import time import numpy as np import torch import torchaudio from scipy.ndimage import maximum_filter1d, uniform_filter1d def timeit(func): def run(*args, **kwargs): t = time.time() res = func(*args, **kwargs) print('executing \'%s\' costed %.3fs' % (func.__name__, time.time() - t)) return res return run # @timeit def _window_maximum(arr, win_sz): return maximum_filter1d(arr, size=win_sz)[win_sz // 2: win_sz // 2 + arr.shape[0] - win_sz + 1] # @timeit def _window_rms(arr, win_sz): filtered = np.sqrt(uniform_filter1d(np.power(arr, 2), win_sz) - np.power(uniform_filter1d(arr, win_sz), 2)) return filtered[win_sz // 2: win_sz // 2 + arr.shape[0] - win_sz + 1] def level2db(levels, eps=1e-12): return 20 * np.log10(np.clip(levels, a_min=eps, a_max=1)) def _apply_slice(audio, begin, end): if len(audio.shape) > 1: return audio[:, begin: end] else: return audio[begin: end] class Slicer: def __init__(self, sr: int, db_threshold: float = -40, min_length: int = 5000, win_l: int = 300, win_s: int = 20, max_silence_kept: int = 500): self.db_threshold = db_threshold self.min_samples = round(sr * min_length / 1000) self.win_ln = round(sr * win_l / 1000) self.win_sn = round(sr * win_s / 1000) self.max_silence = round(sr * max_silence_kept / 1000) if not self.min_samples >= self.win_ln >= self.win_sn: raise ValueError('The following condition must be satisfied: min_length >= win_l >= win_s') if not self.max_silence >= self.win_sn: raise ValueError('The following condition must be satisfied: max_silence_kept >= win_s') @timeit def slice(self, audio): samples = audio if samples.shape[0] <= self.min_samples: return {"0": {"slice": False, "split_time": f"0,{len(audio)}"}} # get absolute amplitudes abs_amp = np.abs(samples - np.mean(samples)) # calculate local maximum with large window win_max_db = level2db(_window_maximum(abs_amp, win_sz=self.win_ln)) sil_tags = [] left = right = 0 while right < win_max_db.shape[0]: if win_max_db[right] < self.db_threshold: right += 1 elif left == right: left += 1 right += 1 else: if left == 0: split_loc_l = left else: sil_left_n = min(self.max_silence, (right + self.win_ln - left) // 2) rms_db_left = level2db(_window_rms(samples[left: left + sil_left_n], win_sz=self.win_sn)) split_win_l = left + np.argmin(rms_db_left) split_loc_l = split_win_l + np.argmin(abs_amp[split_win_l: split_win_l + self.win_sn]) if len(sil_tags) != 0 and split_loc_l - sil_tags[-1][1] < self.min_samples and right < win_max_db.shape[ 0] - 1: right += 1 left = right continue if right == win_max_db.shape[0] - 1: split_loc_r = right + self.win_ln else: sil_right_n = min(self.max_silence, (right + self.win_ln - left) // 2) rms_db_right = level2db(_window_rms(samples[right + self.win_ln - sil_right_n: right + self.win_ln], win_sz=self.win_sn)) split_win_r = right + self.win_ln - sil_right_n + np.argmin(rms_db_right) split_loc_r = split_win_r + np.argmin(abs_amp[split_win_r: split_win_r + self.win_sn]) sil_tags.append((split_loc_l, split_loc_r)) right += 1 left = right if left != right: sil_left_n = min(self.max_silence, (right + self.win_ln - left) // 2) rms_db_left = level2db(_window_rms(samples[left: left + sil_left_n], win_sz=self.win_sn)) split_win_l = left + np.argmin(rms_db_left) split_loc_l = split_win_l + np.argmin(abs_amp[split_win_l: split_win_l + self.win_sn]) sil_tags.append((split_loc_l, samples.shape[0])) if len(sil_tags) == 0: return {"0": {"slice": False, "split_time": f"0,{len(audio)}"}} else: chunks = [] # 第一段静音并非从头开始,补上有声片段 if sil_tags[0][0]: chunks.append({"slice": False, "split_time": f"0,{sil_tags[0][0]}"}) for i in range(0, len(sil_tags)): # 标识有声片段(跳过第一段) if i: chunks.append({"slice": False, "split_time": f"{sil_tags[i - 1][1]},{sil_tags[i][0]}"}) # 标识所有静音片段 chunks.append({"slice": True, "split_time": f"{sil_tags[i][0]},{sil_tags[i][1]}"}) # 最后一段静音并非结尾,补上结尾片段 if sil_tags[-1][1] != len(audio): chunks.append({"slice": False, "split_time": f"{sil_tags[-1][1]},{len(audio)}"}) chunk_dict = {} for i in range(len(chunks)): chunk_dict[str(i)] = chunks[i] return chunk_dict def cut(audio_path, db_thresh=-30, min_len=5000, win_l=300, win_s=20, max_sil_kept=500): audio, sr = torchaudio.load(audio_path) if len(audio.shape) == 2 and audio.shape[1] >= 2: audio = torch.mean(audio, dim=0).unsqueeze(0) audio = audio.cpu().numpy()[0] slicer = Slicer( sr=sr, db_threshold=db_thresh, min_length=min_len, win_l=win_l, win_s=win_s, max_silence_kept=max_sil_kept ) chunks = slicer.slice(audio) return chunks def chunks2audio(audio_path, chunks): chunks = dict(chunks) audio, sr = torchaudio.load(audio_path) if len(audio.shape) == 2 and audio.shape[1] >= 2: audio = torch.mean(audio, dim=0).unsqueeze(0) audio = audio.cpu().numpy()[0] result = [] for k, v in chunks.items(): tag = v["split_time"].split(",") result.append((v["slice"], audio[int(tag[0]):int(tag[1])])) return result, sr