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import PySimpleGUI as sg
import sounddevice as sd
import torch, librosa, threading, pickle
from enhancer import Enhancer
import numpy as np
from torch.nn import functional as F
from torchaudio.transforms import Resample
import torchaudio
from ddsp.vocoder import load_model, F0_Extractor, Volume_Extractor, Units_Encoder
from ddsp.core import upsample
import time
from gui_diff_locale import I18nAuto
from diffusion.infer_gt_mel import DiffGtMel


def phase_vocoder(a, b, fade_out, fade_in):
    fa = torch.fft.rfft(a)
    fb = torch.fft.rfft(b)
    absab = torch.abs(fa) + torch.abs(fb)
    n = a.shape[0]
    if n % 2 == 0:
        absab[1:-1] *= 2
    else:
        absab[1:] *= 2
    phia = torch.angle(fa)
    phib = torch.angle(fb)
    deltaphase = phib - phia
    deltaphase = deltaphase - 2 * np.pi * torch.floor(deltaphase / 2 / np.pi + 0.5)
    w = 2 * np.pi * torch.arange(n // 2 + 1).to(a) + deltaphase
    t = torch.arange(n).unsqueeze(-1).to(a) / n
    result = a * (fade_out ** 2) + b * (fade_in ** 2) + torch.sum(absab * torch.cos(w * t + phia),
                                                                  -1) * fade_out * fade_in / n
    return result


class SvcDDSP:
    def __init__(self) -> None:
        self.model = None
        self.units_encoder = None
        self.encoder_type = None
        self.encoder_ckpt = None
        self.enhancer = None
        self.enhancer_type = None
        self.enhancer_ckpt = None

    def update_model(self, model_path):
        self.device = 'cuda' if torch.cuda.is_available() else 'cpu'

        # load ddsp model
        if self.model is None or self.model_path != model_path:
            self.model, self.args = load_model(model_path, device=self.device)
            self.model_path = model_path

            # load units encoder
            if self.units_encoder is None or self.args.data.encoder != self.encoder_type or self.args.data.encoder_ckpt != self.encoder_ckpt:
                if self.args.data.encoder == 'cnhubertsoftfish':
                    cnhubertsoft_gate = self.args.data.cnhubertsoft_gate
                else:
                    cnhubertsoft_gate = 10
                self.units_encoder = Units_Encoder(
                    self.args.data.encoder,
                    self.args.data.encoder_ckpt,
                    self.args.data.encoder_sample_rate,
                    self.args.data.encoder_hop_size,
                    cnhubertsoft_gate=cnhubertsoft_gate,
                    device=self.device)
                self.encoder_type = self.args.data.encoder
                self.encoder_ckpt = self.args.data.encoder_ckpt

        # load enhancer
        if self.enhancer is None or self.args.enhancer.type != self.enhancer_type or self.args.enhancer.ckpt != self.enhancer_ckpt:
            self.enhancer = Enhancer(self.args.enhancer.type, self.args.enhancer.ckpt, device=self.device)
            self.enhancer_type = self.args.enhancer.type
            self.enhancer_ckpt = self.args.enhancer.ckpt

    def infer(self,
              audio,
              sample_rate,
              spk_id=1,
              threhold=-45,
              pitch_adjust=0,
              use_spk_mix=False,
              spk_mix_dict=None,
              use_enhancer=True,
              enhancer_adaptive_key='auto',
              pitch_extractor_type='crepe',
              f0_min=50,
              f0_max=1100,
              safe_prefix_pad_length=0,
              diff_model=None,
              diff_acc=None,
              diff_spk_id=None,
              diff_use=False,
              diff_use_dpm=False,
              k_step=None,
              diff_silence=False,
              audio_alignment=False
              ):
        print("Infering...")
        # load input
        # audio, sample_rate = librosa.load(input_wav, sr=None, mono=True)
        hop_size = self.args.data.block_size * sample_rate / self.args.data.sampling_rate
        if audio_alignment:
            audio_length = len(audio)
        # safe front silence
        if safe_prefix_pad_length > 0.03:
            silence_front = safe_prefix_pad_length - 0.03
        else:
            silence_front = 0
        audio_t = torch.from_numpy(audio).float().unsqueeze(0).to(self.device)

        # extract f0
        pitch_extractor = F0_Extractor(
            pitch_extractor_type,
            sample_rate,
            hop_size,
            float(f0_min),
            float(f0_max))
        f0 = pitch_extractor.extract(audio, uv_interp=True, device=self.device, silence_front=silence_front)
        f0 = torch.from_numpy(f0).float().to(self.device).unsqueeze(-1).unsqueeze(0)
        f0 = f0 * 2 ** (float(pitch_adjust) / 12)

        # extract volume
        volume_extractor = Volume_Extractor(hop_size)
        volume = volume_extractor.extract(audio)
        mask = (volume > 10 ** (float(threhold) / 20)).astype('float')
        mask = np.pad(mask, (4, 4), constant_values=(mask[0], mask[-1]))
        mask = np.array([np.max(mask[n: n + 9]) for n in range(len(mask) - 8)])
        mask = torch.from_numpy(mask).float().to(self.device).unsqueeze(-1).unsqueeze(0)
        mask = upsample(mask, self.args.data.block_size).squeeze(-1)
        volume = torch.from_numpy(volume).float().to(self.device).unsqueeze(-1).unsqueeze(0)

        # extract units
        units = self.units_encoder.encode(audio_t, sample_rate, hop_size)

        # spk_id or spk_mix_dict
        spk_id = torch.LongTensor(np.array([[spk_id]])).to(self.device)
        diff_spk_id = torch.LongTensor(np.array([[diff_spk_id]])).to(self.device)
        dictionary = None
        if use_spk_mix:
            dictionary = spk_mix_dict

            # forward and return the output
        with torch.no_grad():
            output, _, (s_h, s_n) = self.model(units, f0, volume, spk_id=spk_id, spk_mix_dict=dictionary)
            if diff_use and diff_model is not None:
                output = diff_model.infer(output, f0, units, volume, acc=diff_acc, spk_id=diff_spk_id,
                                          k_step=k_step, use_dpm=diff_use_dpm, silence_front=silence_front, use_silence=diff_silence,
                                          spk_mix_dict=dictionary)
            output *= mask
            if use_enhancer and not diff_use:
                output, output_sample_rate = self.enhancer.enhance(
                    output,
                    self.args.data.sampling_rate,
                    f0,
                    self.args.data.block_size,
                    adaptive_key=enhancer_adaptive_key,
                    silence_front=silence_front)
            else:
                output_sample_rate = self.args.data.sampling_rate

            output = output.squeeze()
            if audio_alignment:
                output[:audio_length]
            return output, output_sample_rate


class Config:
    def __init__(self) -> None:
        self.samplerate = 44100  # Hz
        self.block_time = 1.5  # s
        self.f_pitch_change: float = 0.0  # float(request_form.get("fPitchChange", 0))
        self.spk_id = 1  # 默认说话人。
        self.spk_mix_dict = None  # {1:0.5, 2:0.5} 表示1号说话人和2号说话人的音色按照0.5:0.5的比例混合
        self.use_vocoder_based_enhancer = True
        self.use_phase_vocoder = True
        self.checkpoint_path = ''
        self.threhold = -35
        self.buffer_num = 2
        self.crossfade_time = 0.03
        self.select_pitch_extractor = 'harvest'  # F0预测器["parselmouth", "dio", "harvest", "crepe"]
        self.use_spk_mix = False
        self.sounddevices = ['', '']
        self.diff_use = False
        self.diff_project = ''
        self.diff_acc = 10
        self.diff_spk_id = 0
        self.k_step = 100
        self.diff_use_dpm = False
        self.diff_silence = False

    def save(self, path):
        with open(path + '\\config.pkl', 'wb') as f:
            pickle.dump(vars(self), f)

    def load(self, path) -> bool:
        try:
            with open(path + '\\config.pkl', 'rb') as f:
                self.update(pickle.load(f))
            return True
        except:
            print('config.pkl does not exist')
            return False
    
    def update(self, data_dict):
        for key, value in data_dict.items():
            setattr(self, key, value)

class GUI:
    def __init__(self) -> None:
        self.config = Config()
        self.flag_vc: bool = False  # 变声线程flag
        self.block_frame = 0
        self.crossfade_frame = 0
        self.sola_search_frame = 0
        self.device = 'cuda' if torch.cuda.is_available() else 'cpu'
        self.svc_model: SvcDDSP = SvcDDSP()
        self.diff_model: DiffGtMel = DiffGtMel()
        self.fade_in_window: np.ndarray = None  # crossfade计算用numpy数组
        self.fade_out_window: np.ndarray = None  # crossfade计算用numpy数组
        self.input_wav: np.ndarray = None  # 输入音频规范化后的保存地址
        self.output_wav: np.ndarray = None  # 输出音频规范化后的保存地址
        self.sola_buffer: torch.Tensor = None  # 保存上一个output的crossfade
        self.f0_mode_list = ["parselmouth", "dio", "harvest", "crepe"]  # F0预测器
        self.f_safe_prefix_pad_length: float = 0.0
        self.resample_kernel = {}
        self.launcher()  # start

    def launcher(self):
        '''窗口加载'''
        input_devices, output_devices, _, _ = self.get_devices()
        sg.theme('DarkBlue12')  # 设置主题
        # 界面布局
        layout = [
            [sg.Frame(layout=[
                [sg.Input(key='sg_model', default_text='exp\\combsub-test\\model_300000.pt'),
                 sg.FileBrowse(i18n('选择模型文件'), key='choose_model')]
            ], title=i18n('模型:.pt格式(自动识别同目录下config.yaml)')),
                sg.Frame(layout=[
                    [sg.Text(i18n('选择配置文件所在目录')), sg.Input(key='config_file_dir', default_text='exp'),
                     sg.FolderBrowse(i18n('打开文件夹'), key='choose_config')],
                    [sg.Button(i18n('读取配置文件'), key='load_config'),
                     sg.Button(i18n('保存配置文件'), key='save_config')]
                ], title=i18n('快速配置文件'))
            ],
            [sg.Frame(layout=[
                [sg.Text(i18n("输入设备")),
                 sg.Combo(input_devices, key='sg_input_device', default_value=input_devices[sd.default.device[0]],
                          enable_events=True)],
                [sg.Text(i18n("输出设备")),
                 sg.Combo(output_devices, key='sg_output_device', default_value=output_devices[sd.default.device[1]],
                          enable_events=True)]
            ], title=i18n('音频设备'))
            ],
            [sg.Frame(layout=[
                [sg.Text(i18n("说话人id")), sg.Input(key='spk_id', default_text='1', size=8)],
                [sg.Text(i18n("响应阈值")),
                 sg.Slider(range=(-60, 0), orientation='h', key='threhold', resolution=1, default_value=-45,
                           enable_events=True)],
                [sg.Text(i18n("变调")),
                 sg.Slider(range=(-24, 24), orientation='h', key='pitch', resolution=1, default_value=0,
                           enable_events=True)],
                [sg.Text(i18n("采样率")), sg.Input(key='samplerate', default_text='44100', size=8)],
                [sg.Checkbox(text=i18n('启用捏音色功能'), default=False, key='spk_mix', enable_events=True),
                 sg.Button(i18n("设置混合音色"), key='set_spk_mix')]
            ], title=i18n('普通设置')),
                sg.Frame(layout=[
                    [sg.Text(i18n("音频切分大小")),
                     sg.Slider(range=(0.05, 3.0), orientation='h', key='block', resolution=0.01, default_value=0.5,
                               enable_events=True)],
                    [sg.Text(i18n("交叉淡化时长")),
                     sg.Slider(range=(0.01, 0.15), orientation='h', key='crossfade', resolution=0.01,
                               default_value=0.04, enable_events=True)],
                    [sg.Text(i18n("使用历史区块数量")),
                     sg.Slider(range=(1, 20), orientation='h', key='buffernum', resolution=1, default_value=3,
                               enable_events=True)],
                    [sg.Text(i18n("f0预测模式")),
                     sg.Combo(values=self.f0_mode_list, key='f0_mode', default_value=self.f0_mode_list[2],
                              enable_events=True)],
                    [sg.Checkbox(text=i18n('启用增强器'), default=True, key='use_enhancer', enable_events=True),
                     sg.Checkbox(text=i18n('启用相位声码器'), default=False, key='use_phase_vocoder',
                                 enable_events=True)]
                ], title=i18n('性能设置')),
                sg.Frame(layout=[
                    [sg.Text(i18n("扩散模型文件"))],
                    [sg.Input(key='diff_project', default_text='exp\\diffusion-test\\model_400000.pt'),
                     sg.FileBrowse(i18n('选择模型文件'), key='choose_model')],
                    [sg.Text(i18n("扩散说话人id")), sg.Input(key='diff_spk_id', default_text='1', size=18)],
                    [sg.Text(i18n("扩散深度")), sg.Input(key='k_step', default_text='120', size=18)],
                    [sg.Text(i18n("扩散加速")), sg.Input(key='diff_acc', default_text='20', size=18)],
                    [sg.Checkbox(text=i18n('启用DPMs(推荐)'), default=False, key='diff_use_dpm', enable_events=True)],
                    [sg.Checkbox(text=i18n('启用扩散'), default=True, key='diff_use', enable_events=True),
                     sg.Checkbox(text=i18n('不扩散安全区(加速但损失效果)'), default=False, key='diff_silence', enable_events=True)]
                ], title=i18n('扩散设置')),
            ],
            [sg.Button(i18n("开始音频转换"), key="start_vc"), sg.Button(i18n("停止音频转换"), key="stop_vc"),
             sg.Text(i18n('推理所用时间(ms):')), sg.Text('0', key='infer_time')]
        ]

        # 创造窗口
        self.window = sg.Window('DDSP - GUI', layout, finalize=True)
        self.window['spk_id'].bind('<Return>', '')
        self.window['samplerate'].bind('<Return>', '')
        self.window['diff_spk_id'].bind('<Return>', '')
        self.window['k_step'].bind('<Return>', '')
        self.window['diff_acc'].bind('<Return>', '')
        self.event_handler()

    def event_handler(self):
        '''事件处理'''
        while True:  # 事件处理循环
            event, values = self.window.read()
            if event == sg.WINDOW_CLOSED:  # 如果用户关闭窗口
                self.flag_vc = False
                exit()
            
            print('event: ' + event)
            
            if event == 'start_vc' and self.flag_vc == False:
                # set values 和界面布局layout顺序一一对应
                self.set_values(values)
                print('crossfade_time:' + str(self.config.crossfade_time))
                print("buffer_num:" + str(self.config.buffer_num))
                print("samplerate:" + str(self.config.samplerate))
                print('block_time:' + str(self.config.block_time))
                print("prefix_pad_length:" + str(self.f_safe_prefix_pad_length))
                print("mix_mode:" + str(self.config.spk_mix_dict))
                print("enhancer:" + str(self.config.use_vocoder_based_enhancer))
                print("diffusion:" + str(self.config.diff_use))
                print('using_cuda:' + str(torch.cuda.is_available()))
                self.start_vc()
            elif event == 'k_step':
                if 1 <= int(values['k_step']) <= 1000:
                    self.config.k_step = int(values['k_step'])
                else:
                    self.window['k_step'].update(1000)
            elif event == 'diff_acc':
                if self.config.k_step < int(values['diff_acc']):
                    self.config.diff_acc = int(self.config.k_step / 4)
                else:
                    self.config.diff_acc = int(values['diff_acc'])
            elif event == 'diff_spk_id':
                self.config.diff_spk_id = int(values['diff_spk_id'])
            elif event == 'diff_use':
                self.config.diff_use = values['diff_use']
                self.window['use_enhancer'].update(False)
                self.config.use_vocoder_based_enhancer=False
            elif event == 'diff_silence':
                self.config.diff_silence = values['diff_silence']
            elif event == 'diff_use_dpm':
                self.config.diff_use_dpm = values['diff_use_dpm']
            elif event == 'spk_id':
                self.config.spk_id = int(values['spk_id'])
            elif event == 'threhold':
                self.config.threhold = values['threhold']
            elif event == 'pitch':
                self.config.f_pitch_change = values['pitch']
            elif event == 'spk_mix':
                self.config.use_spk_mix = values['spk_mix']
            elif event == 'set_spk_mix':
                spk_mix = sg.popup_get_text(message='示例:1:0.3,2:0.5,3:0.2', title="设置混合音色,支持多人")
                if spk_mix != None:
                    self.config.spk_mix_dict = eval("{" + spk_mix.replace(',', ',').replace(':', ':') + "}")
            elif event == 'f0_mode':
                self.config.select_pitch_extractor = values['f0_mode']
            elif event == 'use_enhancer':
                self.config.use_vocoder_based_enhancer = values['use_enhancer']
                self.window['diff_use'].update(False)
                self.config.diff_use = False
            elif event == 'use_phase_vocoder':
                self.config.use_phase_vocoder = values['use_phase_vocoder']
            elif event == 'load_config' and self.flag_vc == False:
                if self.config.load(values['config_file_dir']):
                    self.update_values()
            elif event == 'save_config' and self.flag_vc == False:
                self.set_values(values)
                self.config.save(values['config_file_dir'])
            elif event != 'start_vc' and self.flag_vc == True:
                self.flag_vc = False

    def set_values(self, values):
        self.set_devices(values["sg_input_device"], values['sg_output_device'])
        self.config.sounddevices = [values["sg_input_device"], values['sg_output_device']]
        self.config.checkpoint_path = values['sg_model']
        self.config.spk_id = int(values['spk_id'])
        self.config.threhold = values['threhold']
        self.config.f_pitch_change = values['pitch']
        self.config.samplerate = int(values['samplerate'])
        self.config.block_time = float(values['block'])
        self.config.crossfade_time = float(values['crossfade'])
        self.config.buffer_num = int(values['buffernum'])
        self.config.select_pitch_extractor = values['f0_mode']
        self.config.use_vocoder_based_enhancer = values['use_enhancer']
        self.config.use_phase_vocoder = values['use_phase_vocoder']
        self.config.use_spk_mix = values['spk_mix']
        self.config.diff_use = values['diff_use']
        self.config.diff_silence = values['diff_silence']
        self.config.diff_use_dpm = values['diff_use_dpm']
        self.config.diff_project = values['diff_project']
        self.config.diff_acc = int(values['diff_acc'])
        self.config.diff_spk_id = int(values['diff_spk_id'])
        self.config.k_step = int(values['k_step'])
        self.block_frame = int(self.config.block_time * self.config.samplerate)
        self.crossfade_frame = int(self.config.crossfade_time * self.config.samplerate)
        self.sola_search_frame = int(0.01 * self.config.samplerate)
        self.last_delay_frame = int(0.02 * self.config.samplerate)
        self.input_frames = max(
            self.block_frame + self.crossfade_frame + self.sola_search_frame + 2 * self.last_delay_frame,
            (1 + self.config.buffer_num) * self.block_frame)
        self.f_safe_prefix_pad_length = self.config.block_time * self.config.buffer_num - self.config.crossfade_time - 0.01 - 0.02

    def update_values(self):
        self.window['sg_model'].update(self.config.checkpoint_path)
        self.window['sg_input_device'].update(self.config.sounddevices[0])
        self.window['sg_output_device'].update(self.config.sounddevices[1])
        self.window['spk_id'].update(self.config.spk_id)
        self.window['threhold'].update(self.config.threhold)
        self.window['pitch'].update(self.config.f_pitch_change)
        self.window['samplerate'].update(self.config.samplerate)
        self.window['spk_mix'].update(self.config.use_spk_mix)
        self.window['block'].update(self.config.block_time)
        self.window['crossfade'].update(self.config.crossfade_time)
        self.window['buffernum'].update(self.config.buffer_num)
        self.window['f0_mode'].update(self.config.select_pitch_extractor)
        self.window['use_enhancer'].update(self.config.use_vocoder_based_enhancer)
        self.window['diff_use'].update(self.config.diff_use)
        self.window['diff_silence'].update(self.config.diff_silence)
        self.window['diff_use_dpm'].update(self.config.diff_use_dpm)
        self.window['diff_project'].update(self.config.diff_project)
        self.window['diff_acc'].update(self.config.diff_acc)
        self.window['diff_spk_id'].update(self.config.diff_spk_id)
        self.window['k_step'].update(self.config.k_step)

    def start_vc(self):
        '''开始音频转换'''
        torch.cuda.empty_cache()
        self.flag_vc = True
        self.input_wav = np.zeros(self.input_frames, dtype='float32')
        self.sola_buffer = torch.zeros(self.crossfade_frame, device=self.device)
        self.fade_in_window = torch.sin(
            np.pi * torch.arange(0, 1, 1 / self.crossfade_frame, device=self.device) / 2) ** 2
        self.fade_out_window = 1 - self.fade_in_window
        self.svc_model.update_model(self.config.checkpoint_path)
        if self.config.diff_use:
            self.diff_model.flush_model(self.config.diff_project, ddsp_config=self.svc_model.args)
        thread_vc = threading.Thread(target=self.soundinput)
        thread_vc.start()

    def soundinput(self):
        '''
        接受音频输入
        '''
        with sd.Stream(callback=self.audio_callback, blocksize=self.block_frame, samplerate=self.config.samplerate,
                       dtype='float32'):
            while self.flag_vc:
                time.sleep(self.config.block_time)
                print('Audio block passed.')
        print('ENDing VC')

    def audio_callback(self, indata: np.ndarray, outdata: np.ndarray, frames, times, status):
        '''
        音频处理
        '''
        start_time = time.perf_counter()
        print("\nStarting callback")
        self.input_wav[:] = np.roll(self.input_wav, -self.block_frame)
        self.input_wav[-self.block_frame:] = librosa.to_mono(indata.T)

        # infer
        if self.config.diff_use:
            _diff_model = self.diff_model
        else:
            _diff_model = None
        _audio, _model_sr = self.svc_model.infer(
            self.input_wav,
            self.config.samplerate,
            spk_id=self.config.spk_id,
            threhold=self.config.threhold,
            pitch_adjust=self.config.f_pitch_change,
            use_spk_mix=self.config.use_spk_mix,
            spk_mix_dict=self.config.spk_mix_dict,
            use_enhancer=self.config.use_vocoder_based_enhancer,
            pitch_extractor_type=self.config.select_pitch_extractor,
            safe_prefix_pad_length=self.f_safe_prefix_pad_length,
            diff_model=_diff_model,
            diff_acc=self.config.diff_acc,
            diff_spk_id=self.config.diff_spk_id,
            diff_use=self.config.diff_use,
            diff_use_dpm=self.config.diff_use_dpm,
            k_step=self.config.k_step,
            diff_silence=self.config.diff_silence
        )

        # debug sola
        '''
        _audio, _model_sr = self.input_wav, self.config.samplerate
        rs = int(np.random.uniform(-200,200))
        print('debug_random_shift: ' + str(rs))
        _audio = np.roll(_audio, rs)
        _audio = torch.from_numpy(_audio).to(self.device)
        '''

        if _model_sr != self.config.samplerate:
            key_str = str(_model_sr) + '_' + str(self.config.samplerate)
            if key_str not in self.resample_kernel:
                self.resample_kernel[key_str] = Resample(_model_sr, self.config.samplerate,
                                                         lowpass_filter_width=128).to(self.device)
            _audio = self.resample_kernel[key_str](_audio)
        temp_wav = _audio[
                   - self.block_frame - self.crossfade_frame - self.sola_search_frame - self.last_delay_frame: - self.last_delay_frame]

        # sola shift
        conv_input = temp_wav[None, None, : self.crossfade_frame + self.sola_search_frame]
        cor_nom = F.conv1d(conv_input, self.sola_buffer[None, None, :])
        cor_den = torch.sqrt(
            F.conv1d(conv_input ** 2, torch.ones(1, 1, self.crossfade_frame, device=self.device)) + 1e-8)
        sola_shift = torch.argmax(cor_nom[0, 0] / cor_den[0, 0])
        temp_wav = temp_wav[sola_shift: sola_shift + self.block_frame + self.crossfade_frame]
        print('sola_shift: ' + str(int(sola_shift)))

        # phase vocoder
        if self.config.use_phase_vocoder:
            temp_wav[: self.crossfade_frame] = phase_vocoder(
                self.sola_buffer,
                temp_wav[: self.crossfade_frame],
                self.fade_out_window,
                self.fade_in_window)
        else:
            temp_wav[: self.crossfade_frame] *= self.fade_in_window
            temp_wav[: self.crossfade_frame] += self.sola_buffer * self.fade_out_window

        self.sola_buffer = temp_wav[- self.crossfade_frame:]

        outdata[:] = temp_wav[: - self.crossfade_frame, None].repeat(1, 2).cpu().numpy()
        end_time = time.perf_counter()
        print('infer_time: ' + str(end_time - start_time))
        self.window['infer_time'].update(int((end_time - start_time) * 1000))

    def get_devices(self, update: bool = True):
        '''获取设备列表'''
        if update:
            sd._terminate()
            sd._initialize()
        devices = sd.query_devices()
        hostapis = sd.query_hostapis()
        for hostapi in hostapis:
            for device_idx in hostapi["devices"]:
                devices[device_idx]["hostapi_name"] = hostapi["name"]
        input_devices = [
            f"{d['name']} ({d['hostapi_name']})"
            for d in devices
            if d["max_input_channels"] > 0
        ]
        output_devices = [
            f"{d['name']} ({d['hostapi_name']})"
            for d in devices
            if d["max_output_channels"] > 0
        ]
        input_devices_indices = [d["index"] for d in devices if d["max_input_channels"] > 0]
        output_devices_indices = [
            d["index"] for d in devices if d["max_output_channels"] > 0
        ]
        return input_devices, output_devices, input_devices_indices, output_devices_indices

    def set_devices(self, input_device, output_device):
        '''设置输出设备'''
        input_devices, output_devices, input_device_indices, output_device_indices = self.get_devices()
        sd.default.device[0] = input_device_indices[input_devices.index(input_device)]
        sd.default.device[1] = output_device_indices[output_devices.index(output_device)]
        print("input device:" + str(sd.default.device[0]) + ":" + str(input_device))
        print("output device:" + str(sd.default.device[1]) + ":" + str(output_device))


if __name__ == "__main__":
    i18n = I18nAuto()
    gui = GUI()