentence_audio=self._sentence, |
| splits=splits, |
| speaker_turn=speaker_turn, |
| volume=self._volume, |
| device=self._device, |
| ) |
|
|
| def _add_silence_or_overlap( |
| self, |
| speaker_turn: int, |
| prev_speaker: int, |
| start: int, |
| length: int, |
| session_len_samples: int, |
| prev_len_samples: int, |
| enforce: bool, |
| ) -> int: |
| """ |
| Returns new overlapped (or shifted) start position after inserting overlap or silence. |
| |
| Args: |
| speaker_turn (int): The integer index of the current speaker turn. |
| prev_speaker (int): The integer index of the previous speaker turn. |
| start (int): Current start of the audio file being inserted. |
| length (int): Length of the audio file being inserted. |
| session_len_samples (int): Maximum length of the session in terms of number of samples |
| prev_len_samples (int): Length of previous sentence (in terms of number of samples) |
| enforce (bool): Whether speaker enforcement mode is being used |
| Returns: |
| new_start (int): New starting position in the session accounting for overlap or silence |
| """ |
| running_len_samples = start + length |
| |
| non_silence_len_samples = self.sampler.running_speech_len_samples + length |
|
|
| |
| add_overlap = self.sampler.silence_vs_overlap_selector(running_len_samples, non_silence_len_samples) |
|
|
| |
| if prev_speaker != speaker_turn and prev_speaker is not None and add_overlap: |
| desired_overlap_amount = self.sampler.sample_from_overlap_model(non_silence_len_samples) |
| new_start = start - desired_overlap_amount |
|
|
| |
| if new_start < 0: |
| desired_overlap_amount -= 0 - new_start |
| self._missing_overlap += 0 - new_start |
| new_start = 0 |
|
|
| |
| if new_start < self._furthest_sample[speaker_turn]: |
| desired_overlap_amount -= self._furthest_sample[speaker_turn] - new_start |
| self._missing_overlap += self._furthest_sample[speaker_turn] - new_start |
| new_start = self._furthest_sample[speaker_turn] |
|
|
| prev_start = start - prev_len_samples |
| prev_end = start |
| new_end = new_start + length |
|
|
| |
| overlap_amount = 0 |
| if is_overlap([prev_start, prev_end], [new_start, new_end]): |
| overlap_range = get_overlap_range([prev_start, prev_end], [new_start, new_end]) |
| overlap_amount = max(overlap_range[1] - overlap_range[0], 0) |
|
|
| if overlap_amount < desired_overlap_amount: |
| self._missing_overlap += desired_overlap_amount - overlap_amount |
| self.sampler.running_overlap_len_samples += overlap_amount |
|
|
| |
| else: |
| silence_amount = self.sampler.sample_from_silence_model(running_len_samples) |
| if start + length + silence_amount > session_len_samples and not enforce: |
| new_start = max(session_len_samples - length, start) |
| else: |
| new_start = start + silence_amount |
| return new_start |
|
|
| def _get_session_meta_data(self, array: np.ndarray, snr: float) -> dict: |
| """ |
| Get meta data for the current session. |
| |
| Args: |
| array (np.ndarray): audio array |
| snr (float): signal-to-noise ratio |
| |
| Returns: |
| dict: meta data |
| """ |
| meta_data = { |
| "duration": array.shape[0] / self._params.data_simulator.sr, |
| "silence_mean": self.sampler.sess_silence_mean, |
| "overlap_mean": self.sampler.sess_overlap_mean, |
| "bg_snr": snr, |
| "speaker_ids": self._speaker_ids, |
| "speaker_volumes": list(self._volume), |
| } |
| return meta_data |
|
|
| def _get_session_silence_from_rttm(self, rttm_list: List[str], running_len_samples: int): |
| """ |
| Calculate the total speech and silence duration in the current session using RTTM file. |
| |
| Args: |
| rttm_list (list): |
| List of RTTM timestamps |
| running_len_samples (int): |
| Total number of samples generated so far in the current session |
| |
| Returns: |
| sess_speech_len_rttm (int): |
| The total number of speech samples in the current session |
| sess_silence_len_rttm (int): |
| The total number of silence samples in the current session |
| """ |
| all_sample_list = [] |
| for x_raw in rttm_list: |
| x = [token for token in x_raw.split()] |
| all_sample_list.append([float(x[0]), float(x[1])]) |
|
|
| self._merged_speech_intervals = merge_float_intervals(all_sample_list) |
| total_speech_in_secs = sum([x[1] - x[0] for x in self._merged_speech_intervals]) |
| total_silence_in_secs = running_len_samples / self._params.data_simulator.sr - total_speech_in_secs |
| sess_speech_len = int(total_speech_in_secs * self._params.data_simulator.sr) |
| sess_silence_len = int(total_silence_in_secs * self._params.data_simulator.sr) |
| return sess_speech_len, sess_silence_len |
|
|
| def _add_sentence_to_array( |
| self, start: int, length: int, array: torch.Tensor, is_speech: torch.Tensor |
| ) -> Tuple[torch.Tensor, torch.Tensor, int]: |
| """ |
| Add a sentence to the session array containing time-series signal. |
| |
| Args: |
| start (int): Starting position in the session |
| length (int): Length of the sentence |
| array (torch.Tensor): Session array |
| is_speech (torch.Tensor): Session array containing speech/non-speech labels |
| |
| Returns: |
| array (torch.Tensor): Session array in torch.Tensor format |
| is_speech (torch.Tensor): Session array containing speech/non-speech labels in torch.Tensor format |
| """ |
| end = start + length |
| if end > len(array): |
| array = torch.nn.functional.pad(array, (0, end - len(array))) |
| is_speech = torch.nn.functional.pad(is_speech, (0, end - len(is_speech))) |
| array[start:end] += self._sentence |
| is_speech[start:end] = 1 |
| return array, is_speech, end |
|
|
| def _generate_session( |
| self, |
| idx: int, |
| basepath: str, |
| filename: str, |
| speaker_ids: List[str], |
| speaker_wav_align_map: Dict[str, list], |
| noise_samples: list, |
| device: torch.device, |
| enforce_counter: int = 2, |
| ): |
| """ |
| _generate_session function without RIR simulation. |
| Generate a multispeaker audio session and corresponding label files. |
| |
| Args: |
| idx (int): Index for current session (out of total number of sessions). |
| basepath (str): Path to output directory. |
| filename (str): Filename for output files. |
| speaker_ids (list): List of speaker IDs that will be used in this session. |
| speaker_wav_align_map (dict): Dictionary containing speaker IDs and their corresponding wav filepath and alignments. |
| noise_samples (list): List of randomly sampled noise source files that will be used for generating this session. |
| device (torch.device): Device to use for generating this session. |
| enforce_counter (int): In enforcement mode, dominance is increased by a factor of enforce_counter for unrepresented speakers |
| """ |
| random_seed = self._params.data_simulator.random_seed |
| np.random.seed(random_seed + idx) |
|
|
| self._device = device |
| speaker_dominance = self._get_speaker_dominance() |
| base_speaker_dominance = np.copy(speaker_dominance) |
| self._set_speaker_volume() |
|
|
| running_len_samples, prev_len_samples = 0, 0 |
| prev_speaker = None |
| self.annotator.init_annotation_lists() |
| self._noise_samples = noise_samples |
| self._furthest_sample = [0 for n in range(self._params.data_simulator.session_config.num_speakers)] |
| self._missing_silence = 0 |
|
|
| |
| enforce_time = np.random.uniform( |
| self._params.data_simulator.speaker_enforcement.enforce_time[0], |
| self._params.data_simulator.speaker_enforcement.enforce_time[1], |
| ) |
| enforce = self._params.data_simulator.speaker_enforcement.enforce_num_speakers |
|
|
| session_len_samples = int( |
| (self._params.data_simulator.session_config.session_length * self._params.data_simulator.sr) |
| ) |
| array = torch.zeros(session_len_samples).to(self._device) |
| is_speech = torch.zeros(session_len_samples).to(self._device) |
|
|
| self.sampler.get_session_silence_mean() |
| self.sampler.get_session_overlap_mean() |
|
|
| while running_len_samples < session_len_samples or enforce: |
| |
| |
| if running_len_samples > enforce_time * session_len_samples and enforce: |
| speaker_dominance, enforce = self._increase_speaker_dominance(base_speaker_dominance, enforce_counter) |
| if enforce: |
| enforce_counter += 1 |
|
|
| |
| speaker_turn = self._get_next_speaker(prev_speaker, speaker_dominance) |
|
|
| |
| max_samples_in_sentence = session_len_samples - running_len_samples |
| if enforce: |
| max_samples_in_sentence = float('inf') |
| elif ( |
| max_samples_in_sentence |
| < self._params.data_simulator.session_params.end_buffer * self._params.data_simulator.sr |
| ): |
| break |
|
|
| |
| self._build_sentence(speaker_turn, speaker_ids, speaker_wav_align_map, max_samples_in_sentence) |
| length = len(self._sentence) |
|
|
| |
| start = self._add_silence_or_overlap( |
| speaker_turn=speaker_turn, |
| prev_speaker=prev_speaker, |
| start=running_len_samples, |
| length=length, |
| session_len_samples=session_len_samples, |
| prev_len_samples=prev_len_samples, |
| enforce=enforce, |
| ) |
| |
| array, is_speech, end = self._add_sentence_to_array( |
| start=start, |
| length=length, |
| array=array, |
| is_speech=is_speech, |
| ) |
|
|
| |
| new_rttm_entries = self.annotator.create_new_rttm_entry( |
| words=self._words, |
| alignments=self._alignments, |
| start=start / self._params.data_simulator.sr, |
| end=end / self._params.data_simulator.sr, |
| speaker_id=speaker_ids[speaker_turn], |
| ) |
|
|
| self.annotator.annote_lists['rttm'].extend(new_rttm_entries) |
|
|
| new_json_entry = self.annotator.create_new_json_entry( |
| text=self._text, |
| wav_filename=os.path.join(basepath, filename + '.wav'), |
| start=start / self._params.data_simulator.sr, |
| length=length / self._params.data_simulator.sr, |
| speaker_id=speaker_ids[speaker_turn], |
| rttm_filepath=os.path.join(basepath, filename + '.rttm'), |
| ctm_filepath=os.path.join(basepath, filename + '.ctm'), |
| ) |
| self.annotator.annote_lists['json'].append(new_json_entry) |
|
|
| new_ctm_entries, _ = self.annotator.create_new_ctm_entry( |
| words=self._words, |
| alignments=self._alignments, |
| session_name=filename, |
| speaker_id=speaker_ids[speaker_turn], |
| start=float(start / self._params.data_simulator.sr), |
| ) |
|
|
| self.annotator.annote_lists['ctm'].extend(new_ctm_entries) |
|
|
| running_len_samples = np.maximum(running_len_samples, end) |
| ( |
| self.sampler.running_speech_len_samples, |
| self.sampler.running_silence_len_samples, |
| ) = self._get_session_silence_from_rttm( |
| rttm_list=self.annotator.annote_lists['rttm'], running_len_samples=running_len_samples |
| ) |
|
|
| self._furthest_sample[speaker_turn] = running_len_samples |
| prev_speaker = speaker_turn |
| prev_len_samples = length |
|
|
| |
| if self._params.data_simulator.session_augmentor.add_sess_aug: |
| |
| array = perturb_audio(array, self._params.data_simulator.sr, self.session_augmentor, device=array.device) |
|
|
| |
| if self._params.data_simulator.background_noise.add_bg: |
| if len(self._noise_samples) > 0: |
| avg_power_array = torch.mean(array[is_speech == 1] ** 2) |
| bg, snr, _ = get_background_noise( |
| len_array=len(array), |
| power_array=avg_power_array, |
| noise_samples=self._noise_samples, |
| audio_read_buffer_dict=self._audio_read_buffer_dict, |
| snr_min=self._params.data_simulator.background_noise.snr_min, |
| snr_max=self._params.data_simulator.background_noise.snr_max, |
| background_noise_snr=self._params.data_simulator.background_noise.snr, |
| seed=(random_seed + idx), |
| device=self._device, |
| ) |
| array += bg |
| else: |
| raise ValueError('No background noise samples found in self._noise_samples.') |
| else: |
| snr = "N/A" |
|
|
| |
| array = normalize_audio(array) |
|
|
| if torch.is_tensor(array): |
| array = array.cpu().numpy() |
| sf.write(os.path.join(basepath, filename + '.wav'), array, self._params.data_simulator.sr) |
|
|
| self.annotator.write_annotation_files( |
| basepath=basepath, |
| filename=filename, |
| meta_data=self._get_session_meta_data(array=array, snr=snr), |
| ) |
|
|
| |
| del array |
| self.clean_up() |
| return basepath, filename |
|
|
| def generate_sessions(self, random_seed: int = None): |
| """ |
| Generate several multispeaker audio sessions and corresponding list files. |
| |
| Args: |
| random_seed (int): random seed for reproducibility |
| """ |
| logging.info("Generating Diarization Sessions") |
| if random_seed is None: |
| random_seed = self._params.data_simulator.random_seed |
| np.random.seed(random_seed) |
|
|
| output_dir = self._params.data_simulator.outputs.output_dir |
|
|
| basepath = get_cleaned_base_path( |
| output_dir, overwrite_output=self._params.data_simulator.outputs.overwrite_output |
| ) |
| OmegaConf.save(self._params, os.path.join(output_dir, "params.yaml")) |
|
|
| tp = concurrent.futures.ProcessPoolExecutor(max_workers=self.num_workers) |
| futures = [] |
|
|
| num_sessions = self._params.data_simulator.session_config.num_sessions |
| source_noise_manifest = read_noise_manifest( |
| add_bg=self._params.data_simulator.background_noise.add_bg, |
| background_manifest=self._params.data_simulator.background_noise.background_manifest, |
| ) |
| queue = [] |
|
|
| |
| for sess_idx in range(num_sessions): |
| filename = self._params.data_simulator.outputs.output_filename + f"_{sess_idx}" |
| speaker_ids = get_speaker_ids( |
| sess_idx=sess_idx, |
| speaker_samples=self._speaker_samples, |
| permutated_speaker_inds=self._permutated_speaker_inds, |
| ) |
| speaker_wav_align_map = get_speaker_samples(speaker_ids=speaker_ids, speaker_samples=self._speaker_samples) |
| noise_samples = self.sampler.sample_noise_manifest(noise_manifest=source_noise_manifest) |
|
|
| if torch.cuda.is_available(): |
| device = torch.device(f"cuda:{sess_idx % torch.cuda.device_count()}") |
| else: |
| device = self._device |
| queue.append((sess_idx, basepath, filename, speaker_ids, speaker_wav_align_map, noise_samples, device)) |
|
|
| |
| if self.num_workers > 1: |
| self._manifest = None |
| self._speaker_samples = None |
|
|
| |
| for chunk_idx in range(self.chunk_count): |
| futures = [] |
| stt_idx, end_idx = ( |
| chunk_idx * self.multiprocessing_chunksize, |
| min((chunk_idx + 1) * self.multiprocessing_chunksize, num_sessions), |
| ) |
| for sess_idx in range(stt_idx, end_idx): |
| self._furthest_sample = [0 for n in range(self._params.data_simulator.session_config.num_speakers)] |
| self._audio_read_buffer_dict = {} |
| if self.num_workers > 1: |
| futures.append(tp.submit(self._generate_session, *queue[sess_idx])) |
| else: |
| futures.append(queue[sess_idx]) |
|
|
| if self.num_workers > 1: |
| generator = concurrent.futures.as_completed(futures) |
| else: |
| generator = futures |
|
|
| for future in tqdm( |
| generator, |
| desc=f"[{chunk_idx+1}/{self.chunk_count}] Waiting jobs from {stt_idx+1: 2} to {end_idx: 2}", |
| unit="jobs", |
| total=len(futures), |
| ): |
| if self.num_workers > 1: |
| basepath, filename = future.result() |
| else: |
| self._noise_samples = self.sampler.sample_noise_manifest( |
| noise_manifest=source_noise_manifest, |
| ) |
| basepath, filename = self._generate_session(*future) |
|
|
| self.annotator.add_to_filename_lists(basepath=basepath, filename=filename) |
|
|
| |
| self._check_missing_speakers() |
|
|
| tp.shutdown() |
| self.annotator.write_filelist_files(basepath=basepath) |
| logging.info(f"Data simulation has been completed, results saved at: {basepath}") |
|
|
|
|
| class RIRMultiSpeakerSimulator(MultiSpeakerSimulator): |
| """ |
| RIR Augmented Multispeaker Audio Session Simulator - simulates multispeaker audio sessions using single-speaker |
| audio files and corresponding word alignments, as well as simulated RIRs for augmentation. |
| |
| Args: |
| cfg: OmegaConf configuration loaded from yaml file. |
| |
| Additional configuration parameters (on top of ``MultiSpeakerSimulator``):: |
| |
| rir_generation: |
| use_rir (bool): Whether to generate synthetic RIR |
| toolkit (str): Which toolkit to use ("pyroomacoustics", "gpuRIR") |
| room_config: |
| room_sz (list): Size of the shoebox room environment |
| pos_src (list): Positions of the speakers in the simulated room |
| noise_src_pos (list): Position in room for background noise source |
| mic_config: |
| num_channels (int): Number of output audio channels |
| pos_rcv (list): Microphone positions in the simulated room |
| orV_rcv (list or null): Microphone orientations |
| mic_pattern (str): Microphone type ("omni") |
| absorbtion_params: |
| abs_weights (list): Absorption coefficient ratios for each surface |
| T60 (float): Room reverberation time (decay by 60dB) |
| att_diff (float): Starting attenuation for diffuse reverberation model |
| att_max (float): End attenuation for diffuse reverberation model (gpuRIR) |
| """ |
|
|
| def __init__(self, cfg): |
| super().__init__(cfg) |
| self._check_args_rir() |
|
|
| def _check_args_rir(self): |
| """ |
| Checks RIR YAML arguments to ensure they are within valid ranges |
| """ |
|
|
| if not (self._params.data_simulator.rir_generation.toolkit in ['pyroomacoustics', 'gpuRIR']): |
| raise Exception("Toolkit must be pyroomacoustics or gpuRIR") |
| if self._params.data_simulator.rir_generation.toolkit == 'pyroomacoustics' and not PRA: |
| raise ImportError("pyroomacoustics should be installed to run this simulator with RIR augmentation") |
|
|
| if self._params.data_simulator.rir_generation.toolkit == 'gpuRIR' and not GPURIR: |
| raise ImportError("gpuRIR should be installed to run this simulator with RIR augmentation") |
|
|
| if len(self._params.data_simulator.rir_generation.room_config.room_sz) != 3: |
| raise Exception("Incorrect room dimensions provided") |
| if self._params.data_simulator.rir_generation.mic_config.num_channels == 0: |
| raise Exception("Number of channels should be greater or equal to 1") |
| if len(self._params.data_simulator.rir_generation.room_config.pos_src) < 2: |
| raise Exception("Less than 2 provided source positions") |
| for sublist in self._params.data_simulator.rir_generation.room_config.pos_src: |
| if len(sublist) != 3: |
| raise Exception("Three coordinates must be provided for sources positions") |
| if len(self._params.data_simulator.rir_generation.mic_config.pos_rcv) == 0: |
| raise Exception("No provided mic positions") |
| for sublist in self._params.data_simulator.rir_generation.room_config.pos_src: |
| if len(sublist) != 3: |
| raise Exception("Three coordinates must be provided for mic positions") |
|
|
| if self._params.data_simulator.session_config.num_speakers != len( |
| self._params.data_simulator.rir_generation.room_config.pos_src |
| ): |
| raise Exception("Number of speakers is not equal to the number of provided source positions") |
| if self._params.data_simulator.rir_generation.mic_config.num_channels != len( |
| self._params.data_simulator.rir_generation.mic_config.pos_rcv |
| ): |
| raise Exception("Number of channels is not equal to the number of provided microphone positions") |
|
|
| if ( |
| not self._params.data_simulator.rir_generation.mic_config.orV_rcv |
| and self._params.data_simulator.rir_generation.mic_config.mic_pattern != 'omni' |
| ): |
| raise Exception("Microphone orientations must be provided if mic_pattern != omni") |
| if self._params.data_simulator.rir_generation.mic_config.orV_rcv is not None: |
| if len(self._params.data_simulator.rir_generation.mic_config.orV_rcv) != len( |
| self._params.data_simulator.rir_generation.mic_config.pos_rcv |
| ): |
| raise Exception("A different number of microphone orientations and microphone positions were provided") |
| for sublist in self._params.data_simulator.rir_generation.mic_config.orV_rcv: |
| if len(sublist) != 3: |
| raise Exception("Three coordinates must be provided for orientations") |
|
|
| def _generate_rir_gpuRIR(self): |
| """ |
| Create simulated RIR using the gpuRIR library |
| |
| Returns: |
| RIR (tensor): Generated RIR |
| RIR_pad (int): Length of padding added when convolving the RIR with an audio file |
| """ |
| room_sz_tmp = np.array(self._params.data_simulator.rir_generation.room_config.room_sz) |
| if room_sz_tmp.ndim == 2: |
| room_sz = np.zeros(room_sz_tmp.shape[0]) |
| for i in range(room_sz_tmp.shape[0]): |
| room_sz[i] = np.random.uniform(room_sz_tmp[i, 0], room_sz_tmp[i, 1]) |
| else: |
| room_sz = room_sz_tmp |
|
|
| pos_src_tmp = np.array(self._params.data_simulator.rir_generation.room_config.pos_src) |
| if pos_src_tmp.ndim == 3: |
| pos_src = np.zeros((pos_src_tmp.shape[0], pos_src_tmp.shape[1])) |
| for i in range(pos_src_tmp.shape[0]): |
| for j in range(pos_src_tmp.shape[1]): |
| pos_src[i] = np.random.uniform(pos_src_tmp[i, j, 0], pos_src_tmp[i, j, 1]) |
| else: |
| pos_src = pos_src_tmp |
|
|
| if self._params.data_simulator.background_noise.add_bg: |
| pos_src = np.vstack((pos_src, self._params.data_simulator.rir_generation.room_config.noise_src_pos)) |
|
|
| mic_pos_tmp = np.array(self._params.data_simulator.rir_generation.mic_config.pos_rcv) |
| if mic_pos_tmp.ndim == 3: |
| mic_pos = np.zeros((mic_pos_tmp.shape[0], mic_pos_tmp.shape[1])) |
| for i in range(mic_pos_tmp.shape[0]): |
| for j in range(mic_pos_tmp.shape[1]): |
| mic_pos[i] = np.random.uniform(mic_pos_tmp[i, j, 0], mic_pos_tmp[i, j, 1]) |
| else: |
| mic_pos = mic_pos_tmp |
|
|
| orV_rcv = self._params.data_simulator.rir_generation.mic_config.orV_rcv |
| if orV_rcv: |
| orV_rcv = np.array(orV_rcv) |
| mic_pattern = self._params.data_simulator.rir_generation.mic_config.mic_pattern |
| abs_weights = self._params.data_simulator.rir_generation.absorbtion_params.abs_weights |
| T60 = self._params.data_simulator.rir_generation.absorbtion_params.T60 |
| att_diff = self._params.data_simulator.rir_generation.absorbtion_params.att_diff |
| att_max = self._params.data_simulator.rir_generation.absorbtion_params.att_max |
| sr = self._params.data_simulator.sr |
|
|
| beta = beta_SabineEstimation(room_sz, T60, abs_weights=abs_weights) |
| Tdiff = att2t_SabineEstimator(att_diff, T60) |
| Tmax = att2t_SabineEstimator(att_max, T60) |
| nb_img = t2n(Tdiff, room_sz) |
| RIR = simulateRIR( |
| room_sz, beta, pos_src, mic_pos, nb_img, Tmax, sr, Tdiff=Tdiff, orV_rcv=orV_rcv, mic_pattern=mic_pattern |
| ) |
| RIR_pad = RIR.shape[2] - 1 |
| return RIR, RIR_pad |
|
|
| def _generate_rir_pyroomacoustics(self) -> Tuple[torch.Tensor, int]: |
| """ |
| Create simulated RIR using the pyroomacoustics library |
| |
| Returns: |
| RIR (tensor): Generated RIR |
| RIR_pad (int): Length of padding added when convolving the RIR with an audio file |
| """ |
|
|
| rt60 = self._params.data_simulator.rir_generation.absorbtion_params.T60 |
| sr = self._params.data_simulator.sr |
|
|
| room_sz_tmp = np.array(self._params.data_simulator.rir_generation.room_config.room_sz) |
| if room_sz_tmp.ndim == 2: |
| room_sz = np.zeros(room_sz_tmp.shape[0]) |
| for i in range(room_sz_tmp.shape[0]): |
| room_sz[i] = np.random.uniform(room_sz_tmp[i, 0], room_sz_tmp[i, 1]) |
| else: |
| room_sz = room_sz_tmp |
|
|
| pos_src_tmp = np.array(self._params.data_simulator.rir_generation.room_config.pos_src) |
| if pos_src_tmp.ndim == 3: |
| pos_src = np.zeros((pos_src_tmp.shape[0], pos_src_tmp.shape[1])) |
| for i in range(pos_src_tmp.shape[0]): |
| for j in range(pos_src_tmp.shape[1]): |
| pos_src[i] = np.random.uniform(pos_src_tmp[i, j, 0], pos_src_tmp[i, j, 1]) |
| else: |
| pos_src = pos_src_tmp |
|
|
| |
| e_absorption, max_order = pra.inverse_sabine(rt60, room_sz) |
| room = pra.ShoeBox(room_sz, fs=sr, materials=pra.Material(e_absorption), max_order=max_order) |
|
|
| if self._params.data_simulator.background_noise.add_bg: |
| pos_src = np.vstack((pos_src, self._params.data_simulator.rir_generation.room_config.noise_src_pos)) |
| for pos in pos_src: |
| room.add_source(pos) |
|
|
| |
| mic_pattern = self._params.data_simulator.rir_generation.mic_config.mic_pattern |
| if self._params.data_simulator.rir_generation.mic_config.mic_pattern == 'omni': |
| mic_pattern = DirectivityPattern.OMNI |
| dir_vec = DirectionVector(azimuth=0, colatitude=90, degrees=True) |
| else: |
| raise Exception("Currently, microphone pattern must be omni. Aborting RIR generation.") |
| dir_obj = CardioidFamily( |
| orientation=dir_vec, |
| pattern_enum=mic_pattern, |
| ) |
|
|
| mic_pos_tmp = np.array(self._params.data_simulator.rir_generation.mic_config.pos_rcv) |
| if mic_pos_tmp.ndim == 3: |
| mic_pos = np.zeros((mic_pos_tmp.shape[0], mic_pos_tmp.shape[1])) |
| for i in range(mic_pos_tmp.shape[0]): |
| for j in range(mic_pos_tmp.shape[1]): |
| mic_pos[i] = np.random.uniform(mic_pos_tmp[i, j, 0], mic_pos_tmp[i, j, 1]) |
| else: |
| mic_pos = mic_pos_tmp |
|
|
| room.add_microphone_array(mic_pos.T, directivity=dir_obj) |
|
|
| room.compute_rir() |
| rir_pad = 0 |
| for channel in room.rir: |
| for pos in channel: |
| if pos.shape[0] - 1 > rir_pad: |
| rir_pad = pos.shape[0] - 1 |
| return room.rir, rir_pad |
|
|
| def _convolve_rir(self, input, speaker_turn: int, RIR: torch.Tensor) -> Tuple[list, int]: |
| """ |
| Augment one sentence (or background noise segment) using a synthetic RIR. |
| |
| Args: |
| input (torch.tensor): Input audio. |
| speaker_turn (int): Current speaker turn. |
| RIR (torch.tensor): Room Impulse Response. |
| Returns: |
| output_sound (list): List of tensors containing augmented audio |
| length (int): Length of output audio channels (or of the longest if they have different lengths) |
| """ |
| output_sound = [] |
| length = 0 |
| for channel in range(self._params.data_simulator.rir_generation.mic_config.num_channels): |
| if self._params.data_simulator.rir_generation.toolkit == 'gpuRIR': |
| out_channel = convolve(input, RIR[speaker_turn, channel, : len(input)]).tolist() |
| elif self._params.data_simulator.rir_generation.toolkit == 'pyroomacoustics': |
| out_channel = convolve(input, RIR[channel][speaker_turn][: len(input)]).tolist() |
| else: |
| raise Exception("Toolkit must be pyroomacoustics or gpuRIR. Aborting RIR convolution.") |
| if len(out_channel) > length: |
| length = len(out_channel) |
| output_sound.append(torch.tensor(out_channel)) |
| return output_sound, length |
|
|
| def _generate_session( |
| self, |
| idx: int, |
| basepath: str, |
| filename: str, |
| speaker_ids: list, |
| speaker_wav_align_map: dict, |
| noise_samples: list, |
| device: torch.device, |
| enforce_counter: int = 2, |
| ): |
| """ |
| Generate a multispeaker audio session and corresponding label files. |
| |
| Args: |
| idx (int): Index for current session (out of total number of sessions). |
| basepath (str): Path to output directory. |
| filename (str): Filename for output files. |
| speaker_ids (list): List of speaker IDs that will be used in this session. |
| speaker_wav_align_map (dict): Dictionary containing speaker IDs and their corresponding wav filepath and alignments. |
| noise_samples (list): List of randomly sampled noise source files that will be used for generating this session. |
| device (torch.device): Device to use for generating this session. |
| enforce_counter (int): In enforcement mode, dominance is increased by a factor of enforce_counter for unrepresented speakers |
| """ |
| random_seed = self._params.data_simulator.random_seed |
| np.random.seed(random_seed + idx) |
|
|
| self._device = device |
| speaker_dominance = self._get_speaker_dominance() |
| base_speaker_dominance = np.copy(speaker_dominance) |
| self._set_speaker_volume() |
|
|
| running_len_samples, prev_len_samples = 0, 0 |
| prev_speaker = None |
| self.annotator.init_annotation_lists() |
| self._noise_samples = noise_samples |
| self._furthest_sample = [0 for n in range(self._params.data_simulator.session_config.num_speakers)] |
|
|
| |
| if self._params.data_simulator.rir_generation.toolkit == 'gpuRIR': |
| RIR, RIR_pad = self._generate_rir_gpuRIR() |
| elif self._params.data_simulator.rir_generation.toolkit == 'pyroomacoustics': |
| RIR, RIR_pad = self._generate_rir_pyroomacoustics() |
| else: |
| raise Exception("Toolkit must be pyroomacoustics or gpuRIR") |
|
|
| |
| enforce_time = np.random.uniform( |
| self._params.data_simulator.speaker_enforcement.enforce_time[0], |
| self._params.data_simulator.speaker_enforcement.enforce_time[1], |
| ) |
| enforce = self._params.data_simulator.speaker_enforcement.enforce_num_speakers |
|
|
| session_len_samples = int( |
| (self._params.data_simulator.session_config.session_length * self._params.data_simulator.sr) |
| ) |
| array = torch.zeros((session_len_samples, self._params.data_simulator.rir_generation.mic_config.num_channels)) |
| is_speech = torch.zeros(session_len_samples) |
|
|
| while running_len_samples < session_len_samples or enforce: |
| |
| |
| if running_len_samples > enforce_time * session_len_samples and enforce: |
| speaker_dominance, enforce = self._increase_speaker_dominance(base_speaker_dominance, enforce_counter) |
| if enforce: |
| enforce_counter += 1 |
|
|
| |
| speaker_turn = self._get_next_speaker(prev_speaker, speaker_dominance) |
|
|
| |
| max_samples_in_sentence = ( |
| session_len_samples - running_len_samples - RIR_pad |
| ) |
| if enforce: |
| max_samples_in_sentence = float('inf') |
| elif ( |
| max_samples_in_sentence |
| < self._params.data_simulator.session_params.end_buffer * self._params.data_simulator.sr |
| ): |
| break |
|
|
| |
| self._build_sentence(speaker_turn, speaker_ids, speaker_wav_align_map, max_samples_in_sentence) |
| augmented_sentence, length = self._convolve_rir(self._sentence, speaker_turn, RIR) |
|
|
| |
| start = self._add_silence_or_overlap( |
| speaker_turn=speaker_turn, |
| prev_speaker=prev_speaker, |
| start=running_len_samples, |
| length=length, |
| session_len_samples=session_len_samples, |
| prev_len_samples=prev_len_samples, |
| enforce=enforce, |
| ) |
| |
| end = start + length |
| if end > len(array): |
| array = torch.nn.functional.pad(array, (0, 0, 0, end - len(array))) |
| is_speech = torch.nn.functional.pad(is_speech, (0, end - len(is_speech))) |
| is_speech[start:end] = 1 |
|
|
| for channel in range(self._params.data_simulator.rir_generation.mic_config.num_channels): |
| len_ch = len(augmented_sentence[channel]) |
| array[start : start + len_ch, channel] += augmented_sentence[channel] |
|
|
| |
| new_rttm_entries = self.annotator.create_new_rttm_entry( |
| self._words, |
| self._alignments, |
| start / self._params.data_simulator.sr, |
| end / self._params.data_simulator.sr, |
| speaker_ids[speaker_turn], |
| ) |
|
|
| self.annotator.annote_lists['rttm'].extend(new_rttm_entries) |
|
|
| new_json_entry = self.annotator.create_new_json_entry( |
| self._text, |
| os.path.join(basepath, filename + '.wav'), |
| start / self._params.data_simulator.sr, |
| length / self._params.data_simulator.sr, |
| speaker_ids[speaker_turn], |
| os.path.join(basepath, filename + '.rttm'), |
| os.path.join(basepath, filename + '.ctm'), |
| ) |
| self.annotator.annote_lists['json'].append(new_json_entry) |
|
|
| new_ctm_entries, _ = self.annotator.create_new_ctm_entry( |
| words=self._text, |
| alignments=self._alignments, |
| session_name=filename, |
| speaker_id=speaker_ids[speaker_turn], |
| start=start / self._params.data_simulator.sr, |
| ) |
| self.annotator.annote_lists['ctm'].extend(new_ctm_entries) |
|
|
| running_len_samples = np.maximum(running_len_samples, end) |
| self._furthest_sample[speaker_turn] = running_len_samples |
| prev_speaker = speaker_turn |
| prev_len_samples = length |
|
|
| |
| if self._params.data_simulator.session_augmentor.add_sess_aug: |
| |
| array = perturb_audio(array, self._params.data_simulator.sr, self.session_augmentor) |
|
|
| |
| if self._params.data_simulator.background_noise.add_bg and len(self._noise_samples) > 0: |
| avg_power_array = torch.mean(array[is_speech == 1] ** 2) |
| bg, snr, _ = get_background_noise( |
| len_array=len(array), |
| power_array=avg_power_array, |
| noise_samples=self._noise_samples, |
| audio_read_buffer_dict=self._audio_read_buffer_dict, |
| snr_min=self._params.data_simulator.background_noise.snr_min, |
| snr_max=self._params.data_simulator.background_noise.snr_max, |
| background_noise_snr=self._params.data_simulator.background_noise.snr, |
| seed=(random_seed + idx), |
| device=self._device, |
| ) |
| array += bg |
| length = array.shape[0] |
| augmented_bg, _ = self._convolve_rir(bg, -1, RIR) |
| for channel in range(self._params.data_simulator.rir_generation.mic_config.num_channels): |
| array[:, channel] += augmented_bg[channel][:length] |
| else: |
| snr = "N/A" |
|
|
| |
| array = normalize_audio(array) |
|
|
| if torch.is_tensor(array): |
| array = array.cpu().numpy() |
| sf.write(os.path.join(basepath, filename + '.wav'), array, self._params.data_simulator.sr) |
|
|
| self.annotator.write_annotation_files( |
| basepath=basepath, |
| filename=filename, |
| meta_data=self._get_session_meta_data(array=array, snr=snr), |
| ) |
|
|
| del array |
| self.clean_up() |
| return basepath, filename |
|
|