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Create app.py

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  1. app.py +195 -0
app.py ADDED
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+ import gradio as gr
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+ import yt_dlp
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+ import ffmpeg
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+ import subprocess
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+ import numpy as np
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+ import librosa
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+ import soundfile
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+ from __future__ import unicode_literals
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+
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+ class Slicer:
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+ def __init__(self, sr, threshold=-40., min_length=5000, min_interval=300, hop_size=20, max_sil_kept=5000):
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+ if not min_length >= min_interval >= hop_size:
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+ raise ValueError('The following condition must be satisfied: min_length >= min_interval >= hop_size')
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+ if not max_sil_kept >= hop_size:
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+ raise ValueError('The following condition must be satisfied: max_sil_kept >= hop_size')
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+ min_interval = sr * min_interval / 1000
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+ self.threshold = 10 ** (threshold / 20.)
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+ self.hop_size = round(sr * hop_size / 1000)
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+ self.win_size = min(round(min_interval), 4 * self.hop_size)
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+ self.min_length = round(sr * min_length / 1000 / self.hop_size)
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+ self.min_interval = round(min_interval / self.hop_size)
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+ self.max_sil_kept = round(sr * max_sil_kept / 1000 / self.hop_size)
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+
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+ def _apply_slice(self, waveform, begin, end):
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+ if len(waveform.shape) > 1:
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+ return waveform[:, begin * self.hop_size: min(waveform.shape[1], end * self.hop_size)]
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+ else:
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+ return waveform[begin * self.hop_size: min(waveform.shape[0], end * self.hop_size)]
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+
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+ def slice(self, waveform):
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+ if len(waveform.shape) > 1:
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+ samples = waveform.mean(axis=0)
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+ else:
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+ samples = waveform
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+ if samples.shape[0] <= self.min_length:
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+ return [waveform]
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+ rms_list = get_rms(y=samples, frame_length=self.win_size, hop_length=self.hop_size).squeeze(0)
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+ sil_tags = []
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+ silence_start = None
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+ clip_start = 0
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+ for i, rms in enumerate(rms_list):
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+ if rms < self.threshold:
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+ if silence_start is None:
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+ silence_start = i
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+ continue
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+ if silence_start is None:
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+ continue
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+ is_leading_silence = silence_start == 0 and i > self.max_sil_kept
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+ need_slice_middle = i - silence_start >= self.min_interval and i - clip_start >= self.min_length
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+ if not is_leading_silence and not need_slice_middle:
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+ silence_start = None
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+ continue
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+ if i - silence_start <= self.max_sil_kept:
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+ pos = rms_list[silence_start: i + 1].argmin() + silence_start
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+ if silence_start == 0:
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+ sil_tags.append((0, pos))
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+ else:
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+ sil_tags.append((pos, pos))
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+ clip_start = pos
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+ elif i - silence_start <= self.max_sil_kept * 2:
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+ pos = rms_list[i - self.max_sil_kept: silence_start + self.max_sil_kept + 1].argmin()
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+ pos += i - self.max_sil_kept
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+ pos_l = rms_list[silence_start: silence_start + self.max_sil_kept + 1].argmin() + silence_start
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+ pos_r = rms_list[i - self.max_sil_kept: i + 1].argmin() + i - self.max_sil_kept
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+ if silence_start == 0:
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+ sil_tags.append((0, pos_r))
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+ clip_start = pos_r
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+ else:
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+ sil_tags.append((min(pos_l, pos), max(pos_r, pos)))
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+ clip_start = max(pos_r, pos)
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+ else:
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+ pos_l = rms_list[silence_start: silence_start + self.max_sil_kept + 1].argmin() + silence_start
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+ pos_r = rms_list[i - self.max_sil_kept: i + 1].argmin() + i - self.max_sil_kept
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+ if silence_start == 0:
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+ sil_tags.append((0, pos_r))
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+ else:
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+ sil_tags.append((pos_l, pos_r))
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+ clip_start = pos_r
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+ silence_start = None
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+ total_frames = rms_list.shape[0]
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+ if silence_start is not None and total_frames - silence_start >= self.min_interval:
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+ silence_end = min(total_frames, silence_start + self.max_sil_kept)
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+ pos = rms_list[silence_start: silence_end + 1].argmin() + silence_start
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+ sil_tags.append((pos, total_frames + 1))
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+ if len(sil_tags) == 0:
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+ return [waveform]
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+ else:
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+ chunks = []
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+ if sil_tags[0][0] > 0:
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+ chunks.append(self._apply_slice(waveform, 0, sil_tags[0][0]))
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+ for i in range(len(sil_tags) - 1):
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+ chunks.append(self._apply_slice(waveform, sil_tags[i][1], sil_tags[i + 1][0]))
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+ if sil_tags[-1][1] < total_frames:
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+ chunks.append(self._apply_slice(waveform, sil_tags[-1][1], total_frames))
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+ return chunks
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+
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+ def get_rms(y, frame_length=2048, hop_length=512, pad_mode="constant"):
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+ padding = (int(frame_length // 2), int(frame_length // 2))
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+ y = np.pad(y, padding, mode=pad_mode)
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+ axis = -1
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+ out_strides = y.strides + tuple([y.strides[axis]])
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+ x_shape_trimmed = list(y.shape)
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+ x_shape_trimmed[axis] -= frame_length - 1
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+ out_shape = tuple(x_shape_trimmed) + tuple([frame_length])
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+ xw = np.lib.stride_tricks.as_strided(y, shape=out_shape, strides=out_strides)
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+ if axis < 0:
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+ target_axis = axis - 1
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+ else:
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+ target_axis = axis + 1
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+ xw = np.moveaxis(xw, -1, target_axis)
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+ slices = [slice(None)] * xw.ndim
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+ slices[axis] = slice(0, None, hop_length)
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+ x = xw[tuple(slices)]
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+ power = np.mean(np.abs(x) ** 2, axis=-2, keepdims=True)
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+ return np.sqrt(power)
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+
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+ def download_audio(dataset, url, drive_path, audio_name):
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+ if dataset == "Drive":
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+ return "Dataset is set to Drive. Skipping download."
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+ elif dataset == "Youtube":
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+ ydl_opts = {
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+ 'format': 'bestaudio/best',
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+ 'postprocessors': [{
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+ 'key': 'FFmpegExtractAudio',
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+ 'preferredcodec': 'wav',
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+ }],
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+ "outtmpl": f'/content/youtubeaudio/{audio_name}',
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+ }
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+ def download_from_url(url):
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+ with yt_dlp.YoutubeDL(ydl_opts) as ydl:
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+ ydl.download([url])
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+
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+ download_from_url(url)
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+ return f'Audio downloaded and saved as /content/youtubeaudio/{audio_name}.wav'
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+
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+ def separate_audio(dataset, audio_name, drive_path):
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+ if dataset == "Drive":
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+ audio_input = drive_path
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+ elif dataset == "Youtube":
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+ audio_input = f"/content/youtubeaudio/{audio_name}.wav"
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+ command = f"demucs --two-stems=vocals {audio_input}"
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+ result = subprocess.run(command.split(), stdout=subprocess.PIPE)
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+ subprocess.run(f"!mkdir -p /content/audio/{audio_name}", shell=True)
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+ subprocess.run(f"!cp -r /content/separated/htdemucs/{audio_name}/* /content/audio/{audio_name}", shell=True)
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+ if dataset == "Youtube":
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+ subprocess.run(f"!cp -r /content/youtubeaudio/{audio_name}.wav /content/audio/{audio_name}", shell=True)
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+ return result.stdout.decode()
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+
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+ def split_audio(audio_name):
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+ audio, sr = librosa.load(f'/content/separated/htdemucs/{audio_name}/vocals.wav', sr=None, mono=False)
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+ slicer = Slicer(
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+ sr=sr,
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+ threshold=-40,
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+ min_length=5000,
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+ min_interval=500,
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+ hop_size=10,
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+ max_sil_kept=500
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+ )
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+ chunks = slicer.slice(audio)
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+ subprocess.run(f"!mkdir -p /content/dataset/{audio_name}", shell=True)
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+ for i, chunk in enumerate(chunks):
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+ if len(chunk.shape) > 1:
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+ chunk = chunk.T
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+ soundfile.write(f'/content/dataset/{audio_name}/split_{i}.wav', chunk, sr)
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+ subprocess.run(f"!mkdir -p /content/dataset/{audio_name}", shell=True)
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+ subprocess.run(f"!cp -r /content/dataset/{audio_name}/* /content/dataset/{audio_name}", shell=True)
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+ return "Audio split into chunks and saved."
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+
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+ def process_audio(mode, dataset, url, drive_path, audio_name):
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+ download_result = download_audio(dataset, url, drive_path, audio_name)
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+ if "Skipping download" not in download_result:
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+ separate_result = separate_audio(dataset, audio_name, drive_path)
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+ if mode == "Splitting":
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+ split_result = split_audio(audio_name)
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+ return f"{download_result}\n{separate_result}\n{split_result}"
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+ else:
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+ return f"{download_result}\n{separate_result}\nMode is set to Separate. Skipping splitting."
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+ else:
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+ return download_result
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+
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+ demo = gr.Interface(
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+ fn=process_audio,
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+ inputs=[
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+ gr.Dropdown(choices=["Splitting", "Separate"], label="Mode"),
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+ gr.Dropdown(choices=["Youtube", "Drive"], label="Dataset"),
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+ gr.Textbox(label="URL"),
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+ gr.Textbox(label="Drive Path"),
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+ gr.Textbox(label="Audio Name"),
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+ ],
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+ outputs="text",
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+ title="Dataset Maker",
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+ description="Process audio from Youtube or Drive and split it based on silence detection."
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+ )
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+
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+ demo.launch()