from typing import Optional import librosa import numpy as np import torch import torchaudio from transformers import Qwen2_5OmniForConditionalGeneration, Qwen2_5OmniProcessor from collections import OrderedDict from optimum.quanto import freeze from toolkit.basic import flush from toolkit.util.quantize import quantize, get_qtype from .BaseCaptioner import BaseCaptioner, CaptionConfig import transformers import logging import warnings transformers.logging.set_verbosity_error() warnings.filterwarnings("ignore") logging.disable(logging.WARNING) TARGET_SAMPLE_RATE = 16000 CAPTIONER_ID = "ACE-Step/acestep-captioner" TRANSCRIBER_ID = "ACE-Step/acestep-transcriber" # Key profiles for Krumhansl-Schmuckler key detection MAJOR_PROFILE = np.array( [6.35, 2.23, 3.48, 2.33, 4.38, 4.09, 2.52, 5.19, 2.39, 3.66, 2.29, 2.88] ) MINOR_PROFILE = np.array( [6.33, 2.68, 3.52, 5.38, 2.60, 3.53, 2.54, 4.75, 3.98, 2.69, 3.34, 3.17] ) KEY_NAMES = ["C", "C#", "D", "D#", "E", "F", "F#", "G", "G#", "A", "A#", "B"] # ═══════════════════════════════════════════════════════════════════════════════ # Audio analysis (BPM, key, time signature) via librosa # ═══════════════════════════════════════════════════════════════════════════════ def analyze_audio(audio_path): """Extract BPM, key, and time signature from audio using librosa.""" y, sr = librosa.load(audio_path, sr=22050, mono=True) duration = librosa.get_duration(y=y, sr=sr) # BPM tempo, _ = librosa.beat.beat_track(y=y, sr=sr) if hasattr(tempo, "__len__"): tempo = tempo[0] bpm = int(round(float(tempo))) # Key detection via chroma correlation with key profiles chroma = librosa.feature.chroma_cqt(y=y, sr=sr) chroma_avg = chroma.mean(axis=1) major_corrs = np.array( [np.corrcoef(np.roll(MAJOR_PROFILE, i), chroma_avg)[0, 1] for i in range(12)] ) minor_corrs = np.array( [np.corrcoef(np.roll(MINOR_PROFILE, i), chroma_avg)[0, 1] for i in range(12)] ) best_major_idx = major_corrs.argmax() best_minor_idx = minor_corrs.argmax() if major_corrs[best_major_idx] >= minor_corrs[best_minor_idx]: keyscale = f"{KEY_NAMES[best_major_idx]} major" else: keyscale = f"{KEY_NAMES[best_minor_idx]} minor" # Time signature estimation from beat strength pattern onset_env = librosa.onset.onset_strength(y=y, sr=sr) tempo_est, beats = librosa.beat.beat_track(onset_envelope=onset_env, sr=sr) if len(beats) >= 8: beat_strengths = onset_env[beats] # Check 3/4 vs 4/4 by looking at periodicity of strong beats acf = np.correlate( beat_strengths - beat_strengths.mean(), beat_strengths - beat_strengths.mean(), mode="full", ) acf = acf[len(acf) // 2 :] if len(acf) > 6: # Look at autocorrelation peaks at lag 3 vs lag 4 score_3 = acf[3] if len(acf) > 3 else 0 score_4 = acf[4] if len(acf) > 4 else 0 timesig = "3" if score_3 > score_4 * 1.2 else "4" else: timesig = "4" else: timesig = "4" return { "bpm": bpm, "keyscale": keyscale, "timesignature": timesig, "duration": int(round(duration)), } class AceStepCaptionConfig(CaptionConfig): def __init__(self, **kwargs): super().__init__(**kwargs) self.fixed_caption: Optional[str] = kwargs.get("fixed_caption", None) class AceStepCaptioner(BaseCaptioner): caption_config_class = AceStepCaptionConfig caption_config: AceStepCaptionConfig def __init__(self, process_id: int, job, config: OrderedDict, **kwargs): super(AceStepCaptioner, self).__init__(process_id, job, config, **kwargs) def load_model(self): self.print_and_status_update("Loading transcriber model") self.model = Qwen2_5OmniForConditionalGeneration.from_pretrained( self.caption_config.model_name_or_path, dtype=self.torch_dtype, device_map="cpu", ) self.model.to(self.device_torch) self.model.disable_talker() if self.caption_config.quantize: self.print_and_status_update("Quantizing transcriber model") quantize(self.model, weights=get_qtype(self.caption_config.qtype)) freeze(self.model) flush() self.processor = Qwen2_5OmniProcessor.from_pretrained( self.caption_config.model_name_or_path ) if self.caption_config.low_vram: self.model.to("cpu") self.model2 = None self.processor2 = None if self.caption_config.fixed_caption is not None: # load captioner model self.print_and_status_update("Loading captioner model") self.model2 = Qwen2_5OmniForConditionalGeneration.from_pretrained( self.caption_config.model_name_or_path2, dtype=self.torch_dtype, device_map="cpu", ) self.model2.to(self.device_torch) self.model2.disable_talker() if self.caption_config.quantize: self.print_and_status_update("Quantizing captioner model") quantize(self.model2, weights=get_qtype(self.caption_config.qtype)) freeze(self.model2) flush() self.processor2 = Qwen2_5OmniProcessor.from_pretrained( self.caption_config.model_name_or_path2, ) if self.caption_config.low_vram: self.model2.to("cpu") flush() def run_qwen_audio(self, model, processor, audio_data, sr, prompt_text): """Run a Qwen2.5-Omni model on audio with a text prompt.""" conversation = [ { "role": "user", "content": [ {"type": "audio", "audio": "<|audio_bos|><|AUDIO|><|audio_eos|>"}, {"type": "text", "text": prompt_text}, ], } ] text = processor.apply_chat_template( conversation, add_generation_prompt=True, tokenize=False ) inputs = processor( text=text, audio=[audio_data], images=None, videos=None, return_tensors="pt", padding=True, sampling_rate=sr, ) inputs = inputs.to(model.device).to(model.dtype) text_ids = model.generate(**inputs, return_audio=False) output = processor.batch_decode( text_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False ) result = output[0] marker = "assistant\n" if marker in result: result = result[result.rfind(marker) + len(marker) :] return result.strip() def get_audio_lyrics(self, audio_data: torch.Tensor) -> str: if self.caption_config.low_vram and self.model2.device != torch.device("cpu"): # move captioner to cpu self.model2.to("cpu") # move lyric model if needed if self.model.device == torch.device("cpu"): self.model.to(self.device_torch) prompt_text = "*Task* Transcribe this audio in detail" return self.run_qwen_audio( self.model, self.processor, audio_data, TARGET_SAMPLE_RATE, prompt_text ) def get_audio_caption(self, audio_data: torch.Tensor) -> str: if self.caption_config.low_vram and self.model.device != torch.device("cpu"): # move lyricmodel to cpu self.model.to("cpu") # move captioner model if needed if self.model2.device == torch.device("cpu"): self.model2.to(self.device_torch) prompt_text = "*Task* Describe this music in detail. Include genre, mood, instrumentation, tempo feel, and vocal style if present." return self.run_qwen_audio( self.model2, self.processor2, audio_data, TARGET_SAMPLE_RATE, prompt_text ) def get_caption_for_file(self, file_path: str) -> str: try: # analyze audio with librosa analysis = analyze_audio(file_path) # load audio with torchaudio for transcription waveform, sr = torchaudio.load(file_path) waveform = waveform.to(self.device_torch) if waveform.shape[0] > 1: waveform = waveform.mean(dim=0, keepdim=True) if sr != TARGET_SAMPLE_RATE: waveform = torchaudio.functional.resample( waveform, sr, TARGET_SAMPLE_RATE ) audio_data = waveform.squeeze(0).cpu().numpy() # get the lyrics from the audio lyrics = self.get_audio_lyrics(audio_data) language = "en" if "# Languages" in lyrics and "# Lyrics" in lyrics: language = lyrics.split("# Languages")[1].split("# Lyrics")[0] # remove newlines and extra spaces from language language = language.replace("\n", "").strip() lyrics = lyrics.split("# Lyrics")[1].strip() # get the caption from the audio if self.caption_config.fixed_caption is not None: caption = self.caption_config.fixed_caption else: caption = self.get_audio_caption(audio_data) output = f"\n{caption}\n\n" output += f"\n{lyrics}\n\n" output += f"{analysis['bpm']}\n" output += f"{analysis['keyscale']}\n" output += f"{analysis['timesignature']}\n" output += f"{analysis['duration']}\n" output += f"{language}" return output except Exception as e: print(f"Error processing {file_path}: {e}") return None