| import argparse |
| import logging |
| import os |
| import pathlib |
| import time |
| import tempfile |
| import platform |
| if platform.system().lower() == 'windows': |
| temp = pathlib.PosixPath |
| pathlib.PosixPath = pathlib.WindowsPath |
| elif platform.system().lower() == 'linux': |
| temp = pathlib.WindowsPath |
| pathlib.WindowsPath = pathlib.PosixPath |
| os.environ["PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION"] = "python" |
|
|
| import langid |
| langid.set_languages(['en', 'zh', 'ja']) |
|
|
| import torch |
| import torchaudio |
| import random |
|
|
| import numpy as np |
|
|
| from data.tokenizer import ( |
| AudioTokenizer, |
| tokenize_audio, |
| ) |
| from data.collation import get_text_token_collater |
| from models.vallex import VALLE |
| from utils.g2p import PhonemeBpeTokenizer |
| from descriptions import * |
| from macros import * |
|
|
| import gradio as gr |
| import whisper |
| import multiprocessing |
|
|
| import math |
| import tempfile |
| from typing import Optional, Tuple, Union |
|
|
| import matplotlib.pyplot as plt |
| from loguru import logger |
| from PIL import Image |
| from torch import Tensor |
| from torchaudio.backend.common import AudioMetaData |
|
|
| from df import config |
| from df.enhance import enhance, init_df, load_audio, save_audio |
| from df.io import resample |
|
|
|
|
| thread_count = multiprocessing.cpu_count() |
|
|
| print("Use",thread_count,"cpu cores for computing") |
|
|
| torch.set_num_threads(thread_count) |
| torch.set_num_interop_threads(thread_count) |
| torch._C._jit_set_profiling_executor(False) |
| torch._C._jit_set_profiling_mode(False) |
| torch._C._set_graph_executor_optimize(False) |
|
|
| text_tokenizer = PhonemeBpeTokenizer(tokenizer_path="./utils/g2p/bpe_69.json") |
| text_collater = get_text_token_collater() |
|
|
| device = torch.device("cpu") |
| if torch.cuda.is_available(): |
| device = torch.device("cuda", 0) |
|
|
| |
|
|
| model1, df, _ = init_df("./DeepFilterNet2", config_allow_defaults=True) |
| model1 = model1.to(device=device).eval() |
|
|
| fig_noisy: plt.Figure |
| fig_enh: plt.Figure |
| ax_noisy: plt.Axes |
| ax_enh: plt.Axes |
| fig_noisy, ax_noisy = plt.subplots(figsize=(15.2, 4)) |
| fig_noisy.set_tight_layout(True) |
| fig_enh, ax_enh = plt.subplots(figsize=(15.2, 4)) |
| fig_enh.set_tight_layout(True) |
|
|
| NOISES = { |
| "None": None, |
| } |
|
|
| def mix_at_snr(clean, noise, snr, eps=1e-10): |
| """Mix clean and noise signal at a given SNR. |
| Args: |
| clean: 1D Tensor with the clean signal to mix. |
| noise: 1D Tensor of shape. |
| snr: Signal to noise ratio. |
| Returns: |
| clean: 1D Tensor with gain changed according to the snr. |
| noise: 1D Tensor with the combined noise channels. |
| mix: 1D Tensor with added clean and noise signals. |
| """ |
| clean = torch.as_tensor(clean).mean(0, keepdim=True) |
| noise = torch.as_tensor(noise).mean(0, keepdim=True) |
| if noise.shape[1] < clean.shape[1]: |
| noise = noise.repeat((1, int(math.ceil(clean.shape[1] / noise.shape[1])))) |
| max_start = int(noise.shape[1] - clean.shape[1]) |
| start = torch.randint(0, max_start, ()).item() if max_start > 0 else 0 |
| logger.debug(f"start: {start}, {clean.shape}") |
| noise = noise[:, start : start + clean.shape[1]] |
| E_speech = torch.mean(clean.pow(2)) + eps |
| E_noise = torch.mean(noise.pow(2)) |
| K = torch.sqrt((E_noise / E_speech) * 10 ** (snr / 10) + eps) |
| noise = noise / K |
| mixture = clean + noise |
| logger.debug("mixture: {mixture.shape}") |
| assert torch.isfinite(mixture).all() |
| max_m = mixture.abs().max() |
| if max_m > 1: |
| logger.warning(f"Clipping detected during mixing. Reducing gain by {1/max_m}") |
| clean, noise, mixture = clean / max_m, noise / max_m, mixture / max_m |
| return clean, noise, mixture |
|
|
|
|
| def load_audio_gradio( |
| audio_or_file: Union[None, str, Tuple[int, np.ndarray]], sr: int |
| ) -> Optional[Tuple[Tensor, AudioMetaData]]: |
| if audio_or_file is None: |
| return None |
| if isinstance(audio_or_file, str): |
| if audio_or_file.lower() == "none": |
| return None |
| |
| audio, meta = load_audio(audio_or_file, sr) |
| else: |
| meta = AudioMetaData(-1, -1, -1, -1, "") |
| assert isinstance(audio_or_file, (tuple, list)) |
| meta.sample_rate, audio_np = audio_or_file |
| |
| audio_np = audio_np.reshape(audio_np.shape[0], -1).T |
| if audio_np.dtype == np.int16: |
| audio_np = (audio_np / (1 << 15)).astype(np.float32) |
| elif audio_np.dtype == np.int32: |
| audio_np = (audio_np / (1 << 31)).astype(np.float32) |
| audio = resample(torch.from_numpy(audio_np), meta.sample_rate, sr) |
| return audio, meta |
|
|
|
|
| def demo_fn(speech_upl: str, noise_type: str, snr: int, mic_input: str): |
| if mic_input: |
| speech_upl = mic_input |
| sr = config("sr", 48000, int, section="df") |
| logger.info(f"Got parameters speech_upl: {speech_upl}, noise: {noise_type}, snr: {snr}") |
| snr = int(snr) |
| noise_fn = NOISES[noise_type] |
| meta = AudioMetaData(-1, -1, -1, -1, "") |
| max_s = 10 |
| if speech_upl is not None: |
| sample, meta = load_audio(speech_upl, sr) |
| max_len = max_s * sr |
| if sample.shape[-1] > max_len: |
| start = torch.randint(0, sample.shape[-1] - max_len, ()).item() |
| sample = sample[..., start : start + max_len] |
| else: |
| sample, meta = load_audio("samples/p232_013_clean.wav", sr) |
| sample = sample[..., : max_s * sr] |
| if sample.dim() > 1 and sample.shape[0] > 1: |
| assert ( |
| sample.shape[1] > sample.shape[0] |
| ), f"Expecting channels first, but got {sample.shape}" |
| sample = sample.mean(dim=0, keepdim=True) |
| logger.info(f"Loaded sample with shape {sample.shape}") |
| if noise_fn is not None: |
| noise, _ = load_audio(noise_fn, sr) |
| logger.info(f"Loaded noise with shape {noise.shape}") |
| _, _, sample = mix_at_snr(sample, noise, snr) |
| logger.info("Start denoising audio") |
| enhanced = enhance(model1, df, sample) |
| logger.info("Denoising finished") |
| lim = torch.linspace(0.0, 1.0, int(sr * 0.15)).unsqueeze(0) |
| lim = torch.cat((lim, torch.ones(1, enhanced.shape[1] - lim.shape[1])), dim=1) |
| enhanced = enhanced * lim |
| if meta.sample_rate != sr: |
| enhanced = resample(enhanced, sr, meta.sample_rate) |
| sample = resample(sample, sr, meta.sample_rate) |
| sr = meta.sample_rate |
| noisy_wav = tempfile.NamedTemporaryFile(suffix="noisy.wav", delete=False).name |
| save_audio(noisy_wav, sample, sr) |
| enhanced_wav = tempfile.NamedTemporaryFile(suffix="enhanced.wav", delete=False).name |
| save_audio(enhanced_wav, enhanced, sr) |
| logger.info(f"saved audios: {noisy_wav}, {enhanced_wav}") |
| ax_noisy.clear() |
| ax_enh.clear() |
| noisy_im = spec_im(sample, sr=sr, figure=fig_noisy, ax=ax_noisy) |
| enh_im = spec_im(enhanced, sr=sr, figure=fig_enh, ax=ax_enh) |
| |
| |
| return noisy_wav, noisy_im, enhanced_wav, enh_im |
|
|
|
|
| def specshow( |
| spec, |
| ax=None, |
| title=None, |
| xlabel=None, |
| ylabel=None, |
| sr=48000, |
| n_fft=None, |
| hop=None, |
| t=None, |
| f=None, |
| vmin=-100, |
| vmax=0, |
| xlim=None, |
| ylim=None, |
| cmap="inferno", |
| ): |
| """Plots a spectrogram of shape [F, T]""" |
| spec_np = spec.cpu().numpy() if isinstance(spec, torch.Tensor) else spec |
| if ax is not None: |
| set_title = ax.set_title |
| set_xlabel = ax.set_xlabel |
| set_ylabel = ax.set_ylabel |
| set_xlim = ax.set_xlim |
| set_ylim = ax.set_ylim |
| else: |
| ax = plt |
| set_title = plt.title |
| set_xlabel = plt.xlabel |
| set_ylabel = plt.ylabel |
| set_xlim = plt.xlim |
| set_ylim = plt.ylim |
| if n_fft is None: |
| if spec.shape[0] % 2 == 0: |
| n_fft = spec.shape[0] * 2 |
| else: |
| n_fft = (spec.shape[0] - 1) * 2 |
| hop = hop or n_fft // 4 |
| if t is None: |
| t = np.arange(0, spec_np.shape[-1]) * hop / sr |
| if f is None: |
| f = np.arange(0, spec_np.shape[0]) * sr // 2 / (n_fft // 2) / 1000 |
| im = ax.pcolormesh( |
| t, f, spec_np, rasterized=True, shading="auto", vmin=vmin, vmax=vmax, cmap=cmap |
| ) |
| if title is not None: |
| set_title(title) |
| if xlabel is not None: |
| set_xlabel(xlabel) |
| if ylabel is not None: |
| set_ylabel(ylabel) |
| if xlim is not None: |
| set_xlim(xlim) |
| if ylim is not None: |
| set_ylim(ylim) |
| return im |
|
|
|
|
| def spec_im( |
| audio: torch.Tensor, |
| figsize=(15, 5), |
| colorbar=False, |
| colorbar_format=None, |
| figure=None, |
| labels=True, |
| **kwargs, |
| ) -> Image: |
| audio = torch.as_tensor(audio) |
| if labels: |
| kwargs.setdefault("xlabel", "Time [s]") |
| kwargs.setdefault("ylabel", "Frequency [Hz]") |
| n_fft = kwargs.setdefault("n_fft", 1024) |
| hop = kwargs.setdefault("hop", 512) |
| w = torch.hann_window(n_fft, device=audio.device) |
| spec = torch.stft(audio, n_fft, hop, window=w, return_complex=False) |
| spec = spec.div_(w.pow(2).sum()) |
| spec = torch.view_as_complex(spec).abs().clamp_min(1e-12).log10().mul(10) |
| kwargs.setdefault("vmax", max(0.0, spec.max().item())) |
|
|
| if figure is None: |
| figure = plt.figure(figsize=figsize) |
| figure.set_tight_layout(True) |
| if spec.dim() > 2: |
| spec = spec.squeeze(0) |
| im = specshow(spec, **kwargs) |
| if colorbar: |
| ckwargs = {} |
| if "ax" in kwargs: |
| if colorbar_format is None: |
| if kwargs.get("vmin", None) is not None or kwargs.get("vmax", None) is not None: |
| colorbar_format = "%+2.0f dB" |
| ckwargs = {"ax": kwargs["ax"]} |
| plt.colorbar(im, format=colorbar_format, **ckwargs) |
| figure.canvas.draw() |
| return Image.frombytes("RGB", figure.canvas.get_width_height(), figure.canvas.tostring_rgb()) |
|
|
|
|
| def toggle(choice): |
| if choice == "mic": |
| return gr.update(visible=True, value=None), gr.update(visible=False, value=None) |
| else: |
| return gr.update(visible=False, value=None), gr.update(visible=True, value=None) |
|
|
|
|
| |
| model = VALLE( |
| N_DIM, |
| NUM_HEAD, |
| NUM_LAYERS, |
| norm_first=True, |
| add_prenet=False, |
| prefix_mode=PREFIX_MODE, |
| share_embedding=True, |
| nar_scale_factor=1.0, |
| prepend_bos=True, |
| num_quantizers=NUM_QUANTIZERS, |
| ) |
| checkpoint = torch.load("./epoch-10.pt", map_location='cpu') |
| missing_keys, unexpected_keys = model.load_state_dict( |
| checkpoint["model"], strict=True |
| ) |
| assert not missing_keys |
| model.eval() |
|
|
| |
| audio_tokenizer = AudioTokenizer(device) |
|
|
| |
| whisper_model = whisper.load_model("medium").cpu() |
|
|
| |
| preset_list = os.walk("./presets/").__next__()[2] |
| preset_list = [preset[:-4] for preset in preset_list if preset.endswith(".npz")] |
|
|
| def clear_prompts(): |
| try: |
| path = tempfile.gettempdir() |
| for eachfile in os.listdir(path): |
| filename = os.path.join(path, eachfile) |
| if os.path.isfile(filename) and filename.endswith(".npz"): |
| lastmodifytime = os.stat(filename).st_mtime |
| endfiletime = time.time() - 60 |
| if endfiletime > lastmodifytime: |
| os.remove(filename) |
| except: |
| return |
|
|
| def transcribe_one(model, audio_path): |
| |
| audio = whisper.load_audio(audio_path) |
| audio = whisper.pad_or_trim(audio) |
|
|
| |
| mel = whisper.log_mel_spectrogram(audio).to(model.device) |
|
|
| |
| _, probs = model.detect_language(mel) |
| print(f"Detected language: {max(probs, key=probs.get)}") |
| lang = max(probs, key=probs.get) |
| |
| options = whisper.DecodingOptions(temperature=1.0, best_of=5, fp16=False if device == torch.device("cpu") else True, sample_len=150) |
| result = whisper.decode(model, mel, options) |
|
|
| |
| print(result.text) |
|
|
| text_pr = result.text |
| if text_pr.strip(" ")[-1] not in "?!.,。,?!。、": |
| text_pr += "." |
| return lang, text_pr |
|
|
| def make_npz_prompt(name, uploaded_audio, recorded_audio, transcript_content): |
| global model, text_collater, text_tokenizer, audio_tokenizer |
| clear_prompts() |
| audio_prompt = uploaded_audio if uploaded_audio is not None else recorded_audio |
| sr, wav_pr = audio_prompt |
| if len(wav_pr) / sr > 15: |
| return "Rejected, Audio too long (should be less than 15 seconds)", None |
| if not isinstance(wav_pr, torch.FloatTensor): |
| wav_pr = torch.FloatTensor(wav_pr) |
| if wav_pr.abs().max() > 1: |
| wav_pr /= wav_pr.abs().max() |
| if wav_pr.size(-1) == 2: |
| wav_pr = wav_pr[:, 0] |
| if wav_pr.ndim == 1: |
| wav_pr = wav_pr.unsqueeze(0) |
| assert wav_pr.ndim and wav_pr.size(0) == 1 |
|
|
| if transcript_content == "": |
| text_pr, lang_pr = make_prompt(name, wav_pr, sr, save=False) |
| else: |
| lang_pr = langid.classify(str(transcript_content))[0] |
| lang_token = lang2token[lang_pr] |
| text_pr = f"{lang_token}{str(transcript_content)}{lang_token}" |
| |
| encoded_frames = tokenize_audio(audio_tokenizer, (wav_pr, sr)) |
| audio_tokens = encoded_frames[0][0].transpose(2, 1).cpu().numpy() |
|
|
| |
| phonemes, _ = text_tokenizer.tokenize(text=f"{text_pr}".strip()) |
| text_tokens, enroll_x_lens = text_collater( |
| [ |
| phonemes |
| ] |
| ) |
|
|
| message = f"Detected language: {lang_pr}\n Detected text {text_pr}\n" |
|
|
| |
| np.savez(os.path.join(tempfile.gettempdir(), f"{name}.npz"), |
| audio_tokens=audio_tokens, text_tokens=text_tokens, lang_code=lang2code[lang_pr]) |
| return "提取音色成功!", os.path.join(tempfile.gettempdir(), f"{name}.npz") |
|
|
|
|
| def make_prompt(name, wav, sr, save=True): |
| global whisper_model |
| whisper_model.to(device) |
| if not isinstance(wav, torch.FloatTensor): |
| wav = torch.tensor(wav) |
| if wav.abs().max() > 1: |
| wav /= wav.abs().max() |
| if wav.size(-1) == 2: |
| wav = wav.mean(-1, keepdim=False) |
| if wav.ndim == 1: |
| wav = wav.unsqueeze(0) |
| assert wav.ndim and wav.size(0) == 1 |
| torchaudio.save(f"./prompts/{name}.wav", wav, sr) |
| lang, text = transcribe_one(whisper_model, f"./prompts/{name}.wav") |
| lang_token = lang2token[lang] |
| text = lang_token + text + lang_token |
| with open(f"./prompts/{name}.txt", 'w') as f: |
| f.write(text) |
| if not save: |
| os.remove(f"./prompts/{name}.wav") |
| os.remove(f"./prompts/{name}.txt") |
|
|
| whisper_model.cpu() |
| torch.cuda.empty_cache() |
| return text, lang |
|
|
| @torch.no_grad() |
| def infer_from_audio(text, language, accent, audio_prompt, record_audio_prompt, transcript_content): |
| if len(text) > 150: |
| return "Rejected, Text too long (should be less than 150 characters)", None |
| global model, text_collater, text_tokenizer, audio_tokenizer |
| model.to(device) |
| audio_prompt = audio_prompt if audio_prompt is not None else record_audio_prompt |
| sr, wav_pr = audio_prompt |
| if len(wav_pr) / sr > 15: |
| return "Rejected, Audio too long (should be less than 15 seconds)", None |
| if not isinstance(wav_pr, torch.FloatTensor): |
| wav_pr = torch.FloatTensor(wav_pr) |
| if wav_pr.abs().max() > 1: |
| wav_pr /= wav_pr.abs().max() |
| if wav_pr.size(-1) == 2: |
| wav_pr = wav_pr[:, 0] |
| if wav_pr.ndim == 1: |
| wav_pr = wav_pr.unsqueeze(0) |
| assert wav_pr.ndim and wav_pr.size(0) == 1 |
|
|
| if transcript_content == "": |
| text_pr, lang_pr = make_prompt('dummy', wav_pr, sr, save=False) |
| else: |
| lang_pr = langid.classify(str(transcript_content))[0] |
| lang_token = lang2token[lang_pr] |
| text_pr = f"{lang_token}{str(transcript_content)}{lang_token}" |
|
|
| if language == 'auto-detect': |
| lang_token = lang2token[langid.classify(text)[0]] |
| else: |
| lang_token = langdropdown2token[language] |
| lang = token2lang[lang_token] |
| text = lang_token + text + lang_token |
|
|
| |
| model.to(device) |
|
|
| |
| encoded_frames = tokenize_audio(audio_tokenizer, (wav_pr, sr)) |
| audio_prompts = encoded_frames[0][0].transpose(2, 1).to(device) |
|
|
| |
| logging.info(f"synthesize text: {text}") |
| phone_tokens, langs = text_tokenizer.tokenize(text=f"_{text}".strip()) |
| text_tokens, text_tokens_lens = text_collater( |
| [ |
| phone_tokens |
| ] |
| ) |
|
|
| enroll_x_lens = None |
| if text_pr: |
| text_prompts, _ = text_tokenizer.tokenize(text=f"{text_pr}".strip()) |
| text_prompts, enroll_x_lens = text_collater( |
| [ |
| text_prompts |
| ] |
| ) |
| text_tokens = torch.cat([text_prompts, text_tokens], dim=-1) |
| text_tokens_lens += enroll_x_lens |
| lang = lang if accent == "no-accent" else token2lang[langdropdown2token[accent]] |
| encoded_frames = model.inference( |
| text_tokens.to(device), |
| text_tokens_lens.to(device), |
| audio_prompts, |
| enroll_x_lens=enroll_x_lens, |
| top_k=-100, |
| temperature=1, |
| prompt_language=lang_pr, |
| text_language=langs if accent == "no-accent" else lang, |
| ) |
| samples = audio_tokenizer.decode( |
| [(encoded_frames.transpose(2, 1), None)] |
| ) |
|
|
| |
| model.to('cpu') |
| torch.cuda.empty_cache() |
|
|
| message = f"text prompt: {text_pr}\nsythesized text: {text}" |
| return message, (24000, samples[0][0].cpu().numpy()) |
|
|
| @torch.no_grad() |
| def infer_from_prompt(text, language, accent, preset_prompt, prompt_file): |
| if len(text) > 150: |
| return "Rejected, Text too long (should be less than 150 characters)", None |
| clear_prompts() |
| model.to(device) |
| |
| if language == 'auto-detect': |
| lang_token = lang2token[langid.classify(text)[0]] |
| else: |
| lang_token = langdropdown2token[language] |
| lang = token2lang[lang_token] |
| text = lang_token + text + lang_token |
|
|
| |
| if prompt_file is not None: |
| prompt_data = np.load(prompt_file.name) |
| else: |
| prompt_data = np.load(os.path.join("./presets/", f"{preset_prompt}.npz")) |
| audio_prompts = prompt_data['audio_tokens'] |
| text_prompts = prompt_data['text_tokens'] |
| lang_pr = prompt_data['lang_code'] |
| lang_pr = code2lang[int(lang_pr)] |
|
|
| |
| audio_prompts = torch.tensor(audio_prompts).type(torch.int32).to(device) |
| text_prompts = torch.tensor(text_prompts).type(torch.int32) |
|
|
| enroll_x_lens = text_prompts.shape[-1] |
| logging.info(f"synthesize text: {text}") |
| phone_tokens, langs = text_tokenizer.tokenize(text=f"_{text}".strip()) |
| text_tokens, text_tokens_lens = text_collater( |
| [ |
| phone_tokens |
| ] |
| ) |
| text_tokens = torch.cat([text_prompts, text_tokens], dim=-1) |
| text_tokens_lens += enroll_x_lens |
| |
| lang = lang if accent == "no-accent" else token2lang[langdropdown2token[accent]] |
| encoded_frames = model.inference( |
| text_tokens.to(device), |
| text_tokens_lens.to(device), |
| audio_prompts, |
| enroll_x_lens=enroll_x_lens, |
| top_k=-100, |
| temperature=1, |
| prompt_language=lang_pr, |
| text_language=langs if accent == "no-accent" else lang, |
| ) |
| samples = audio_tokenizer.decode( |
| [(encoded_frames.transpose(2, 1), None)] |
| ) |
| model.to('cpu') |
| torch.cuda.empty_cache() |
|
|
| message = f"sythesized text: {text}" |
| return message, (24000, samples[0][0].cpu().numpy()) |
|
|
|
|
| from utils.sentence_cutter import split_text_into_sentences |
| @torch.no_grad() |
| def infer_long_text(text, preset_prompt, prompt=None, language='auto', accent='no-accent'): |
| """ |
| For long audio generation, two modes are available. |
| fixed-prompt: This mode will keep using the same prompt the user has provided, and generate audio sentence by sentence. |
| sliding-window: This mode will use the last sentence as the prompt for the next sentence, but has some concern on speaker maintenance. |
| """ |
| if len(text) > 1000: |
| return "Rejected, Text too long (should be less than 1000 characters)", None |
| mode = 'fixed-prompt' |
| global model, audio_tokenizer, text_tokenizer, text_collater |
| model.to(device) |
| if (prompt is None or prompt == "") and preset_prompt == "": |
| mode = 'sliding-window' |
| sentences = split_text_into_sentences(text) |
| |
| if language == "auto-detect": |
| language = langid.classify(text)[0] |
| else: |
| language = token2lang[langdropdown2token[language]] |
|
|
| |
| if prompt is not None and prompt != "": |
| |
| prompt_data = np.load(prompt.name) |
| audio_prompts = prompt_data['audio_tokens'] |
| text_prompts = prompt_data['text_tokens'] |
| lang_pr = prompt_data['lang_code'] |
| lang_pr = code2lang[int(lang_pr)] |
|
|
| |
| audio_prompts = torch.tensor(audio_prompts).type(torch.int32).to(device) |
| text_prompts = torch.tensor(text_prompts).type(torch.int32) |
| elif preset_prompt is not None and preset_prompt != "": |
| prompt_data = np.load(os.path.join("./presets/", f"{preset_prompt}.npz")) |
| audio_prompts = prompt_data['audio_tokens'] |
| text_prompts = prompt_data['text_tokens'] |
| lang_pr = prompt_data['lang_code'] |
| lang_pr = code2lang[int(lang_pr)] |
|
|
| |
| audio_prompts = torch.tensor(audio_prompts).type(torch.int32).to(device) |
| text_prompts = torch.tensor(text_prompts).type(torch.int32) |
| else: |
| audio_prompts = torch.zeros([1, 0, NUM_QUANTIZERS]).type(torch.int32).to(device) |
| text_prompts = torch.zeros([1, 0]).type(torch.int32) |
| lang_pr = language if language != 'mix' else 'en' |
| if mode == 'fixed-prompt': |
| complete_tokens = torch.zeros([1, NUM_QUANTIZERS, 0]).type(torch.LongTensor).to(device) |
| for text in sentences: |
| text = text.replace("\n", "").strip(" ") |
| if text == "": |
| continue |
| lang_token = lang2token[language] |
| lang = token2lang[lang_token] |
| text = lang_token + text + lang_token |
|
|
| enroll_x_lens = text_prompts.shape[-1] |
| logging.info(f"synthesize text: {text}") |
| phone_tokens, langs = text_tokenizer.tokenize(text=f"_{text}".strip()) |
| text_tokens, text_tokens_lens = text_collater( |
| [ |
| phone_tokens |
| ] |
| ) |
| text_tokens = torch.cat([text_prompts, text_tokens], dim=-1) |
| text_tokens_lens += enroll_x_lens |
| |
| lang = lang if accent == "no-accent" else token2lang[langdropdown2token[accent]] |
| encoded_frames = model.inference( |
| text_tokens.to(device), |
| text_tokens_lens.to(device), |
| audio_prompts, |
| enroll_x_lens=enroll_x_lens, |
| top_k=-100, |
| temperature=1, |
| prompt_language=lang_pr, |
| text_language=langs if accent == "no-accent" else lang, |
| ) |
| complete_tokens = torch.cat([complete_tokens, encoded_frames.transpose(2, 1)], dim=-1) |
| samples = audio_tokenizer.decode( |
| [(complete_tokens, None)] |
| ) |
| model.to('cpu') |
| message = f"Cut into {len(sentences)} sentences" |
| return message, (24000, samples[0][0].cpu().numpy()) |
| elif mode == "sliding-window": |
| complete_tokens = torch.zeros([1, NUM_QUANTIZERS, 0]).type(torch.LongTensor).to(device) |
| original_audio_prompts = audio_prompts |
| original_text_prompts = text_prompts |
| for text in sentences: |
| text = text.replace("\n", "").strip(" ") |
| if text == "": |
| continue |
| lang_token = lang2token[language] |
| lang = token2lang[lang_token] |
| text = lang_token + text + lang_token |
|
|
| enroll_x_lens = text_prompts.shape[-1] |
| logging.info(f"synthesize text: {text}") |
| phone_tokens, langs = text_tokenizer.tokenize(text=f"_{text}".strip()) |
| text_tokens, text_tokens_lens = text_collater( |
| [ |
| phone_tokens |
| ] |
| ) |
| text_tokens = torch.cat([text_prompts, text_tokens], dim=-1) |
| text_tokens_lens += enroll_x_lens |
| |
| lang = lang if accent == "no-accent" else token2lang[langdropdown2token[accent]] |
| encoded_frames = model.inference( |
| text_tokens.to(device), |
| text_tokens_lens.to(device), |
| audio_prompts, |
| enroll_x_lens=enroll_x_lens, |
| top_k=-100, |
| temperature=1, |
| prompt_language=lang_pr, |
| text_language=langs if accent == "no-accent" else lang, |
| ) |
| complete_tokens = torch.cat([complete_tokens, encoded_frames.transpose(2, 1)], dim=-1) |
| if torch.rand(1) < 1.0: |
| audio_prompts = encoded_frames[:, :, -NUM_QUANTIZERS:] |
| text_prompts = text_tokens[:, enroll_x_lens:] |
| else: |
| audio_prompts = original_audio_prompts |
| text_prompts = original_text_prompts |
| samples = audio_tokenizer.decode( |
| [(complete_tokens, None)] |
| ) |
| model.to('cpu') |
| message = f"Cut into {len(sentences)} sentences" |
| return message, (24000, samples[0][0].cpu().numpy()) |
| else: |
| raise ValueError(f"No such mode {mode}") |
|
|
|
|
| def main(): |
| app = gr.Blocks() |
| with app: |
| gr.HTML("<center>" |
| "<h1>🌊💕🎶 VALL-E X 3秒声音克隆,支持中日英三语</h1>" |
| "</center>") |
| gr.Markdown("## <center>⚡ 只需3秒语音,快速复刻您喜欢的声音;Powered by [VALL-E-X](https://github.com/Plachtaa/VALL-E-X)</center>") |
| gr.Markdown("### <center>更多精彩应用,尽在[滔滔AI](http://www.talktalkai.com);滔滔AI,为爱滔滔!💕</center>") |
|
|
| |
| with gr.Tab("🎶 - 提取音色"): |
| gr.Markdown("请上传一段3~10秒的语音,并点击”提取音色“") |
| with gr.Row(): |
| with gr.Column(): |
| textbox2 = gr.TextArea(label="Prompt name", |
| placeholder="Name your prompt here", |
| value="prompt_1", elem_id=f"prompt-name", visible=False) |
| |
| textbox_transcript2 = gr.TextArea(label="Transcript", |
| placeholder="Write transcript here. (leave empty to use whisper)", |
| value="", elem_id=f"prompt-name", visible=False) |
| upload_audio_prompt_2 = gr.Audio(label='请在此上传您的语音文件', source='upload', interactive=True) |
| record_audio_prompt_2 = gr.Audio(label='或者用麦克风上传您喜欢的声音', source='microphone', interactive=True) |
| with gr.Column(): |
| text_output_2 = gr.Textbox(label="音色提取进度") |
| prompt_output_2 = gr.File(interactive=False, visible=False) |
| btn_2 = gr.Button("提取音色", variant="primary") |
| btn_2.click(make_npz_prompt, |
| inputs=[textbox2, upload_audio_prompt_2, record_audio_prompt_2, textbox_transcript2], |
| outputs=[text_output_2, prompt_output_2]) |
|
|
| with gr.Tab("💕 - 声音克隆"): |
| gr.Markdown("现在开始奇妙的声音克隆之旅吧!输入您想合成的文本后,点击”声音克隆“即可快速复刻喜欢的声音!") |
| with gr.Row(): |
| with gr.Column(): |
| textbox_4 = gr.TextArea(label="请输入您想合成的文本", |
| placeholder="说点什么吧(中英皆可)...", |
| elem_id=f"tts-input") |
| |
| btn_4 = gr.Button("声音克隆", variant="primary") |
| btn_5 = gr.Button("去除噪音", variant="primary") |
| |
| language_dropdown_4 = gr.Dropdown(choices=['auto-detect', 'English', '中文', '日本語'], value='auto-detect', |
| label='language', visible=False) |
| accent_dropdown_4 = gr.Dropdown(choices=['no-accent', 'English', '中文', '日本語'], value='no-accent', |
| label='accent', visible=False) |
| preset_dropdown_4 = gr.Dropdown(choices=preset_list, value=None, label='更多语音包', visible=False) |
| prompt_file_4 = prompt_output_2 |
| with gr.Column(): |
| text_output_4 = gr.TextArea(label="Message", visible=False) |
| audio_output_4 = gr.Audio(label="为您合成的专属语音", elem_id="tts-audio", type="filepath", interactive=False) |
|
|
|
|
| radio = gr.Radio( |
| ["mic", "file"], value="file", label="How would you like to upload your audio?", visible=False |
| ) |
| mic_input = gr.Mic(label="Input", type="filepath", visible=False) |
| audio_file = audio_output_4 |
| inputs1 = [ |
| audio_file, |
| gr.Dropdown( |
| label="Add background noise", |
| choices=list(NOISES.keys()), |
| value="None", |
| visible=False, |
| ), |
| gr.Dropdown( |
| label="Noise Level (SNR)", |
| choices=["-5", "0", "10", "20"], |
| value="0", |
| visible=False, |
| ), |
| mic_input, |
| ] |
|
|
| outputs1 = [ |
| gr.Audio(type="filepath", label="Noisy audio", visible=False), |
| gr.Image(label="Noisy spectrogram", visible=False), |
| gr.Audio(type="filepath", label="降噪后的专属语音"), |
| gr.Image(label="Enhanced spectrogram", visible=False), |
| ] |
| |
| btn_4.click(infer_long_text, |
| inputs=[textbox_4, preset_dropdown_4, prompt_file_4, language_dropdown_4, accent_dropdown_4], |
| outputs=[text_output_4, audio_output_4]) |
| btn_5.click(fn=demo_fn, inputs=inputs1, outputs=outputs1) |
| |
| gr.Markdown("### <center>注意❗:请不要生成会对个人以及组织造成侵害的内容,此程序仅供科研、学习及个人娱乐使用。</center>") |
| gr.Markdown("<center>🧸 - 如何使用此程序:在“提取音色”模块上传一段语音并提取音色之后,就可以在“声音克隆”模块一键克隆您喜欢的声音啦!</center>") |
| gr.HTML(''' |
| <div class="footer"> |
| <p>🌊🏞️🎶 - 江水东流急,滔滔无尽声。 明·顾璘 |
| </p> |
| </div> |
| ''') |
| app.launch(show_error=True) |
|
|
| if __name__ == "__main__": |
| formatter = ( |
| "%(asctime)s %(levelname)s [%(filename)s:%(lineno)d] %(message)s" |
| ) |
| logging.basicConfig(format=formatter, level=logging.INFO) |
| main() |