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import io |
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import os |
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import gradio as gr |
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import gradio.processing_utils as gr_pu |
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import librosa |
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import numpy as np |
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import soundfile |
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from inference.infer_tool import Svc |
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import logging |
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import traceback |
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import subprocess |
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import edge_tts |
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import asyncio |
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from scipy.io import wavfile |
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import librosa |
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import torch |
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import time |
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logging.getLogger('numba').setLevel(logging.WARNING) |
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logging.getLogger('markdown_it').setLevel(logging.WARNING) |
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logging.getLogger('urllib3').setLevel(logging.WARNING) |
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logging.getLogger('matplotlib').setLevel(logging.WARNING) |
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logging.getLogger('multipart').setLevel(logging.WARNING) |
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model = None |
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spk = None |
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debug=False |
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cuda = [] |
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if torch.cuda.is_available(): |
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for i in range(torch.cuda.device_count()): |
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cuda.append("cuda:{}".format(i)) |
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def vc_fn(sid, input_audio, vc_transform, auto_f0,cluster_ratio, slice_db, noise_scale,pad_seconds,cl_num,lg_num,lgr_num,F0_mean_pooling,enhancer_adaptive_key): |
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global model |
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try: |
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if input_audio is None: |
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return "You need to upload an audio", None |
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if model is None: |
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return "You need to upload an model", None |
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sampling_rate, audio = input_audio |
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audio = (audio / np.iinfo(audio.dtype).max).astype(np.float32) |
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if len(audio.shape) > 1: |
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audio = librosa.to_mono(audio.transpose(1, 0)) |
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temp_path = "temp.wav" |
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soundfile.write(temp_path, audio, sampling_rate, format="wav") |
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_audio = model.slice_inference(temp_path, sid, vc_transform, slice_db, cluster_ratio, auto_f0, noise_scale,pad_seconds,cl_num,lg_num,lgr_num,F0_mean_pooling,enhancer_adaptive_key) |
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model.clear_empty() |
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os.remove(temp_path) |
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try: |
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timestamp = str(int(time.time())) |
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output_file = os.path.join("./results", sid + "_" + timestamp + ".wav") |
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soundfile.write(output_file, _audio, model.target_sample, format="wav") |
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return "Success", (model.target_sample, _audio) |
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except Exception as e: |
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if debug:traceback.print_exc() |
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return "自动保存失败,请手动保存,音乐输出见下", (model.target_sample, _audio) |
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except Exception as e: |
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if debug:traceback.print_exc() |
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return "异常信息:"+str(e)+"\n请排障后重试",None |
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def tts_func(_text,_rate): |
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voice = "zh-CN-YunxiNeural" |
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output_file = _text[0:10]+".wav" |
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if _rate>=0: |
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ratestr="+{:.0%}".format(_rate) |
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elif _rate<0: |
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ratestr="{:.0%}".format(_rate) |
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p=subprocess.Popen(["edge-tts", |
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"--text",_text, |
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"--write-media",output_file, |
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"--voice",voice, |
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"--rate="+ratestr] |
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,shell=True, |
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stdout=subprocess.PIPE, |
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stdin=subprocess.PIPE) |
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p.wait() |
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return output_file |
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def vc_fn2(sid, input_audio, vc_transform, auto_f0,cluster_ratio, slice_db, noise_scale,pad_seconds,cl_num,lg_num,lgr_num,text2tts,tts_rate,F0_mean_pooling,enhancer_adaptive_key): |
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output_file=tts_func(text2tts,tts_rate) |
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sr2=44100 |
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wav, sr = librosa.load(output_file) |
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wav2 = librosa.resample(wav, orig_sr=sr, target_sr=sr2) |
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save_path2= text2tts[0:10]+"_44k"+".wav" |
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wavfile.write(save_path2,sr2, |
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(wav2 * np.iinfo(np.int16).max).astype(np.int16) |
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) |
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sample_rate, data=gr_pu.audio_from_file(save_path2) |
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vc_input=(sample_rate, data) |
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a,b=vc_fn(sid, vc_input, vc_transform,auto_f0,cluster_ratio, slice_db, noise_scale,pad_seconds,cl_num,lg_num,lgr_num,F0_mean_pooling,enhancer_adaptive_key) |
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os.remove(output_file) |
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os.remove(save_path2) |
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return a,b |
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app = gr.Blocks() |
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with app: |
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with gr.Tabs(): |
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with gr.TabItem("Sovits4.0"): |
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gr.Markdown(value=""" |
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Sovits4.0 WebUI |
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""") |
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gr.Markdown(value=""" |
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<font size=3>下面是模型文件选择:</font> |
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""") |
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model_path = gr.File(label="模型文件") |
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gr.Markdown(value=""" |
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<font size=3>下面是配置文件选择:</font> |
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""") |
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config_path = gr.File(label="配置文件") |
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gr.Markdown(value=""" |
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<font size=3>下面是聚类模型文件选择,没有可以不填:</font> |
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""") |
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cluster_model_path = gr.File(label="聚类模型文件") |
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device = gr.Dropdown(label="推理设备,默认为自动选择cpu和gpu",choices=["Auto",*cuda,"cpu"],value="Auto") |
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enhance = gr.Checkbox(label="是否使用NSF_HIFIGAN增强,该选项对部分训练集少的模型有一定的音质增强效果,但是对训练好的模型有反面效果,默认关闭", value=False) |
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gr.Markdown(value=""" |
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<font size=3>全部上传完毕后(全部文件模块显示download),点击模型解析进行解析:</font> |
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""") |
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model_analysis_button = gr.Button(value="模型解析") |
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model_unload_button = gr.Button(value="模型卸载") |
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sid = gr.Dropdown(label="音色(说话人)") |
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sid_output = gr.Textbox(label="Output Message") |
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text2tts=gr.Textbox(label="在此输入要转译的文字。注意,使用该功能建议打开F0预测,不然会很怪") |
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tts_rate = gr.Number(label="tts语速", value=0) |
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vc_input3 = gr.Audio(label="上传音频") |
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vc_transform = gr.Number(label="变调(整数,可以正负,半音数量,升高八度就是12)", value=0) |
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cluster_ratio = gr.Number(label="聚类模型混合比例,0-1之间,默认为0不启用聚类,能提升音色相似度,但会导致咬字下降(如果使用建议0.5左右)", value=0) |
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auto_f0 = gr.Checkbox(label="自动f0预测,配合聚类模型f0预测效果更好,会导致变调功能失效(仅限转换语音,歌声不要勾选此项会究极跑调)", value=False) |
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F0_mean_pooling = gr.Checkbox(label="是否对F0使用均值滤波器(池化),对部分哑音有改善。注意,启动该选项会导致推理速度下降,默认关闭", value=False) |
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slice_db = gr.Number(label="切片阈值", value=-40) |
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noise_scale = gr.Number(label="noise_scale 建议不要动,会影响音质,玄学参数", value=0.4) |
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cl_num = gr.Number(label="音频自动切片,0为不切片,单位为秒/s", value=0) |
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pad_seconds = gr.Number(label="推理音频pad秒数,由于未知原因开头结尾会有异响,pad一小段静音段后就不会出现", value=0.5) |
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lg_num = gr.Number(label="两端音频切片的交叉淡入长度,如果自动切片后出现人声不连贯可调整该数值,如果连贯建议采用默认值0,注意,该设置会影响推理速度,单位为秒/s", value=0) |
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lgr_num = gr.Number(label="自动音频切片后,需要舍弃每段切片的头尾。该参数设置交叉长度保留的比例,范围0-1,左开右闭", value=0.75,interactive=True) |
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enhancer_adaptive_key = gr.Number(label="使增强器适应更高的音域(单位为半音数)|默认为0", value=0,interactive=True) |
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vc_submit = gr.Button("音频直接转换", variant="primary") |
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vc_submit2 = gr.Button("文字转音频+转换", variant="primary") |
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vc_output1 = gr.Textbox(label="Output Message") |
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vc_output2 = gr.Audio(label="Output Audio") |
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def modelAnalysis(model_path,config_path,cluster_model_path,device,enhance): |
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global model |
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try: |
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model = Svc(model_path.name, config_path.name,device=device if device!="Auto" else None,cluster_model_path= cluster_model_path.name if cluster_model_path!=None else "",nsf_hifigan_enhance=enhance) |
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spks = list(model.spk2id.keys()) |
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device_name = torch.cuda.get_device_properties(model.dev).name if "cuda" in str(model.dev) else str(model.dev) |
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return sid.update(choices = spks,value=spks[0]),"ok,模型被加载到了设备{}之上".format(device_name) |
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except Exception as e: |
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if debug:traceback.print_exc() |
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return "","异常信息:"+str(e)+"\n请排障后重试" |
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def modelUnload(): |
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global model |
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if model is None: |
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return sid.update(choices = [],value=""),"没有模型需要卸载!" |
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else: |
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model = None |
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torch.cuda.empty_cache() |
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return sid.update(choices = [],value=""),"模型卸载完毕!" |
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vc_submit.click(vc_fn, [sid, vc_input3, vc_transform,auto_f0,cluster_ratio, slice_db, noise_scale,pad_seconds,cl_num,lg_num,lgr_num,F0_mean_pooling,enhancer_adaptive_key], [vc_output1, vc_output2]) |
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vc_submit2.click(vc_fn2, [sid, vc_input3, vc_transform,auto_f0,cluster_ratio, slice_db, noise_scale,pad_seconds,cl_num,lg_num,lgr_num,text2tts,tts_rate,F0_mean_pooling,enhancer_adaptive_key], [vc_output1, vc_output2]) |
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model_analysis_button.click(modelAnalysis,[model_path,config_path,cluster_model_path,device,enhance],[sid,sid_output]) |
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model_unload_button.click(modelUnload,[],[sid,sid_output]) |
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app.launch() |
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