LEMAS-Edit / gradio_mix.py
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import os, gc
import re, time
import logging
from num2words import num2words
import gradio as gr
import torch, torchaudio
import numpy as np
import random
from scipy.io import wavfile
import onnx
import onnxruntime as ort
import copy
import uroman as ur
import jieba, zhconv
from pypinyin.core import Pinyin
from pypinyin import Style
import spaces
from cached_path import cached_path
from lemas_tts.api import TTS, PRETRAINED_ROOT, CKPTS_ROOT
from lemas_tts.infer.edit_multilingual import gen_wav_multilingual
from lemas_tts.infer.text_norm.txt2pinyin import (
MyConverter,
_PAUSE_SYMBOL,
change_tone_in_bu_or_yi,
get_phoneme_from_char_and_pinyin,
)
from lemas_tts.infer.text_norm.cn_tn import NSWNormalizer
# import io
# import uuid
_JIEBA_DICT = os.path.join(
os.path.dirname(__file__),
"lemas_tts",
"infer",
"text_norm",
"jieba_dict.txt",
)
if os.path.isfile(_JIEBA_DICT):
jieba.set_dictionary(_JIEBA_DICT)
# from inference_tts_scale import inference_one_sample as inference_tts
import langid
langid.set_languages(['es','pt','zh','en','de','fr','it', 'ru', 'id', 'vi'])
os.environ['CURL_CA_BUNDLE'] = ''
DEMO_PATH = os.getenv("DEMO_PATH", "./pretrained_models/demo")
TMP_PATH = os.getenv("TMP_PATH", "./pretrained_models/demo/temp")
MODELS_PATH = os.getenv("MODELS_PATH", "./pretrained_models")
# HF location for large TTS checkpoints (too big for Space storage).
# Mirrors LEMAS-TTS `inference_gradio.py`.
HF_PRETRAINED_ROOT = "hf://LEMAS-Project/LEMAS-TTS/pretrained_models"
# Detect whether we are running inside a HF Space with stateless GPU.
IS_SPACES = os.getenv("SYSTEM") == "spaces"
# Pick device for the TTS editing model.
# - On Spaces (SYSTEM=spaces): always use CPU in the main process to respect
# stateless GPU constraints.
# - Elsewhere: "cuda" if available, else "cpu", unless overridden via
# LEMAS_DEVICE env (e.g. "cpu" or "cuda").
def _pick_device():
if IS_SPACES:
return "cpu"
forced = os.getenv("LEMAS_DEVICE")
if forced:
return forced
return "cuda" if torch.cuda.is_available() else "cpu"
device = _pick_device()
whisper_model, align_model = None, None
tts_edit_model = None
_whitespace_re = re.compile(r"\s+")
alpha_pattern = re.compile(r"[a-zA-Z]")
formatter = ("%(asctime)s [%(levelname)s] %(filename)s:%(lineno)d || %(message)s")
logging.basicConfig(format=formatter, level=logging.INFO)
# def get_random_string():
# return "".join(str(uuid.uuid4()).split("-"))
def seed_everything(seed):
if seed != -1:
os.environ['PYTHONHASHSEED'] = str(seed)
random.seed(seed)
np.random.seed(seed)
torch.manual_seed(seed)
torch.cuda.manual_seed(seed)
torch.backends.cudnn.benchmark = False
torch.backends.cudnn.deterministic = True
class UVR5:
"""Small wrapper around the bundled uvr5 implementation for denoising."""
def __init__(self, model_dir):
# Code directory is always the local `uvr5` folder in this repo
self.code_dir = os.path.join(os.path.dirname(__file__), "uvr5")
self.model_dir = model_dir
self.model = None
self.device = "cpu"
def load_model(self, device="cpu"):
import sys, json, os, torch
if self.code_dir not in sys.path:
sys.path.append(self.code_dir)
# Reuse an already-loaded model if it matches the requested device.
if self.model is not None and self.device == device:
return self.model
from multiprocess_cuda_infer import ModelData, Inference
# In the minimal LEMAS-TTS layout, UVR5 weights live under:
model_path = os.path.join(self.model_dir, "Kim_Vocal_1.onnx")
config_path = os.path.join(self.model_dir, "MDX-Net-Kim-Vocal1.json")
with open(config_path, "r", encoding="utf-8") as f:
configs = json.load(f)
model_data = ModelData(
model_path=model_path,
audio_path=self.model_dir,
result_path=self.model_dir,
device=device,
process_method="MDX-Net",
# Keep base_dir and model_dir the same so all UVR5 metadata
# (model_data.json, model_name_mapper.json, etc.) are resolved
# under `pretrained_models/uvr5`, matching LEMAS-TTS inference.
base_dir=self.model_dir,
**configs,
)
uvr5_model = Inference(model_data, device)
uvr5_model.load_model(model_path, 1)
self.model = uvr5_model
self.device = device
return self.model
def denoise(self, audio_info):
model = self.load_model(device="cpu")
input_audio = load_wav(audio_info, sr=44100, channel=2)
output_audio = model.demix_base({0:input_audio.squeeze()}, is_match_mix=False, device="cpu")
# transform = torchaudio.transforms.Resample(44100, 16000)
# output_audio = transform(output_audio)
return output_audio.squeeze().T.cpu().numpy(), 44100
class DeepFilterNet:
def __init__(self, model_path):
self.hop_size = 480
self.fft_size = 960
self.model = self.load_model(model_path)
def load_model(self, model_path, threads=1):
sess_options = ort.SessionOptions()
sess_options.intra_op_num_threads = threads
sess_options.graph_optimization_level = (ort.GraphOptimizationLevel.ORT_ENABLE_EXTENDED)
sess_options.execution_mode = ort.ExecutionMode.ORT_SEQUENTIAL
model = onnx.load_model(model_path)
ort_session = ort.InferenceSession(
model.SerializeToString(),
sess_options,
providers=["CPUExecutionProvider"], # ["CUDAExecutionProvider"], #
)
input_names = ["input_frame", "states", "atten_lim_db"]
output_names = ["enhanced_audio_frame", "new_states", "lsnr"]
return ort_session
def denoise(self, audio_info):
wav = load_wav(audio_info, 48000)
orig_len = wav.shape[-1]
hop_size_divisible_padding_size = (self.hop_size - orig_len % self.hop_size) % self.hop_size
orig_len += hop_size_divisible_padding_size
wav = torch.nn.functional.pad(
wav, (0, self.fft_size + hop_size_divisible_padding_size)
)
chunked_audio = torch.split(wav, self.hop_size)
# chunked_audio = torch.split(wav, int(wav.shape[-1]/2))
state = np.zeros(45304,dtype=np.float32)
atten_lim_db = np.zeros(1,dtype=np.float32)
enhanced = []
for frame in chunked_audio:
out = self.model.run(None,input_feed={"input_frame":frame.numpy(),"states":state,"atten_lim_db":atten_lim_db})
enhanced.append(torch.tensor(out[0]))
state = out[1]
enhanced_audio = torch.cat(enhanced).unsqueeze(0) # [t] -> [1, t] typical mono format
d = self.fft_size - self.hop_size
enhanced_audio = enhanced_audio[:, d: orig_len + d]
return enhanced_audio.squeeze().numpy(), 48000
class TextNorm():
def __init__(self):
my_pinyin = Pinyin(MyConverter())
self.pinyin_parser = my_pinyin.pinyin
def sil_type(self, time_s):
if round(time_s) < 0.4:
return ""
elif round(time_s) >= 0.4 and round(time_s) < 0.8:
return "#1"
elif round(time_s) >= 0.8 and round(time_s) < 1.5:
return "#2"
elif round(time_s) >= 1.5 and round(time_s) < 3.0:
return "#3"
elif round(time_s) >= 3.0:
return "#4"
def add_sil_raw(self, sub_list, start_time, end_time, target_transcript):
txt = []
txt_list = [x["word"] for x in sub_list]
sil = self.sil_type(sub_list[0]["start"])
if len(sil) > 0:
txt.append(sil)
txt.append(txt_list[0])
for i in range(1, len(sub_list)):
if sub_list[i]["start"] >= start_time and sub_list[i]["end"] <= end_time:
txt.append(target_transcript)
target_transcript = ""
else:
sil = self.sil_type(sub_list[i]["start"] - sub_list[i-1]["end"])
if len(sil) > 0:
txt.append(sil)
txt.append(txt_list[i])
return ' '.join(txt)
def add_sil(self, sub_list, start_time, end_time, target_transcript, src_lang, tar_lang):
txts = []
txt_list = [x["word"] for x in sub_list]
sil = self.sil_type(sub_list[0]["start"])
if len(sil) > 0:
txts.append([src_lang, sil])
if sub_list[0]["start"] < start_time:
txts.append([src_lang, txt_list[0]])
for i in range(1, len(sub_list)):
if sub_list[i]["start"] >= start_time and sub_list[i]["end"] <= end_time:
txts.append([tar_lang, target_transcript])
target_transcript = ""
else:
sil = self.sil_type(sub_list[i]["start"] - sub_list[i-1]["end"])
if len(sil) > 0:
txts.append([src_lang, sil])
txts.append([src_lang, txt_list[i]])
target_txt = [txts[0]]
for txt in txts[1:]:
if txt[1] == "":
continue
if txt[0] != target_txt[-1][0]:
target_txt.append([txt[0], ""])
target_txt[-1][-1] += " " + txt[1]
return target_txt
def get_prompt(self, sub_list, start_time, end_time, src_lang):
txts = []
txt_list = [x["word"] for x in sub_list]
if start_time <= sub_list[0]["start"]:
sil = self.sil_type(sub_list[0]["start"])
if len(sil) > 0:
txts.append([src_lang, sil])
txts.append([src_lang, txt_list[0]])
for i in range(1, len(sub_list)):
# if sub_list[i]["start"] <= start_time and sub_list[i]["end"] <= end_time:
# txts.append([tar_lang, target_transcript])
# target_transcript = ""
if sub_list[i]["start"] >= start_time and sub_list[i]["end"] <= end_time:
sil = self.sil_type(sub_list[i]["start"] - sub_list[i-1]["end"])
if len(sil) > 0:
txts.append([src_lang, sil])
txts.append([src_lang, txt_list[i]])
target_txt = [txts[0]]
for txt in txts[1:]:
if txt[1] == "":
continue
if txt[0] != target_txt[-1][0]:
target_txt.append([txt[0], ""])
target_txt[-1][-1] += " " + txt[1]
return target_txt
def txt2pinyin(self, text):
txts, phonemes = [], []
texts = re.split(r"(#\d)", text)
print("before norm: ", texts)
for text in texts:
if text in {'#1', '#2', '#3', '#4'}:
txts.append(text)
phonemes.append(text)
continue
text = NSWNormalizer(text.strip()).normalize()
text_list = list(jieba.cut(text))
print("jieba cut: ", text, text_list)
for words in text_list:
if words in _PAUSE_SYMBOL:
# phonemes.append('#2')
phonemes[-1] += _PAUSE_SYMBOL[words]
txts[-1] += words
elif re.search("[\u4e00-\u9fa5]+", words):
pinyin = self.pinyin_parser(words, style=Style.TONE3, errors="ignore")
new_pinyin = []
for x in pinyin:
x = "".join(x)
if "#" not in x:
new_pinyin.append(x)
else:
phonemes.append(words)
continue
new_pinyin = change_tone_in_bu_or_yi(words, new_pinyin) if len(words)>1 and words[-1] not in {"一","不"} else new_pinyin
phoneme = get_phoneme_from_char_and_pinyin(words, new_pinyin)
phonemes += phoneme
txts += list(words)
elif re.search(r"[a-zA-Z]", words) or re.search(r"#[1-4]", words):
phonemes.append(words)
txts.append(words)
# phonemes.append("#1")
# phones = " ".join(phonemes)
return txts, phonemes
def chunk_text(text, max_chars=135):
"""
Splits the input text into chunks, each with a maximum number of characters.
Args:
text (str): The text to be split.
max_chars (int): The maximum number of characters per chunk.
Returns:
List[str]: A list of text chunks.
"""
chunks = []
current_chunk = ""
# Split the text into sentences based on punctuation followed by whitespace
sentences = re.split(r"(?<=[;:,.!?])\s+|(?<=[;:,。!?])", text)
for sentence in sentences:
if len(current_chunk.encode("utf-8")) + len(sentence.encode("utf-8")) <= max_chars:
current_chunk += sentence + " " if sentence and len(sentence[-1].encode("utf-8")) == 1 else sentence
else:
if current_chunk:
chunks.append(current_chunk.strip())
current_chunk = sentence + " " if sentence and len(sentence[-1].encode("utf-8")) == 1 else sentence
if current_chunk:
chunks.append(current_chunk.strip())
return chunks
class MMSAlignModel:
def __init__(self):
from torchaudio.pipelines import MMS_FA as bundle
self.mms_model = bundle.get_model()
# Keep MMS on the same device as the main edit model unless overridden.
self.mms_model.to(device)
self.mms_tokenizer = bundle.get_tokenizer()
self.mms_aligner = bundle.get_aligner()
self.text_normalizer = ur.Uroman()
def text_normalization(self, text_list):
text_normalized = []
for word in text_list:
text_char = ''
for c in word:
if c.isalpha() or c=="'":
text_char += c.lower()
elif c == "-":
text_char += '*'
text_char = text_char if len(text_char) > 0 else "*"
text_normalized.append(text_char)
assert len(text_normalized) == len(text_list), f"normalized text len != raw text len: {len(text_normalized)} != {text_list}"
return text_normalized
def compute_alignments(self, waveform: torch.Tensor, tokens):
with torch.inference_mode():
emission, _ = self.mms_model(waveform.to(device))
token_spans = self.mms_aligner(emission[0], tokens)
return emission, token_spans
def align(self, data, wav):
waveform = load_wav(wav, 16000).unsqueeze(0)
raw_text = data['text'][0]
text = " ".join(data['text'][1]).replace("-", " ")
text = re.sub("\s+", " ", text)
text_normed = self.text_normalizer.romanize_string(text, lcode=data["lang"])
# text_normed = re.sub("[\d_.,!$£%?#−/]", '', text_normed)
fliter = re.compile("[^a-z^*^'^ ]")
text_normed = fliter.sub('', text_normed.lower())
text_normed = re.sub("\s+", " ", text_normed)
text_normed = text_normed.split()
assert len(text_normed) == len(raw_text), f"normalized text len != raw text len: {len(text_normed)} != {len(raw_text)}"
tokens = self.mms_tokenizer(text_normed)
with torch.inference_mode():
emission, _ = self.mms_model(waveform.to(device))
token_spans = self.mms_aligner(emission[0], tokens)
num_frames = emission.size(1)
ratio = waveform.size(1) / num_frames
res = []
for i in range(len(token_spans)):
score = round(sum([x.score for x in token_spans[i]]) / len(token_spans[i]), ndigits=3)
start = round(waveform.size(-1) * token_spans[i][0].start / num_frames / 16000, ndigits=3)
end = round(waveform.size(-1) * token_spans[i][-1].end / num_frames / 16000, ndigits=3)
res.append({"word": raw_text[i], "start": start, "end": end, "score": score})
res = {"lang":data["lang"], "start": 0, "end": round(waveform.shape[-1]/16000, ndigits=3), "text_raw":data["text_raw"], "text": text, "words": res}
return res
class WhisperxModel:
def __init__(self, model_name):
# Lazily construct the WhisperX pipeline.
self.model_name = model_name
self.model = None
if IS_SPACES:
self.device = "cpu"
else:
self.device = "cuda" if torch.cuda.is_available() else "cpu"
def _ensure_model(self):
if self.model is not None:
return
from whisperx import load_model
prompt = None # "This might be a blend of Simplified Chinese and English speech, do not translate, only transcription be allowed."
# Use the lighter Silero VAD backend to avoid pyannote checkpoints
# and their PyTorch 2.6 `weights_only` pickling issues.
self.model = load_model(
self.model_name,
self.device,
compute_type="float32",
asr_options={
"suppress_numerals": False,
"max_new_tokens": None,
"clip_timestamps": None,
"initial_prompt": prompt,
"append_punctuations": ".。,,!!??::、",
"hallucination_silence_threshold": None,
"multilingual": True,
"hotwords": None
},
vad_method="silero",
)
def transcribe(self, audio_info, lang=None):
# Lazily init the underlying WhisperX pipeline.
self._ensure_model()
audio = load_wav(audio_info).numpy()
if lang is None:
lang = self.model.detect_language(audio)
segments = self.model.transcribe(audio, batch_size=8, language=lang)["segments"]
transcript = " ".join([segment["text"] for segment in segments])
if lang not in {'es','pt','zh','en','de','fr','it', 'ar', 'ru', 'ja', 'ko', 'hi', 'th', 'id', 'vi'}:
lang = langid.classify(transcript)[0]
segments = self.model.transcribe(audio, batch_size=8, language=lang)["segments"]
transcript = " ".join([segment["text"] for segment in segments])
logging.debug(f"whisperx: {segments}")
transcript = zhconv.convert(transcript, 'zh-hans')
transcript = transcript.replace("-", " ")
transcript = re.sub(_whitespace_re, " ", transcript)
transcript = transcript[1:] if transcript[0] == " " else transcript
segments = {'lang':lang, 'text_raw':transcript}
if lang == "zh":
segments["text"] = text_norm.txt2pinyin(transcript)
else:
transcript = replace_numbers_with_words(transcript, lang=lang).split(' ')
segments["text"] = (transcript, transcript)
return align_model.align(segments, audio_info)
def load_wav(audio_info, sr=16000, channel=1):
raw_sr, audio = audio_info
audio = audio.T if len(audio.shape) > 1 and audio.shape[1] == 2 else audio
audio = audio / np.max(np.abs(audio))
audio = torch.from_numpy(audio).squeeze().float()
if channel == 1 and len(audio.shape) == 2: # stereo to mono
audio = audio.mean(dim=0, keepdim=True)
elif channel == 2 and len(audio.shape) == 1:
audio = torch.stack((audio, audio)) # mono to stereo
if raw_sr != sr:
audio = torchaudio.functional.resample(audio.squeeze(), raw_sr, sr)
audio = torch.clip(audio, -0.999, 0.999).squeeze()
return audio
def update_word_time(lst, cut_time, edit_start, edit_end):
for i in range(len(lst)):
lst[i]["start"] = round(lst[i]["start"] - cut_time, ndigits=3)
lst[i]["end"] = round(lst[i]["end"] - cut_time, ndigits=3)
edit_start = max(round(edit_start - cut_time, ndigits=3), 0)
edit_end = round(edit_end - cut_time, ndigits=3)
return lst, edit_start, edit_end
# def update_word_time2(lst, cut_time, edit_start, edit_end):
# for i in range(len(lst)):
# lst[i]["start"] = round(lst[i]["start"] + cut_time, ndigits=3)
# return lst, edit_start, edit_end
def get_audio_slice(audio, words_info, start_time, end_time, max_len=10, sr=16000, code_sr=50):
audio_dur = audio.shape[-1] / sr
sub_list = []
# 如果尾部小于5s则保留后面全部,并截取前半段音频
if audio_dur - end_time <= max_len/2:
for word in reversed(words_info):
if word['start'] > start_time or audio_dur - word['start'] < max_len:
sub_list = [word] + sub_list
# 如果头部小于5s则保留前面全部,并截取后半段音频
elif start_time <=max_len/2:
for word in words_info:
if word['end'] < max(end_time, max_len):
sub_list += [word]
# 如果前后都大于5s,则前后各留5s
else:
for word in words_info:
if word['start'] > start_time - max_len/2 and word['end'] < end_time + max_len/2:
sub_list += [word]
audio = audio.squeeze()
start = int(sub_list[0]['start']*sr)
end = int(sub_list[-1]['end']*sr)
# print("wav cuts:", start, end, (end-start) % int(sr/code_sr))
end -= (end-start) % int(sr/code_sr) # chunk取整
sub_list, start_time, end_time = update_word_time(sub_list, sub_list[0]['start'], start_time, end_time)
audio = audio.squeeze()
# print("after update_word_time:", sub_list, start_time, end_time, (end-start)/sr)
return (audio[:start], audio[start:end], audio[end:]), (sub_list, start_time, end_time)
def load_models(lemas_model_name, whisper_model_name, alignment_model_name, denoise_model_name): # , audiosr_name):
global transcribe_model, align_model, denoise_model, text_norm, tts_edit_model
if not IS_SPACES:
torch.cuda.empty_cache()
gc.collect()
if denoise_model_name == "UVR5":
# Simple layout: UVR5 assets live directly under:
# <MODELS_PATH>/uvr5
# with files:
# Kim_Vocal_1.onnx
# MDX-Net-Kim-Vocal1.json
# model_data.json
# model_name_mapper.json
from pathlib import Path
uv_root = Path(MODELS_PATH) / "uvr5"
denoise_model = UVR5(str(uv_root))
elif denoise_model_name == "DeepFilterNet":
denoise_model = DeepFilterNet("./pretrained_models/denoiser_model.onnx")
if alignment_model_name == "MMS":
align_model = MMSAlignModel()
else:
align_model = WhisperxAlignModel()
text_norm = TextNorm()
transcribe_model = WhisperxModel(whisper_model_name)
# Load LEMAS-TTS editing model (selected multilingual variant)
from pathlib import Path
# Local ckpt search under the standard CKPTS_ROOT layout
ckpt_dir = Path(CKPTS_ROOT) / lemas_model_name
ckpt_candidates = sorted(
list(ckpt_dir.glob("*.safetensors")) + list(ckpt_dir.glob("*.pt"))
)
# Fallbacks for simpler layouts: allow ckpts directly under CKPTS_ROOT,
# e.g. ./pretrained_models/ckpts/multilingual_grl.safetensors
if not ckpt_candidates:
root_candidates = sorted(
list(Path(CKPTS_ROOT).glob(f"{lemas_model_name}*.safetensors"))
+ list(Path(CKPTS_ROOT).glob(f"{lemas_model_name}*.pt"))
)
ckpt_candidates = root_candidates
# If no local ckpt is found, fall back to remote HF checkpoints
# (using the same mapping as LEMAS-TTS `inference_gradio.py`).
if not ckpt_candidates:
remote_ckpts = {
"multilingual_grl": f"{HF_PRETRAINED_ROOT}/ckpts/multilingual_grl/multilingual_grl.safetensors",
"multilingual_prosody": f"{HF_PRETRAINED_ROOT}/ckpts/multilingual_prosody/multilingual_prosody.safetensors",
}
remote_path = remote_ckpts.get(lemas_model_name)
if remote_path is not None:
try:
resolved = cached_path(remote_path)
ckpt_candidates = [Path(resolved)]
logging.info("Resolved remote ckpt %s -> %s", remote_path, resolved)
except Exception as e:
raise gr.Error(f"Failed to download remote ckpt {remote_path}: {e}")
if not ckpt_candidates:
raise gr.Error(
f"No LEMAS-TTS ckpt found for '{lemas_model_name}' under {ckpt_dir} "
f"or {CKPTS_ROOT}"
)
ckpt_file = str(ckpt_candidates[-1])
vocab_file = Path(PRETRAINED_ROOT) / "data" / lemas_model_name / "vocab.txt"
if not vocab_file.is_file():
raise gr.Error(f"Vocab file not found: {vocab_file}")
prosody_cfg = Path(CKPTS_ROOT) / "prosody_encoder" / "pretssel_cfg.json"
prosody_ckpt = Path(CKPTS_ROOT) / "prosody_encoder" / "prosody_encoder_UnitY2.pt"
# Decide whether to enable the prosody encoder:
# - multilingual_prosody: True (if assets exist)
# - multilingual_grl: False (GRL-only variant)
# - others: fall back to presence of assets.
if lemas_model_name.endswith("prosody"):
use_prosody = prosody_cfg.is_file() and prosody_ckpt.is_file()
elif lemas_model_name.endswith("grl"):
use_prosody = False
else:
use_prosody = prosody_cfg.is_file() and prosody_ckpt.is_file()
tts_edit_model = TTS(
model=lemas_model_name,
ckpt_file=ckpt_file,
vocab_file=str(vocab_file),
device=device,
use_prosody_encoder=use_prosody,
prosody_cfg_path=str(prosody_cfg) if use_prosody else "",
prosody_ckpt_path=str(prosody_ckpt) if use_prosody else "",
ode_method="euler",
use_ema=True,
frontend="phone",
)
logging.info(f"Loaded LEMAS-TTS edit model from {ckpt_file}")
return gr.Accordion()
def get_transcribe_state(segments):
logging.info("===========After Align===========")
logging.info(segments)
return {
"segments": segments,
"transcript": segments["text_raw"],
"words_info": segments["words"],
"transcript_with_start_time": " ".join([f"{word['start']} {word['word']}" for word in segments["words"]]),
"transcript_with_end_time": " ".join([f"{word['word']} {word['end']}" for word in segments["words"]]),
"word_bounds": [f"{word['start']} {word['word']} {word['end']}" for word in segments["words"]]
}
def transcribe(seed, audio_info):
if transcribe_model is None:
raise gr.Error("Transcription model not loaded")
seed_everything(seed)
segments = transcribe_model.transcribe(audio_info)
state = get_transcribe_state(segments)
return [
state["transcript"], state["transcript_with_start_time"], state["transcript_with_end_time"],
gr.Dropdown(value=state["word_bounds"][0], choices=state["word_bounds"], interactive=True), # edit_from_word
gr.Dropdown(value=state["word_bounds"][-1], choices=state["word_bounds"], interactive=True), # edit_to_word
state
]
def align(transcript, audio_info, state):
lang = state["segments"]["lang"]
# print("realign: ", transcript, state)
transcript = re.sub(_whitespace_re, " ", transcript)
transcript = transcript[1:] if transcript[0] == " " else transcript
segments = {'lang':lang, 'text':transcript, 'text_raw':transcript}
if lang == "zh":
segments["text"] = text_norm.txt2pinyin(transcript)
else:
transcript = replace_numbers_with_words(transcript)
segments["text"] = (transcript.split(' '), transcript.split(' '))
# print("text:", segments["text"])
segments = align_model.align(segments, audio_info)
state = get_transcribe_state(segments)
return [
state["transcript"], state["transcript_with_start_time"], state["transcript_with_end_time"],
gr.Dropdown(value=state["word_bounds"][0], choices=state["word_bounds"], interactive=True), # edit_from_word
gr.Dropdown(value=state["word_bounds"][-1], choices=state["word_bounds"], interactive=True), # edit_to_word
state
]
def denoise(audio_info):
# Denoiser can be relatively heavy (especially UVR5), so schedule it on
# GPU workers when running on HF Spaces.
if denoise_model is None:
return audio_info
denoised_audio, sr = denoise_model.denoise(audio_info)
denoised_audio = denoised_audio # already numpy
return (sr, denoised_audio)
def cancel_denoise(audio_info):
return audio_info
def get_output_audio(audio_tensors, sr):
result = torch.cat(audio_tensors, -1)
result = result.squeeze().cpu().numpy()
result = (result * np.iinfo(np.int16).max).astype(np.int16)
print("save result:", result.shape)
# wavfile.write(os.path.join(TMP_PATH, "output.wav"), sr, result)
return (int(sr), result)
def get_edit_audio_part(audio_info, edit_start, edit_end):
sr, raw_wav = audio_info
raw_wav = raw_wav[int(edit_start*sr):int(edit_end*sr)]
return (sr, raw_wav)
def crossfade_concat(chunk1, chunk2, overlap):
# 计算淡入和淡出系数
fade_out = torch.cos(torch.linspace(0, torch.pi / 2, overlap)) ** 2
fade_in = torch.cos(torch.linspace(torch.pi / 2, 0, overlap)) ** 2
chunk2[:overlap] = chunk1[-overlap:] * fade_out + chunk2[:overlap] * fade_in
chunk = torch.cat((chunk1[:-overlap], chunk2), dim=0)
return chunk
def replace_numbers_with_words(sentence, lang="en"):
sentence = re.sub(r'(\d+)', r' \1 ', sentence) # add spaces around numbers
def replace_with_words(match):
num = match.group(0)
try:
return num2words(num, lang=lang) # Convert numbers to words
except:
return num # In case num2words fails (unlikely with digits but just to be safe)
return re.sub(r'\b\d+\b', replace_with_words, sentence) # Regular expression that matches numbers
@spaces.GPU
@torch.no_grad()
@torch.inference_mode()
def run(seed, nfe_step, speed, cfg_strength, sway_sampling_coef, ref_ratio,
audio_info, denoised_audio, transcribe_state, transcript, smart_transcript,
mode, start_time, end_time,
split_text, selected_sentence, audio_tensors):
if tts_edit_model is None:
raise gr.Error("LEMAS-TTS edit model not loaded")
if smart_transcript and (transcribe_state is None):
raise gr.Error("Can't use smart transcript: whisper transcript not found")
# On HF Spaces, keep CUDA usage inside this GPU worker: move the edit
# model and vocoder to GPU here (the weights were loaded on CPU).
if IS_SPACES and torch.cuda.is_available():
try:
if getattr(tts_edit_model, "device", "cpu") != "cuda":
if hasattr(tts_edit_model, "ema_model"):
tts_edit_model.ema_model.to("cuda")
if hasattr(tts_edit_model, "vocoder"):
try:
tts_edit_model.vocoder.to("cuda")
except Exception:
pass
tts_edit_model.device = "cuda"
except Exception as e:
logging.warning("Failed to move LEMAS-TTS model to CUDA: %s", e)
# Choose base audio (denoised if duration matches)
audio_base = audio_info
audio_dur = round(audio_info[1].shape[0] / audio_info[0], ndigits=3)
if denoised_audio is not None:
denoised_dur = round(denoised_audio[1].shape[0] / denoised_audio[0], ndigits=3)
if audio_dur == denoised_dur or (
denoised_audio[0] != audio_info[0] and abs(audio_dur - denoised_dur) < 0.1
):
audio_base = denoised_audio
logging.info("use denoised audio")
raw_sr, raw_wav = audio_base
print("audio_dur: ", audio_dur, raw_sr, raw_wav.shape, start_time, end_time)
# Build target text by replacing the selected span with `transcript`
words = transcribe_state["words_info"]
if not words:
raise gr.Error("No word-level alignment found; please run Transcribe first.")
start_time = float(start_time)
end_time = float(end_time)
if end_time <= start_time:
raise gr.Error("Edit end time must be greater than start time.")
# Find word indices covering the selected region
start_idx = 0
for i, w in enumerate(words):
if w["end"] > start_time:
start_idx = i
break
end_idx = len(words)
for i in range(len(words) - 1, -1, -1):
if words[i]["start"] < end_time:
end_idx = i + 1
break
if end_idx <= start_idx:
end_idx = min(start_idx + 1, len(words))
word_start_sec = float(words[start_idx]["start"])
word_end_sec = float(words[end_idx - 1]["end"])
# Edit span in seconds (relative to full utterance)
edit_start = max(0.0, word_start_sec - 0.1)
edit_end = min(word_end_sec + 0.1, audio_dur)
parts_to_edit = [(edit_start, edit_end)]
display_text = transcribe_state["segments"]["text_raw"].strip()
txt_list = display_text.split(" ") if display_text else [w["word"] for w in words]
prefix = " ".join(txt_list[:start_idx]).strip()
suffix = " ".join(txt_list[end_idx:]).strip()
new_phrase = transcript.strip()
pieces = []
if prefix:
pieces.append(prefix)
if new_phrase:
pieces.append(new_phrase)
if suffix:
pieces.append(suffix)
target_text = " ".join(pieces)
logging.info(
"target_text: %s (start_idx=%d, end_idx=%d, parts_to_edit=%s)",
target_text,
start_idx,
end_idx,
parts_to_edit,
)
# Prepare audio for LEMAS-TTS editing (mono, target SR)
segment_audio = load_wav(audio_base, sr=tts_edit_model.target_sample_rate)
seed_val = None if seed == -1 else int(seed)
# Decide whether to use prosody encoder at inference based on how TTS was built
use_prosody_flag = bool(getattr(tts_edit_model, "use_prosody_encoder", False))
wav_out, _ = gen_wav_multilingual(
tts_edit_model,
segment_audio,
tts_edit_model.target_sample_rate,
target_text,
parts_to_edit,
speed=float(speed),
nfe_step=int(nfe_step),
cfg_strength=float(cfg_strength),
sway_sampling_coef=float(sway_sampling_coef),
ref_ratio=float(ref_ratio),
no_ref_audio=False,
use_acc_grl=False,
use_prosody_encoder_flag=use_prosody_flag,
seed=seed_val,
)
wav_np = wav_out.cpu().numpy()
wav_np = np.clip(wav_np, -0.999, 0.999)
wav_int16 = (wav_np * np.iinfo(np.int16).max).astype(np.int16)
out_sr = int(tts_edit_model.target_sample_rate)
output_audio = (out_sr, wav_int16)
sentences = [f"0: {target_text}"]
audio_tensors = [torch.from_numpy(wav_np)]
component = gr.Dropdown(choices=sentences, value=sentences[0])
return output_audio, target_text, component, audio_tensors
def update_input_audio(audio_info):
if audio_info is None:
return 0, 0, 0
elif type(audio_info) is str:
info = torchaudio.info(audio_path)
max_time = round(info.num_frames / info.sample_rate, 2)
elif type(audio_info) is tuple:
max_time = round(audio_info[1].shape[0] / audio_info[0], 2)
return [
# gr.Slider(maximum=max_time, value=max_time),
gr.Slider(maximum=max_time, value=0),
gr.Slider(maximum=max_time, value=max_time),
]
def change_mode(mode):
# tts_mode_controls, edit_mode_controls, edit_word_mode, split_text, long_tts_sentence_editor
return [
gr.Group(visible=mode != "Edit"),
gr.Group(visible=mode == "Edit"),
gr.Radio(visible=mode == "Edit"),
gr.Radio(visible=mode == "Long TTS"),
gr.Group(visible=mode == "Long TTS"),
]
def load_sentence(selected_sentence, audio_tensors):
if selected_sentence is None:
return None
colon_position = selected_sentence.find(':')
selected_sentence_idx = int(selected_sentence[:colon_position])
# Use LEMAS-TTS target sample rate if available, otherwise default to 16000
sr = getattr(tts_edit_model, "target_sample_rate", 16000)
return get_output_audio([audio_tensors[selected_sentence_idx]], sr)
def update_bound_word(is_first_word, selected_word, edit_word_mode):
if selected_word is None:
return None
word_start_time = float(selected_word.split(' ')[0])
word_end_time = float(selected_word.split(' ')[-1])
if edit_word_mode == "Replace half":
bound_time = (word_start_time + word_end_time) / 2
elif is_first_word:
bound_time = word_start_time
else:
bound_time = word_end_time
return bound_time
def update_bound_words(from_selected_word, to_selected_word, edit_word_mode):
return [
update_bound_word(True, from_selected_word, edit_word_mode),
update_bound_word(False, to_selected_word, edit_word_mode),
]
smart_transcript_info = """
If enabled, the target transcript will be constructed for you:</br>
- In Edit mode just write the text to replace selected editing segment.</br>
"""
demo_original_transcript = ""
demo_text = {
"Edit": {
"smart": "write new words here.",
}
}
all_demo_texts = {vv for k, v in demo_text.items() for kk, vv in v.items()}
demo_words = ['0.069 Gwynplain 0.611', '0.671 had, 0.912', '0.952 besides, 1.414', '1.494 for 1.634', '1.695 his 1.835', '1.915 work 2.136', '2.196 and 2.297', '2.337 for 2.517', '2.557 his 2.678', '2.758 feats 3.019', '3.079 of 3.139', '3.2 strength, 3.561', '4.022 round 4.263', '4.303 his 4.444', '4.524 neck 4.705', '4.745 and 4.825', '4.905 over 5.086', '5.146 his 5.266', '5.307 shoulders, 5.768', '6.23 an 6.33', '6.531 esclavine 7.133', '7.213 of 7.293', '7.353 leather. 7.614']
demo_words_info = [{'word': 'Gwynplain', 'start': 0.069, 'end': 0.611, 'score': 0.833}, {'word': 'had,', 'start': 0.671, 'end': 0.912, 'score': 0.879}, {'word': 'besides,', 'start': 0.952, 'end': 1.414, 'score': 0.863}, {'word': 'for', 'start': 1.494, 'end': 1.634, 'score': 0.89}, {'word': 'his', 'start': 1.695, 'end': 1.835, 'score': 0.669}, {'word': 'work', 'start': 1.915, 'end': 2.136, 'score': 0.916}, {'word': 'and', 'start': 2.196, 'end': 2.297, 'score': 0.766}, {'word': 'for', 'start': 2.337, 'end': 2.517, 'score': 0.808}, {'word': 'his', 'start': 2.557, 'end': 2.678, 'score': 0.786}, {'word': 'feats', 'start': 2.758, 'end': 3.019, 'score': 0.97}, {'word': 'of', 'start': 3.079, 'end': 3.139, 'score': 0.752}, {'word': 'strength,', 'start': 3.2, 'end': 3.561, 'score': 0.742}, {'word': 'round', 'start': 4.022, 'end': 4.263, 'score': 0.916}, {'word': 'his', 'start': 4.303, 'end': 4.444, 'score': 0.666}, {'word': 'neck', 'start': 4.524, 'end': 4.705, 'score': 0.908}, {'word': 'and', 'start': 4.745, 'end': 4.825, 'score': 0.882}, {'word': 'over', 'start': 4.905, 'end': 5.086, 'score': 0.847}, {'word': 'his', 'start': 5.146, 'end': 5.266, 'score': 0.791}, {'word': 'shoulders,', 'start': 5.307, 'end': 5.768, 'score': 0.729}, {'word': 'an', 'start': 6.23, 'end': 6.33, 'score': 0.854}, {'word': 'esclavine', 'start': 6.531, 'end': 7.133, 'score': 0.803}, {'word': 'of', 'start': 7.213, 'end': 7.293, 'score': 0.772}, {'word': 'leather.', 'start': 7.353, 'end': 7.614, 'score': 0.896}]
def update_demo(mode, smart_transcript, edit_word_mode, transcript, edit_from_word, edit_to_word):
if transcript not in all_demo_texts:
return transcript, edit_from_word, edit_to_word
replace_half = edit_word_mode == "Replace half"
change_edit_from_word = edit_from_word == demo_words[2] or edit_from_word == demo_words[3]
change_edit_to_word = edit_to_word == demo_words[11] or edit_to_word == demo_words[12]
demo_edit_from_word_value = demo_words[2] if replace_half else demo_words[3]
demo_edit_to_word_value = demo_words[12] if replace_half else demo_words[11]
return [
demo_text[mode]["smart" if smart_transcript else "regular"],
demo_edit_from_word_value if change_edit_from_word else edit_from_word,
demo_edit_to_word_value if change_edit_to_word else edit_to_word,
]
def get_app():
with gr.Blocks() as app:
with gr.Row():
with gr.Column(scale=2):
load_models_btn = gr.Button(value="Load models")
with gr.Column(scale=5):
with gr.Accordion("Select models", open=False) as models_selector:
# For LEMAS-TTS editing, we expose a simple model selector
# between the two multilingual variants.
with gr.Row():
lemas_model_choice = gr.Radio(
label="Edit Model",
choices=["multilingual_grl", "multilingual_prosody"],
value="multilingual_grl",
interactive=True,
scale=3,
)
denoise_model_choice = gr.Radio(label="Denoise Model", scale=2, value="UVR5", choices=["UVR5", "DeepFilterNet"]) # "830M", "330M_TTSEnhanced", "830M_TTSEnhanced"])
whisper_model_choice = gr.Radio(label="Whisper model", scale=3, value="medium", choices=["base", "small", "medium", "large"])
align_model_choice = gr.Radio(label="Forced alignment model", scale=2, value="MMS", choices=["whisperX", "MMS"], visible=False)
with gr.Row():
with gr.Column(scale=2):
# Use a numpy waveform as default value to avoid Gradio's
# InvalidPathError with local filesystem paths.
input_audio = gr.Audio(
value=os.path.join(DEMO_PATH, "test.wav"),
label="Input Audio",
interactive=True,
)
with gr.Row():
transcribe_btn = gr.Button(value="Transcribe")
align_btn = gr.Button(value="ReAlign")
with gr.Group():
original_transcript = gr.Textbox(label="Original transcript", lines=5, interactive=True, value=demo_original_transcript,
info="Use whisperx model to get the transcript. Fix and align it if necessary.")
with gr.Accordion("Word start time", open=False, visible=False):
transcript_with_start_time = gr.Textbox(label="Start time", lines=5, interactive=False, info="Start time before each word")
with gr.Accordion("Word end time", open=False, visible=False):
transcript_with_end_time = gr.Textbox(label="End time", lines=5, interactive=False, info="End time after each word")
with gr.Row():
denoise_btn = gr.Button(value="Denoise")
cancel_btn = gr.Button(value="Cancel Denoise")
denoise_audio = gr.Audio(label="Denoised Audio", value=None, interactive=False, type="numpy")
with gr.Column(scale=3):
with gr.Group():
transcript_inbox = gr.Textbox(label="Text", lines=5, value=demo_text["Edit"]["smart"])
with gr.Row(visible=False):
smart_transcript = gr.Checkbox(label="Smart transcript", value=True)
with gr.Accordion(label="?", open=False):
info = gr.Markdown(value=smart_transcript_info)
mode = gr.Radio(label="Mode", choices=["Edit"], value="Edit", visible=False)
with gr.Row(visible=False):
split_text = gr.Radio(label="Split text", choices=["Newline", "Sentence"], value="Newline",
info="Split text into parts and run TTS for each part.", visible=True)
edit_word_mode = gr.Radio(label="Edit word mode", choices=["Replace half", "Replace all"], value="Replace all",
info="What to do with first and last word", visible=False)
with gr.Row():
edit_from_word = gr.Dropdown(label="First word to edit", choices=demo_words, value=demo_words[12], interactive=True)
edit_to_word = gr.Dropdown(label="Last word to edit", choices=demo_words, value=demo_words[18], interactive=True)
with gr.Row():
edit_start_time = gr.Slider(label="Edit from time", minimum=0, maximum=7.614, step=0.001, value=4.022)
edit_end_time = gr.Slider(label="Edit to time", minimum=0, maximum=7.614, step=0.001, value=5.768)
# Put the button and audio in separate columns so that
# the tall audio widget does not overlap the clickable
# area of the button.
with gr.Row():
with gr.Column(scale=1):
check_btn = gr.Button(value="Check edit words")
with gr.Column(scale=3):
edit_audio = gr.Audio(label="Edit word(s)", scale=3, type="numpy")
run_btn = gr.Button(value="Run", variant="primary")
with gr.Column(scale=2):
output_audio = gr.Audio(label="Output Audio", type="numpy")
with gr.Accordion("Inference transcript", open=True):
inference_transcript = gr.Textbox(label="Inference transcript", lines=5, interactive=False, info="Inference was performed on this transcript.")
# Simple in-app README to guide users through the editing workflow.
# Use HTML so we can cap the height (~12 lines) and enable scrolling.
readme_help = gr.HTML(
value=(
'<div style="max-height: 12em; overflow-y: auto; white-space: pre-wrap;">'
"<h4>README: How to Use This Tool</h4>"
"<p><b>1. Load models</b><br>"
"Click <b>&ldquo;Load Models&rdquo;</b> and wait for all models to finish loading. "
"Note that <b>WhisperX</b> takes the longest to initialize, so please be patient.</p>"
"<p><b>2. Upload input audio</b><br>"
"Click <b>&ldquo;Input Audio&rdquo;</b> and upload the audio file you want to edit.</p>"
"<p><b>3. Transcribe and correct text</b><br>"
"Click <b>&ldquo;Transcribe&rdquo;</b> to perform speech recognition. If the transcription is inaccurate, "
"edit the text in <b>&ldquo;Original transcript&rdquo;</b>, then click <b>&ldquo;ReAlign&rdquo;</b> to recompute "
"word-level timestamps.</p>"
"<p><b>4. (Optional) Denoise noisy audio</b><br>"
"If the input audio is noisy and affects recognition or synthesis quality, click "
"<b>&ldquo;Denoise&rdquo;</b> to apply noise reduction. If you are not satisfied with the denoised result, "
"click <b>&ldquo;Cancel Denoise&rdquo;</b> to restore the original audio, or switch to a different denoiser "
"under <b>&ldquo;Select models&rdquo;</b> and reload.</p>"
"<p><b>5. Select the edit span</b><br>"
"Use <b>&ldquo;First word to edit&rdquo;</b> and <b>&ldquo;Last word to edit&rdquo;</b> to specify the region to modify, "
"then click <b>&ldquo;Check edit words&rdquo;</b> to preview the selection. For finer control, you may also adjust "
"<b>&ldquo;Edit from time&rdquo;</b> and <b>&ldquo;Edit to time&rdquo;</b>.</p>"
"<p><b>6. Enter the new text</b><br>"
"In the <b>&ldquo;Text&rdquo;</b> box, enter the text that should replace the selected segment.</p>"
"<p><b>7. Run the edit</b><br>"
"Click <b>&ldquo;Run&rdquo;</b> and wait for the model to generate the edited audio.</p>"
"<p><b>8. Inspect the result</b><br>"
"The edited waveform will appear in <b>&ldquo;Output Audio&rdquo;</b>, and the corresponding edited text will be "
"shown under <b>&ldquo;Inference transcript&rdquo;</b>.</p>"
"<p><b>9. Refine or change models</b><br>"
"If the result is not satisfactory, try adjusting the <b>&ldquo;Generation Parameters&rdquo;</b> or selecting a "
"different <b>&ldquo;Edit Model&rdquo;</b> under <b>&ldquo;Select models&rdquo;</b>, then run again.</p>"
"<p><b>10. Feedback</b><br>"
"For bug reports or feature requests, feel free to:<br>"
"1) Open a GitHub issue<br>"
"2) Post on the Hugging Face community page<br>"
"3) Contact us via email at <code>approximetal@gmail.com</code></p>"
"</div>"
)
)
with gr.Group(visible=False) as long_tts_sentence_editor:
sentence_selector = gr.Dropdown(label="Sentence", value=None,
info="Select sentence you want to regenerate")
sentence_audio = gr.Audio(label="Sentence Audio", scale=2, type="numpy")
rerun_btn = gr.Button(value="Rerun")
with gr.Row():
with gr.Accordion("Generation Parameters - change these if you are unhappy with the generation", open=False):
with gr.Row():
nfe_step = gr.Number(
label="NFE Step",
value=64,
precision=0,
info="Number of function evaluations (sampling steps).",
)
speed = gr.Slider(
label="Speed",
minimum=0.5,
maximum=1.5,
step=0.1,
value=1.0,
info="Placeholder for future use; currently not applied.",
)
cfg_strength = gr.Slider(
label="CFG Strength",
minimum=0.0,
maximum=10.0,
step=0.5,
value=5.0,
info="Classifier-free guidance strength.",
)
with gr.Row():
sway_sampling_coef = gr.Slider(
label="Sway",
minimum=2.0,
maximum=5.0,
step=0.1,
value=3.0,
info="Sampling sway coefficient.",
)
ref_ratio = gr.Slider(
label="Ref Ratio",
minimum=0.0,
maximum=1.0,
step=0.05,
value=1.0,
info="How much to rely on reference audio (if used).",
)
seed = gr.Number(
label="Seed",
value=-1,
precision=0,
info="-1 for random, otherwise fixed seed.",
)
audio_tensors = gr.State()
transcribe_state = gr.State(value={"words_info": demo_words_info, "lang":"zh"})
edit_word_mode.change(fn=update_demo,
inputs=[mode, smart_transcript, edit_word_mode, transcript_inbox, edit_from_word, edit_to_word],
outputs=[transcript_inbox, edit_from_word, edit_to_word])
smart_transcript.change(
fn=update_demo,
inputs=[mode, smart_transcript, edit_word_mode, transcript_inbox, edit_from_word, edit_to_word],
outputs=[transcript_inbox, edit_from_word, edit_to_word],
)
load_models_btn.click(fn=load_models,
inputs=[lemas_model_choice, whisper_model_choice, align_model_choice, denoise_model_choice], # audiosr_choice],
outputs=[models_selector])
input_audio.upload(fn=update_input_audio,
inputs=[input_audio],
outputs=[edit_start_time, edit_end_time]) # prompt_end_time
transcribe_btn.click(fn=transcribe,
inputs=[seed, input_audio],
outputs=[original_transcript, transcript_with_start_time, transcript_with_end_time,
edit_from_word, edit_to_word, transcribe_state]) # prompt_to_word
align_btn.click(fn=align,
inputs=[original_transcript, input_audio, transcribe_state],
outputs=[original_transcript, transcript_with_start_time, transcript_with_end_time,
edit_from_word, edit_to_word, transcribe_state]) # prompt_to_word
denoise_btn.click(fn=denoise,
inputs=[input_audio],
outputs=[denoise_audio])
cancel_btn.click(fn=cancel_denoise,
inputs=[input_audio],
outputs=[denoise_audio])
check_btn.click(fn=get_edit_audio_part,
inputs=[input_audio, edit_start_time, edit_end_time],
outputs=[edit_audio])
run_btn.click(fn=run,
inputs=[
seed, nfe_step, speed, cfg_strength, sway_sampling_coef, ref_ratio,
input_audio, denoise_audio, transcribe_state, transcript_inbox, smart_transcript,
mode, edit_start_time, edit_end_time,
split_text, sentence_selector, audio_tensors
],
outputs=[output_audio, inference_transcript, sentence_selector, audio_tensors])
sentence_selector.change(
fn=load_sentence,
inputs=[sentence_selector, audio_tensors],
outputs=[sentence_audio],
)
rerun_btn.click(fn=run,
inputs=[
seed, nfe_step, speed, cfg_strength, sway_sampling_coef, ref_ratio,
input_audio, denoise_audio, transcribe_state, transcript_inbox, smart_transcript,
gr.State(value="Rerun"), edit_start_time, edit_end_time,
split_text, sentence_selector, audio_tensors
],
outputs=[output_audio, inference_transcript, sentence_audio, audio_tensors])
edit_from_word.change(fn=update_bound_word,
inputs=[gr.State(True), edit_from_word, edit_word_mode],
outputs=[edit_start_time])
edit_to_word.change(fn=update_bound_word,
inputs=[gr.State(False), edit_to_word, edit_word_mode],
outputs=[edit_end_time])
edit_word_mode.change(fn=update_bound_words,
inputs=[edit_from_word, edit_to_word, edit_word_mode],
outputs=[edit_start_time, edit_end_time])
return app
if __name__ == "__main__":
import argparse
parser = argparse.ArgumentParser(description="LEMAS-Edit gradio app.")
parser.add_argument("--demo-path", default="./pretrained_models/demo", help="Path to demo directory")
parser.add_argument("--tmp-path", default="./pretrained_models/tmp", help="Path to tmp directory")
parser.add_argument("--port", default=41020, type=int, help="App port")
parser.add_argument("--share", action="store_true", help="Launch with public url")
parser.add_argument("--server_name", default="0.0.0.0", type=str, help="Server name for launching the app. 127.0.0.1 for localhost; 0.0.0.0 to allow access from other machines in the local network. Might also give access to external users depends on the firewall settings.")
parser.add_argument(
"--models-path",
default="./pretrained_models",
dest="models_path",
help="Path to pretrained_models root (mirrors LEMAS-TTS layout).",
)
os.environ["USER"] = os.getenv("USER", "user")
args = parser.parse_args()
DEMO_PATH = args.demo_path
TMP_PATH = args.tmp_path
MODELS_PATH = args.models_path
app = get_app()
app.queue().launch(share=args.share, server_name=args.server_name, server_port=args.port)