UVR5 / lib_v5 /spec_utils.py
Eddycrack864's picture
Upload 42 files
5565d9c verified
raw
history blame
No virus
23.9 kB
import librosa
import numpy as np
import soundfile as sf
import math
import random
import math
import platform
import traceback
from . import pyrb
#cur
OPERATING_SYSTEM = platform.system()
SYSTEM_ARCH = platform.platform()
SYSTEM_PROC = platform.processor()
ARM = 'arm'
if OPERATING_SYSTEM == 'Windows':
from pyrubberband import pyrb
else:
from . import pyrb
if OPERATING_SYSTEM == 'Darwin':
wav_resolution = "polyphase" if SYSTEM_PROC == ARM or ARM in SYSTEM_ARCH else "sinc_fastest"
else:
wav_resolution = "sinc_fastest"
MAX_SPEC = 'Max Spec'
MIN_SPEC = 'Min Spec'
AVERAGE = 'Average'
def crop_center(h1, h2):
h1_shape = h1.size()
h2_shape = h2.size()
if h1_shape[3] == h2_shape[3]:
return h1
elif h1_shape[3] < h2_shape[3]:
raise ValueError('h1_shape[3] must be greater than h2_shape[3]')
s_time = (h1_shape[3] - h2_shape[3]) // 2
e_time = s_time + h2_shape[3]
h1 = h1[:, :, :, s_time:e_time]
return h1
def preprocess(X_spec):
X_mag = np.abs(X_spec)
X_phase = np.angle(X_spec)
return X_mag, X_phase
def make_padding(width, cropsize, offset):
left = offset
roi_size = cropsize - offset * 2
if roi_size == 0:
roi_size = cropsize
right = roi_size - (width % roi_size) + left
return left, right, roi_size
def wave_to_spectrogram(wave, hop_length, n_fft, mid_side=False, mid_side_b2=False, reverse=False):
if reverse:
wave_left = np.flip(np.asfortranarray(wave[0]))
wave_right = np.flip(np.asfortranarray(wave[1]))
elif mid_side:
wave_left = np.asfortranarray(np.add(wave[0], wave[1]) / 2)
wave_right = np.asfortranarray(np.subtract(wave[0], wave[1]))
elif mid_side_b2:
wave_left = np.asfortranarray(np.add(wave[1], wave[0] * .5))
wave_right = np.asfortranarray(np.subtract(wave[0], wave[1] * .5))
else:
wave_left = np.asfortranarray(wave[0])
wave_right = np.asfortranarray(wave[1])
spec_left = librosa.stft(wave_left, n_fft, hop_length=hop_length)
spec_right = librosa.stft(wave_right, n_fft, hop_length=hop_length)
spec = np.asfortranarray([spec_left, spec_right])
return spec
def wave_to_spectrogram_mt(wave, hop_length, n_fft, mid_side=False, mid_side_b2=False, reverse=False):
import threading
if reverse:
wave_left = np.flip(np.asfortranarray(wave[0]))
wave_right = np.flip(np.asfortranarray(wave[1]))
elif mid_side:
wave_left = np.asfortranarray(np.add(wave[0], wave[1]) / 2)
wave_right = np.asfortranarray(np.subtract(wave[0], wave[1]))
elif mid_side_b2:
wave_left = np.asfortranarray(np.add(wave[1], wave[0] * .5))
wave_right = np.asfortranarray(np.subtract(wave[0], wave[1] * .5))
else:
wave_left = np.asfortranarray(wave[0])
wave_right = np.asfortranarray(wave[1])
def run_thread(**kwargs):
global spec_left
spec_left = librosa.stft(**kwargs)
thread = threading.Thread(target=run_thread, kwargs={'y': wave_left, 'n_fft': n_fft, 'hop_length': hop_length})
thread.start()
spec_right = librosa.stft(wave_right, n_fft, hop_length=hop_length)
thread.join()
spec = np.asfortranarray([spec_left, spec_right])
return spec
def normalize(wave, is_normalize=False):
"""Save output music files"""
maxv = np.abs(wave).max()
if maxv > 1.0:
print(f"\nNormalization Set {is_normalize}: Input above threshold for clipping. Max:{maxv}")
if is_normalize:
print(f"The result was normalized.")
wave /= maxv
else:
print(f"The result was not normalized.")
else:
print(f"\nNormalization Set {is_normalize}: Input not above threshold for clipping. Max:{maxv}")
return wave
def normalize_two_stem(wave, mix, is_normalize=False):
"""Save output music files"""
maxv = np.abs(wave).max()
max_mix = np.abs(mix).max()
if maxv > 1.0:
print(f"\nNormalization Set {is_normalize}: Primary source above threshold for clipping. Max:{maxv}")
print(f"\nNormalization Set {is_normalize}: Mixture above threshold for clipping. Max:{max_mix}")
if is_normalize:
print(f"The result was normalized.")
wave /= maxv
mix /= maxv
else:
print(f"The result was not normalized.")
else:
print(f"\nNormalization Set {is_normalize}: Input not above threshold for clipping. Max:{maxv}")
print(f"\nNormalization Set {is_normalize}: Primary source - Max:{np.abs(wave).max()}")
print(f"\nNormalization Set {is_normalize}: Mixture - Max:{np.abs(mix).max()}")
return wave, mix
def combine_spectrograms(specs, mp):
l = min([specs[i].shape[2] for i in specs])
spec_c = np.zeros(shape=(2, mp.param['bins'] + 1, l), dtype=np.complex64)
offset = 0
bands_n = len(mp.param['band'])
for d in range(1, bands_n + 1):
h = mp.param['band'][d]['crop_stop'] - mp.param['band'][d]['crop_start']
spec_c[:, offset:offset+h, :l] = specs[d][:, mp.param['band'][d]['crop_start']:mp.param['band'][d]['crop_stop'], :l]
offset += h
if offset > mp.param['bins']:
raise ValueError('Too much bins')
# lowpass fiter
if mp.param['pre_filter_start'] > 0: # and mp.param['band'][bands_n]['res_type'] in ['scipy', 'polyphase']:
if bands_n == 1:
spec_c = fft_lp_filter(spec_c, mp.param['pre_filter_start'], mp.param['pre_filter_stop'])
else:
gp = 1
for b in range(mp.param['pre_filter_start'] + 1, mp.param['pre_filter_stop']):
g = math.pow(10, -(b - mp.param['pre_filter_start']) * (3.5 - gp) / 20.0)
gp = g
spec_c[:, b, :] *= g
return np.asfortranarray(spec_c)
def spectrogram_to_image(spec, mode='magnitude'):
if mode == 'magnitude':
if np.iscomplexobj(spec):
y = np.abs(spec)
else:
y = spec
y = np.log10(y ** 2 + 1e-8)
elif mode == 'phase':
if np.iscomplexobj(spec):
y = np.angle(spec)
else:
y = spec
y -= y.min()
y *= 255 / y.max()
img = np.uint8(y)
if y.ndim == 3:
img = img.transpose(1, 2, 0)
img = np.concatenate([
np.max(img, axis=2, keepdims=True), img
], axis=2)
return img
def reduce_vocal_aggressively(X, y, softmask):
v = X - y
y_mag_tmp = np.abs(y)
v_mag_tmp = np.abs(v)
v_mask = v_mag_tmp > y_mag_tmp
y_mag = np.clip(y_mag_tmp - v_mag_tmp * v_mask * softmask, 0, np.inf)
return y_mag * np.exp(1.j * np.angle(y))
def merge_artifacts(y_mask, thres=0.01, min_range=64, fade_size=32):
mask = y_mask
try:
if min_range < fade_size * 2:
raise ValueError('min_range must be >= fade_size * 2')
idx = np.where(y_mask.min(axis=(0, 1)) > thres)[0]
start_idx = np.insert(idx[np.where(np.diff(idx) != 1)[0] + 1], 0, idx[0])
end_idx = np.append(idx[np.where(np.diff(idx) != 1)[0]], idx[-1])
artifact_idx = np.where(end_idx - start_idx > min_range)[0]
weight = np.zeros_like(y_mask)
if len(artifact_idx) > 0:
start_idx = start_idx[artifact_idx]
end_idx = end_idx[artifact_idx]
old_e = None
for s, e in zip(start_idx, end_idx):
if old_e is not None and s - old_e < fade_size:
s = old_e - fade_size * 2
if s != 0:
weight[:, :, s:s + fade_size] = np.linspace(0, 1, fade_size)
else:
s -= fade_size
if e != y_mask.shape[2]:
weight[:, :, e - fade_size:e] = np.linspace(1, 0, fade_size)
else:
e += fade_size
weight[:, :, s + fade_size:e - fade_size] = 1
old_e = e
v_mask = 1 - y_mask
y_mask += weight * v_mask
mask = y_mask
except Exception as e:
error_name = f'{type(e).__name__}'
traceback_text = ''.join(traceback.format_tb(e.__traceback__))
message = f'{error_name}: "{e}"\n{traceback_text}"'
print('Post Process Failed: ', message)
return mask
def align_wave_head_and_tail(a, b):
l = min([a[0].size, b[0].size])
return a[:l,:l], b[:l,:l]
def spectrogram_to_wave(spec, hop_length, mid_side, mid_side_b2, reverse, clamp=False):
spec_left = np.asfortranarray(spec[0])
spec_right = np.asfortranarray(spec[1])
wave_left = librosa.istft(spec_left, hop_length=hop_length)
wave_right = librosa.istft(spec_right, hop_length=hop_length)
if reverse:
return np.asfortranarray([np.flip(wave_left), np.flip(wave_right)])
elif mid_side:
return np.asfortranarray([np.add(wave_left, wave_right / 2), np.subtract(wave_left, wave_right / 2)])
elif mid_side_b2:
return np.asfortranarray([np.add(wave_right / 1.25, .4 * wave_left), np.subtract(wave_left / 1.25, .4 * wave_right)])
else:
return np.asfortranarray([wave_left, wave_right])
def spectrogram_to_wave_mt(spec, hop_length, mid_side, reverse, mid_side_b2):
import threading
spec_left = np.asfortranarray(spec[0])
spec_right = np.asfortranarray(spec[1])
def run_thread(**kwargs):
global wave_left
wave_left = librosa.istft(**kwargs)
thread = threading.Thread(target=run_thread, kwargs={'stft_matrix': spec_left, 'hop_length': hop_length})
thread.start()
wave_right = librosa.istft(spec_right, hop_length=hop_length)
thread.join()
if reverse:
return np.asfortranarray([np.flip(wave_left), np.flip(wave_right)])
elif mid_side:
return np.asfortranarray([np.add(wave_left, wave_right / 2), np.subtract(wave_left, wave_right / 2)])
elif mid_side_b2:
return np.asfortranarray([np.add(wave_right / 1.25, .4 * wave_left), np.subtract(wave_left / 1.25, .4 * wave_right)])
else:
return np.asfortranarray([wave_left, wave_right])
def cmb_spectrogram_to_wave(spec_m, mp, extra_bins_h=None, extra_bins=None):
bands_n = len(mp.param['band'])
offset = 0
for d in range(1, bands_n + 1):
bp = mp.param['band'][d]
spec_s = np.ndarray(shape=(2, bp['n_fft'] // 2 + 1, spec_m.shape[2]), dtype=complex)
h = bp['crop_stop'] - bp['crop_start']
spec_s[:, bp['crop_start']:bp['crop_stop'], :] = spec_m[:, offset:offset+h, :]
offset += h
if d == bands_n: # higher
if extra_bins_h: # if --high_end_process bypass
max_bin = bp['n_fft'] // 2
spec_s[:, max_bin-extra_bins_h:max_bin, :] = extra_bins[:, :extra_bins_h, :]
if bp['hpf_start'] > 0:
spec_s = fft_hp_filter(spec_s, bp['hpf_start'], bp['hpf_stop'] - 1)
if bands_n == 1:
wave = spectrogram_to_wave(spec_s, bp['hl'], mp.param['mid_side'], mp.param['mid_side_b2'], mp.param['reverse'])
else:
wave = np.add(wave, spectrogram_to_wave(spec_s, bp['hl'], mp.param['mid_side'], mp.param['mid_side_b2'], mp.param['reverse']))
else:
sr = mp.param['band'][d+1]['sr']
if d == 1: # lower
spec_s = fft_lp_filter(spec_s, bp['lpf_start'], bp['lpf_stop'])
wave = librosa.resample(spectrogram_to_wave(spec_s, bp['hl'], mp.param['mid_side'], mp.param['mid_side_b2'], mp.param['reverse']), bp['sr'], sr, res_type=wav_resolution)
else: # mid
spec_s = fft_hp_filter(spec_s, bp['hpf_start'], bp['hpf_stop'] - 1)
spec_s = fft_lp_filter(spec_s, bp['lpf_start'], bp['lpf_stop'])
wave2 = np.add(wave, spectrogram_to_wave(spec_s, bp['hl'], mp.param['mid_side'], mp.param['mid_side_b2'], mp.param['reverse']))
wave = librosa.resample(wave2, bp['sr'], sr, res_type=wav_resolution)
return wave
def fft_lp_filter(spec, bin_start, bin_stop):
g = 1.0
for b in range(bin_start, bin_stop):
g -= 1 / (bin_stop - bin_start)
spec[:, b, :] = g * spec[:, b, :]
spec[:, bin_stop:, :] *= 0
return spec
def fft_hp_filter(spec, bin_start, bin_stop):
g = 1.0
for b in range(bin_start, bin_stop, -1):
g -= 1 / (bin_start - bin_stop)
spec[:, b, :] = g * spec[:, b, :]
spec[:, 0:bin_stop+1, :] *= 0
return spec
def mirroring(a, spec_m, input_high_end, mp):
if 'mirroring' == a:
mirror = np.flip(np.abs(spec_m[:, mp.param['pre_filter_start']-10-input_high_end.shape[1]:mp.param['pre_filter_start']-10, :]), 1)
mirror = mirror * np.exp(1.j * np.angle(input_high_end))
return np.where(np.abs(input_high_end) <= np.abs(mirror), input_high_end, mirror)
if 'mirroring2' == a:
mirror = np.flip(np.abs(spec_m[:, mp.param['pre_filter_start']-10-input_high_end.shape[1]:mp.param['pre_filter_start']-10, :]), 1)
mi = np.multiply(mirror, input_high_end * 1.7)
return np.where(np.abs(input_high_end) <= np.abs(mi), input_high_end, mi)
def adjust_aggr(mask, is_non_accom_stem, aggressiveness):
aggr = aggressiveness['value']
if aggr != 0:
if is_non_accom_stem:
aggr = 1 - aggr
aggr = [aggr, aggr]
if aggressiveness['aggr_correction'] is not None:
aggr[0] += aggressiveness['aggr_correction']['left']
aggr[1] += aggressiveness['aggr_correction']['right']
for ch in range(2):
mask[ch, :aggressiveness['split_bin']] = np.power(mask[ch, :aggressiveness['split_bin']], 1 + aggr[ch] / 3)
mask[ch, aggressiveness['split_bin']:] = np.power(mask[ch, aggressiveness['split_bin']:], 1 + aggr[ch])
# if is_non_accom_stem:
# mask = (1.0 - mask)
return mask
def stft(wave, nfft, hl):
wave_left = np.asfortranarray(wave[0])
wave_right = np.asfortranarray(wave[1])
spec_left = librosa.stft(wave_left, nfft, hop_length=hl)
spec_right = librosa.stft(wave_right, nfft, hop_length=hl)
spec = np.asfortranarray([spec_left, spec_right])
return spec
def istft(spec, hl):
spec_left = np.asfortranarray(spec[0])
spec_right = np.asfortranarray(spec[1])
wave_left = librosa.istft(spec_left, hop_length=hl)
wave_right = librosa.istft(spec_right, hop_length=hl)
wave = np.asfortranarray([wave_left, wave_right])
return wave
def spec_effects(wave, algorithm='Default', value=None):
spec = [stft(wave[0],2048,1024), stft(wave[1],2048,1024)]
if algorithm == 'Min_Mag':
v_spec_m = np.where(np.abs(spec[1]) <= np.abs(spec[0]), spec[1], spec[0])
wave = istft(v_spec_m,1024)
elif algorithm == 'Max_Mag':
v_spec_m = np.where(np.abs(spec[1]) >= np.abs(spec[0]), spec[1], spec[0])
wave = istft(v_spec_m,1024)
elif algorithm == 'Default':
wave = (wave[1] * value) + (wave[0] * (1-value))
elif algorithm == 'Invert_p':
X_mag = np.abs(spec[0])
y_mag = np.abs(spec[1])
max_mag = np.where(X_mag >= y_mag, X_mag, y_mag)
v_spec = spec[1] - max_mag * np.exp(1.j * np.angle(spec[0]))
wave = istft(v_spec,1024)
return wave
def spectrogram_to_wave_no_mp(spec, n_fft=2048, hop_length=1024):
wave = librosa.istft(spec, n_fft=n_fft, hop_length=hop_length)
if wave.ndim == 1:
wave = np.asfortranarray([wave,wave])
return wave
def wave_to_spectrogram_no_mp(wave):
spec = librosa.stft(wave, n_fft=2048, hop_length=1024)
if spec.ndim == 1:
spec = np.asfortranarray([spec,spec])
return spec
def invert_audio(specs, invert_p=True):
ln = min([specs[0].shape[2], specs[1].shape[2]])
specs[0] = specs[0][:,:,:ln]
specs[1] = specs[1][:,:,:ln]
if invert_p:
X_mag = np.abs(specs[0])
y_mag = np.abs(specs[1])
max_mag = np.where(X_mag >= y_mag, X_mag, y_mag)
v_spec = specs[1] - max_mag * np.exp(1.j * np.angle(specs[0]))
else:
specs[1] = reduce_vocal_aggressively(specs[0], specs[1], 0.2)
v_spec = specs[0] - specs[1]
return v_spec
def invert_stem(mixture, stem):
mixture = wave_to_spectrogram_no_mp(mixture)
stem = wave_to_spectrogram_no_mp(stem)
output = spectrogram_to_wave_no_mp(invert_audio([mixture, stem]))
return -output.T
def ensembling(a, specs):
for i in range(1, len(specs)):
if i == 1:
spec = specs[0]
ln = min([spec.shape[2], specs[i].shape[2]])
spec = spec[:,:,:ln]
specs[i] = specs[i][:,:,:ln]
if MIN_SPEC == a:
spec = np.where(np.abs(specs[i]) <= np.abs(spec), specs[i], spec)
if MAX_SPEC == a:
spec = np.where(np.abs(specs[i]) >= np.abs(spec), specs[i], spec)
if AVERAGE == a:
spec = np.where(np.abs(specs[i]) == np.abs(spec), specs[i], spec)
return spec
def ensemble_inputs(audio_input, algorithm, is_normalization, wav_type_set, save_path):
wavs_ = []
if algorithm == AVERAGE:
output = average_audio(audio_input)
samplerate = 44100
else:
specs = []
for i in range(len(audio_input)):
wave, samplerate = librosa.load(audio_input[i], mono=False, sr=44100)
wavs_.append(wave)
spec = wave_to_spectrogram_no_mp(wave)
specs.append(spec)
wave_shapes = [w.shape[1] for w in wavs_]
target_shape = wavs_[wave_shapes.index(max(wave_shapes))]
output = spectrogram_to_wave_no_mp(ensembling(algorithm, specs))
output = to_shape(output, target_shape.shape)
sf.write(save_path, normalize(output.T, is_normalization), samplerate, subtype=wav_type_set)
def to_shape(x, target_shape):
padding_list = []
for x_dim, target_dim in zip(x.shape, target_shape):
pad_value = (target_dim - x_dim)
pad_tuple = ((0, pad_value))
padding_list.append(pad_tuple)
return np.pad(x, tuple(padding_list), mode='constant')
def to_shape_minimize(x: np.ndarray, target_shape):
padding_list = []
for x_dim, target_dim in zip(x.shape, target_shape):
pad_value = (target_dim - x_dim)
pad_tuple = ((0, pad_value))
padding_list.append(pad_tuple)
return np.pad(x, tuple(padding_list), mode='constant')
def augment_audio(export_path, audio_file, rate, is_normalization, wav_type_set, save_format=None, is_pitch=False):
wav, sr = librosa.load(audio_file, sr=44100, mono=False)
if wav.ndim == 1:
wav = np.asfortranarray([wav,wav])
if is_pitch:
wav_1 = pyrb.pitch_shift(wav[0], sr, rate, rbargs=None)
wav_2 = pyrb.pitch_shift(wav[1], sr, rate, rbargs=None)
else:
wav_1 = pyrb.time_stretch(wav[0], sr, rate, rbargs=None)
wav_2 = pyrb.time_stretch(wav[1], sr, rate, rbargs=None)
if wav_1.shape > wav_2.shape:
wav_2 = to_shape(wav_2, wav_1.shape)
if wav_1.shape < wav_2.shape:
wav_1 = to_shape(wav_1, wav_2.shape)
wav_mix = np.asfortranarray([wav_1, wav_2])
sf.write(export_path, normalize(wav_mix.T, is_normalization), sr, subtype=wav_type_set)
save_format(export_path)
def average_audio(audio):
waves = []
wave_shapes = []
final_waves = []
for i in range(len(audio)):
wave = librosa.load(audio[i], sr=44100, mono=False)
waves.append(wave[0])
wave_shapes.append(wave[0].shape[1])
wave_shapes_index = wave_shapes.index(max(wave_shapes))
target_shape = waves[wave_shapes_index]
waves.pop(wave_shapes_index)
final_waves.append(target_shape)
for n_array in waves:
wav_target = to_shape(n_array, target_shape.shape)
final_waves.append(wav_target)
waves = sum(final_waves)
waves = waves/len(audio)
return waves
def average_dual_sources(wav_1, wav_2, value):
if wav_1.shape > wav_2.shape:
wav_2 = to_shape(wav_2, wav_1.shape)
if wav_1.shape < wav_2.shape:
wav_1 = to_shape(wav_1, wav_2.shape)
wave = (wav_1 * value) + (wav_2 * (1-value))
return wave
def reshape_sources(wav_1: np.ndarray, wav_2: np.ndarray):
if wav_1.shape > wav_2.shape:
wav_2 = to_shape(wav_2, wav_1.shape)
if wav_1.shape < wav_2.shape:
ln = min([wav_1.shape[1], wav_2.shape[1]])
wav_2 = wav_2[:,:ln]
ln = min([wav_1.shape[1], wav_2.shape[1]])
wav_1 = wav_1[:,:ln]
wav_2 = wav_2[:,:ln]
return wav_2
def align_audio(file1, file2, file2_aligned, file_subtracted, wav_type_set, is_normalization, command_Text, progress_bar_main_var, save_format):
def get_diff(a, b):
corr = np.correlate(a, b, "full")
diff = corr.argmax() - (b.shape[0] - 1)
return diff
progress_bar_main_var.set(10)
# read tracks
wav1, sr1 = librosa.load(file1, sr=44100, mono=False)
wav2, sr2 = librosa.load(file2, sr=44100, mono=False)
wav1 = wav1.transpose()
wav2 = wav2.transpose()
command_Text(f"Audio file shapes: {wav1.shape} / {wav2.shape}\n")
wav2_org = wav2.copy()
progress_bar_main_var.set(20)
command_Text("Processing files... \n")
# pick random position and get diff
counts = {} # counting up for each diff value
progress = 20
check_range = 64
base = (64 / check_range)
for i in range(check_range):
index = int(random.uniform(44100 * 2, min(wav1.shape[0], wav2.shape[0]) - 44100 * 2))
shift = int(random.uniform(-22050,+22050))
samp1 = wav1[index :index +44100, 0] # currently use left channel
samp2 = wav2[index+shift:index+shift+44100, 0]
progress += 1 * base
progress_bar_main_var.set(progress)
diff = get_diff(samp1, samp2)
diff -= shift
if abs(diff) < 22050:
if not diff in counts:
counts[diff] = 0
counts[diff] += 1
# use max counted diff value
max_count = 0
est_diff = 0
for diff in counts.keys():
if counts[diff] > max_count:
max_count = counts[diff]
est_diff = diff
command_Text(f"Estimated difference is {est_diff} (count: {max_count})\n")
progress_bar_main_var.set(90)
audio_files = []
def save_aligned_audio(wav2_aligned):
command_Text(f"Aligned File 2 with File 1.\n")
command_Text(f"Saving files... ")
sf.write(file2_aligned, normalize(wav2_aligned, is_normalization), sr2, subtype=wav_type_set)
save_format(file2_aligned)
min_len = min(wav1.shape[0], wav2_aligned.shape[0])
wav_sub = wav1[:min_len] - wav2_aligned[:min_len]
audio_files.append(file2_aligned)
return min_len, wav_sub
# make aligned track 2
if est_diff > 0:
wav2_aligned = np.append(np.zeros((est_diff, 2)), wav2_org, axis=0)
min_len, wav_sub = save_aligned_audio(wav2_aligned)
elif est_diff < 0:
wav2_aligned = wav2_org[-est_diff:]
min_len, wav_sub = save_aligned_audio(wav2_aligned)
else:
command_Text(f"Audio files already aligned.\n")
command_Text(f"Saving inverted track... ")
min_len = min(wav1.shape[0], wav2.shape[0])
wav_sub = wav1[:min_len] - wav2[:min_len]
wav_sub = np.clip(wav_sub, -1, +1)
sf.write(file_subtracted, normalize(wav_sub, is_normalization), sr1, subtype=wav_type_set)
save_format(file_subtracted)
progress_bar_main_var.set(95)