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uvr / UVR_interface.py
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import audioread
import librosa
import os
import sys
import json
import time
from tqdm import tqdm
import pickle
import hashlib
import logging
import traceback
import shutil
import soundfile as sf
import torch
from gui_data.constants import *
from gui_data.old_data_check import file_check, remove_unneeded_yamls, remove_temps
from lib_v5.vr_network.model_param_init import ModelParameters
from lib_v5 import spec_utils
from pathlib import Path
from separate import SeperateAttributes, SeperateDemucs, SeperateMDX, SeperateVR, save_format
from typing import List
logging.basicConfig(format='%(asctime)s - %(message)s', level=logging.INFO)
logging.info('UVR BEGIN')
PREVIOUS_PATCH_WIN = 'UVR_Patch_1_12_23_14_54'
is_dnd_compatible = True
banner_placement = -2
def save_data(data):
"""
Saves given data as a .pkl (pickle) file
Paramters:
data(dict):
Dictionary containing all the necessary data to save
"""
# Open data file, create it if it does not exist
with open('data.pkl', 'wb') as data_file:
pickle.dump(data, data_file)
def load_data() -> dict:
"""
Loads saved pkl file and returns the stored data
Returns(dict):
Dictionary containing all the saved data
"""
try:
with open('data.pkl', 'rb') as data_file: # Open data file
data = pickle.load(data_file)
return data
except (ValueError, FileNotFoundError):
# Data File is corrupted or not found so recreate it
save_data(data=DEFAULT_DATA)
return load_data()
def load_model_hash_data(dictionary):
'''Get the model hash dictionary'''
with open(dictionary) as d:
data = d.read()
return json.loads(data)
# Change the current working directory to the directory
# this file sits in
if getattr(sys, 'frozen', False):
# If the application is run as a bundle, the PyInstaller bootloader
# extends the sys module by a flag frozen=True and sets the app
# path into variable _MEIPASS'.
BASE_PATH = sys._MEIPASS
else:
BASE_PATH = os.path.dirname(os.path.abspath(__file__))
os.chdir(BASE_PATH) # Change the current working directory to the base path
debugger = []
#--Constants--
#Models
MODELS_DIR = os.path.join(BASE_PATH, 'models')
VR_MODELS_DIR = os.path.join(MODELS_DIR, 'VR_Models')
MDX_MODELS_DIR = os.path.join(MODELS_DIR, 'MDX_Net_Models')
DEMUCS_MODELS_DIR = os.path.join(MODELS_DIR, 'Demucs_Models')
DEMUCS_NEWER_REPO_DIR = os.path.join(DEMUCS_MODELS_DIR, 'v3_v4_repo')
MDX_MIXER_PATH = os.path.join(BASE_PATH, 'lib_v5', 'mixer.ckpt')
#Cache & Parameters
VR_HASH_DIR = os.path.join(VR_MODELS_DIR, 'model_data')
VR_HASH_JSON = os.path.join(VR_MODELS_DIR, 'model_data', 'model_data.json')
MDX_HASH_DIR = os.path.join(MDX_MODELS_DIR, 'model_data')
MDX_HASH_JSON = os.path.join(MDX_MODELS_DIR, 'model_data', 'model_data.json')
DEMUCS_MODEL_NAME_SELECT = os.path.join(DEMUCS_MODELS_DIR, 'model_data', 'model_name_mapper.json')
MDX_MODEL_NAME_SELECT = os.path.join(MDX_MODELS_DIR, 'model_data', 'model_name_mapper.json')
ENSEMBLE_CACHE_DIR = os.path.join(BASE_PATH, 'gui_data', 'saved_ensembles')
SETTINGS_CACHE_DIR = os.path.join(BASE_PATH, 'gui_data', 'saved_settings')
VR_PARAM_DIR = os.path.join(BASE_PATH, 'lib_v5', 'vr_network', 'modelparams')
SAMPLE_CLIP_PATH = os.path.join(BASE_PATH, 'temp_sample_clips')
ENSEMBLE_TEMP_PATH = os.path.join(BASE_PATH, 'ensemble_temps')
#Style
ICON_IMG_PATH = os.path.join(BASE_PATH, 'gui_data', 'img', 'GUI-Icon.ico')
FONT_PATH = os.path.join(BASE_PATH, 'gui_data', 'fonts', 'centurygothic', 'GOTHIC.TTF')#ensemble_temps
#Other
COMPLETE_CHIME = os.path.join(BASE_PATH, 'gui_data', 'complete_chime.wav')
FAIL_CHIME = os.path.join(BASE_PATH, 'gui_data', 'fail_chime.wav')
CHANGE_LOG = os.path.join(BASE_PATH, 'gui_data', 'change_log.txt')
SPLASH_DOC = os.path.join(BASE_PATH, 'tmp', 'splash.txt')
file_check(os.path.join(MODELS_DIR, 'Main_Models'), VR_MODELS_DIR)
file_check(os.path.join(DEMUCS_MODELS_DIR, 'v3_repo'), DEMUCS_NEWER_REPO_DIR)
remove_unneeded_yamls(DEMUCS_MODELS_DIR)
remove_temps(ENSEMBLE_TEMP_PATH)
remove_temps(SAMPLE_CLIP_PATH)
remove_temps(os.path.join(BASE_PATH, 'img'))
if not os.path.isdir(ENSEMBLE_TEMP_PATH):
os.mkdir(ENSEMBLE_TEMP_PATH)
if not os.path.isdir(SAMPLE_CLIP_PATH):
os.mkdir(SAMPLE_CLIP_PATH)
model_hash_table = {}
data = load_data()
class ModelData():
def __init__(self, model_name: str,
selected_process_method=ENSEMBLE_MODE,
is_secondary_model=False,
primary_model_primary_stem=None,
is_primary_model_primary_stem_only=False,
is_primary_model_secondary_stem_only=False,
is_pre_proc_model=False,
is_dry_check=False):
self.is_gpu_conversion = 0 if root.is_gpu_conversion_var.get() else -1
self.is_normalization = root.is_normalization_var.get()
self.is_primary_stem_only = root.is_primary_stem_only_var.get()
self.is_secondary_stem_only = root.is_secondary_stem_only_var.get()
self.is_denoise = root.is_denoise_var.get()
self.mdx_batch_size = 1 if root.mdx_batch_size_var.get() == DEF_OPT else int(root.mdx_batch_size_var.get())
self.is_mdx_ckpt = False
self.wav_type_set = root.wav_type_set
self.mp3_bit_set = root.mp3_bit_set_var.get()
self.save_format = root.save_format_var.get()
self.is_invert_spec = root.is_invert_spec_var.get()
self.is_mixer_mode = root.is_mixer_mode_var.get()
self.demucs_stems = root.demucs_stems_var.get()
self.demucs_source_list = []
self.demucs_stem_count = 0
self.mixer_path = MDX_MIXER_PATH
self.model_name = model_name
self.process_method = selected_process_method
self.model_status = False if self.model_name == CHOOSE_MODEL or self.model_name == NO_MODEL else True
self.primary_stem = None
self.secondary_stem = None
self.is_ensemble_mode = False
self.ensemble_primary_stem = None
self.ensemble_secondary_stem = None
self.primary_model_primary_stem = primary_model_primary_stem
self.is_secondary_model = is_secondary_model
self.secondary_model = None
self.secondary_model_scale = None
self.demucs_4_stem_added_count = 0
self.is_demucs_4_stem_secondaries = False
self.is_4_stem_ensemble = False
self.pre_proc_model = None
self.pre_proc_model_activated = False
self.is_pre_proc_model = is_pre_proc_model
self.is_dry_check = is_dry_check
self.model_samplerate = 44100
self.model_capacity = 32, 128
self.is_vr_51_model = False
self.is_demucs_pre_proc_model_inst_mix = False
self.manual_download_Button = None
self.secondary_model_4_stem = []
self.secondary_model_4_stem_scale = []
self.secondary_model_4_stem_names = []
self.secondary_model_4_stem_model_names_list = []
self.all_models = []
self.secondary_model_other = None
self.secondary_model_scale_other = None
self.secondary_model_bass = None
self.secondary_model_scale_bass = None
self.secondary_model_drums = None
self.secondary_model_scale_drums = None
if selected_process_method == ENSEMBLE_MODE:
partitioned_name = model_name.partition(ENSEMBLE_PARTITION)
self.process_method = partitioned_name[0]
self.model_name = partitioned_name[2]
self.model_and_process_tag = model_name
self.ensemble_primary_stem, self.ensemble_secondary_stem = root.return_ensemble_stems()
self.is_ensemble_mode = True if not is_secondary_model and not is_pre_proc_model else False
self.is_4_stem_ensemble = True if root.ensemble_main_stem_var.get() == FOUR_STEM_ENSEMBLE and self.is_ensemble_mode else False
self.pre_proc_model_activated = root.is_demucs_pre_proc_model_activate_var.get() if not self.ensemble_primary_stem == VOCAL_STEM else False
if self.process_method == VR_ARCH_TYPE:
self.is_secondary_model_activated = root.vr_is_secondary_model_activate_var.get() if not self.is_secondary_model else False
self.aggression_setting = float(int(root.aggression_setting_var.get())/100)
self.is_tta = root.is_tta_var.get()
self.is_post_process = root.is_post_process_var.get()
self.window_size = int(root.window_size_var.get())
self.batch_size = 1 if root.batch_size_var.get() == DEF_OPT else int(root.batch_size_var.get())
self.crop_size = int(root.crop_size_var.get())
self.is_high_end_process = 'mirroring' if root.is_high_end_process_var.get() else 'None'
self.post_process_threshold = float(root.post_process_threshold_var.get())
self.model_capacity = 32, 128
self.model_path = os.path.join(VR_MODELS_DIR, f"{self.model_name}.pth")
self.get_model_hash()
if self.model_hash:
self.model_data = self.get_model_data(VR_HASH_DIR, root.vr_hash_MAPPER) if not self.model_hash == WOOD_INST_MODEL_HASH else WOOD_INST_PARAMS
if self.model_data:
vr_model_param = os.path.join(VR_PARAM_DIR, "{}.json".format(self.model_data["vr_model_param"]))
self.primary_stem = self.model_data["primary_stem"]
self.secondary_stem = STEM_PAIR_MAPPER[self.primary_stem]
self.vr_model_param = ModelParameters(vr_model_param)
self.model_samplerate = self.vr_model_param.param['sr']
if "nout" in self.model_data.keys() and "nout_lstm" in self.model_data.keys():
self.model_capacity = self.model_data["nout"], self.model_data["nout_lstm"]
self.is_vr_51_model = True
else:
self.model_status = False
if self.process_method == MDX_ARCH_TYPE:
self.is_secondary_model_activated = root.mdx_is_secondary_model_activate_var.get() if not is_secondary_model else False
self.margin = int(root.margin_var.get())
self.chunks = root.determine_auto_chunks(root.chunks_var.get(), self.is_gpu_conversion) if root.is_chunk_mdxnet_var.get() else 0
self.get_mdx_model_path()
self.get_model_hash()
if self.model_hash:
self.model_data = self.get_model_data(MDX_HASH_DIR, root.mdx_hash_MAPPER)
if self.model_data:
self.compensate = self.model_data["compensate"] if root.compensate_var.get() == AUTO_SELECT else float(root.compensate_var.get())
self.mdx_dim_f_set = self.model_data["mdx_dim_f_set"]
self.mdx_dim_t_set = self.model_data["mdx_dim_t_set"]
self.mdx_n_fft_scale_set = self.model_data["mdx_n_fft_scale_set"]
self.primary_stem = self.model_data["primary_stem"]
self.secondary_stem = STEM_PAIR_MAPPER[self.primary_stem]
else:
self.model_status = False
if self.process_method == DEMUCS_ARCH_TYPE:
self.is_secondary_model_activated = root.demucs_is_secondary_model_activate_var.get() if not is_secondary_model else False
if not self.is_ensemble_mode:
self.pre_proc_model_activated = root.is_demucs_pre_proc_model_activate_var.get() if not root.demucs_stems_var.get() in [VOCAL_STEM, INST_STEM] else False
self.overlap = float(root.overlap_var.get())
self.margin_demucs = int(root.margin_demucs_var.get())
self.chunks_demucs = root.determine_auto_chunks(root.chunks_demucs_var.get(), self.is_gpu_conversion)
self.shifts = int(root.shifts_var.get())
self.is_split_mode = root.is_split_mode_var.get()
self.segment = root.segment_var.get()
self.is_chunk_demucs = root.is_chunk_demucs_var.get()
self.is_demucs_combine_stems = root.is_demucs_combine_stems_var.get()
self.is_primary_stem_only = root.is_primary_stem_only_var.get() if self.is_ensemble_mode else root.is_primary_stem_only_Demucs_var.get()
self.is_secondary_stem_only = root.is_secondary_stem_only_var.get() if self.is_ensemble_mode else root.is_secondary_stem_only_Demucs_var.get()
self.get_demucs_model_path()
self.get_demucs_model_data()
self.model_basename = os.path.splitext(os.path.basename(self.model_path))[0] if self.model_status else None
self.pre_proc_model_activated = self.pre_proc_model_activated if not self.is_secondary_model else False
self.is_primary_model_primary_stem_only = is_primary_model_primary_stem_only
self.is_primary_model_secondary_stem_only = is_primary_model_secondary_stem_only
if self.is_secondary_model_activated and self.model_status:
if (not self.is_ensemble_mode and root.demucs_stems_var.get() == ALL_STEMS and self.process_method == DEMUCS_ARCH_TYPE) or self.is_4_stem_ensemble:
for key in DEMUCS_4_SOURCE_LIST:
self.secondary_model_data(key)
self.secondary_model_4_stem.append(self.secondary_model)
self.secondary_model_4_stem_scale.append(self.secondary_model_scale)
self.secondary_model_4_stem_names.append(key)
self.demucs_4_stem_added_count = sum(i is not None for i in self.secondary_model_4_stem)
self.is_secondary_model_activated = False if all(i is None for i in self.secondary_model_4_stem) else True
self.demucs_4_stem_added_count = self.demucs_4_stem_added_count - 1 if self.is_secondary_model_activated else self.demucs_4_stem_added_count
if self.is_secondary_model_activated:
self.secondary_model_4_stem_model_names_list = [None if i is None else i.model_basename for i in self.secondary_model_4_stem]
self.is_demucs_4_stem_secondaries = True
else:
primary_stem = self.ensemble_primary_stem if self.is_ensemble_mode and self.process_method == DEMUCS_ARCH_TYPE else self.primary_stem
self.secondary_model_data(primary_stem)
if self.process_method == DEMUCS_ARCH_TYPE and not is_secondary_model:
if self.demucs_stem_count >= 3 and self.pre_proc_model_activated:
self.pre_proc_model_activated = True
self.pre_proc_model = root.process_determine_demucs_pre_proc_model(self.primary_stem)
self.is_demucs_pre_proc_model_inst_mix = root.is_demucs_pre_proc_model_inst_mix_var.get() if self.pre_proc_model else False
def secondary_model_data(self, primary_stem):
secondary_model_data = root.process_determine_secondary_model(self.process_method, primary_stem, self.is_primary_stem_only, self.is_secondary_stem_only)
self.secondary_model = secondary_model_data[0]
self.secondary_model_scale = secondary_model_data[1]
self.is_secondary_model_activated = False if not self.secondary_model else True
if self.secondary_model:
self.is_secondary_model_activated = False if self.secondary_model.model_basename == self.model_basename else True
def get_mdx_model_path(self):
if self.model_name.endswith(CKPT):
# self.chunks = 0
# self.is_mdx_batch_mode = True
self.is_mdx_ckpt = True
ext = '' if self.is_mdx_ckpt else ONNX
for file_name, chosen_mdx_model in root.mdx_name_select_MAPPER.items():
if self.model_name in chosen_mdx_model:
self.model_path = os.path.join(MDX_MODELS_DIR, f"{file_name}{ext}")
break
else:
self.model_path = os.path.join(MDX_MODELS_DIR, f"{self.model_name}{ext}")
self.mixer_path = os.path.join(MDX_MODELS_DIR, f"mixer_val.ckpt")
def get_demucs_model_path(self):
demucs_newer = [True for x in DEMUCS_NEWER_TAGS if x in self.model_name]
demucs_model_dir = DEMUCS_NEWER_REPO_DIR if demucs_newer else DEMUCS_MODELS_DIR
for file_name, chosen_model in root.demucs_name_select_MAPPER.items():
if self.model_name in chosen_model:
self.model_path = os.path.join(demucs_model_dir, file_name)
break
else:
self.model_path = os.path.join(DEMUCS_NEWER_REPO_DIR, f'{self.model_name}.yaml')
def get_demucs_model_data(self):
self.demucs_version = DEMUCS_V4
for key, value in DEMUCS_VERSION_MAPPER.items():
if value in self.model_name:
self.demucs_version = key
self.demucs_source_list = DEMUCS_2_SOURCE if DEMUCS_UVR_MODEL in self.model_name else DEMUCS_4_SOURCE
self.demucs_source_map = DEMUCS_2_SOURCE_MAPPER if DEMUCS_UVR_MODEL in self.model_name else DEMUCS_4_SOURCE_MAPPER
self.demucs_stem_count = 2 if DEMUCS_UVR_MODEL in self.model_name else 4
if not self.is_ensemble_mode:
self.primary_stem = PRIMARY_STEM if self.demucs_stems == ALL_STEMS else self.demucs_stems
self.secondary_stem = STEM_PAIR_MAPPER[self.primary_stem]
def get_model_data(self, model_hash_dir, hash_mapper):
model_settings_json = os.path.join(model_hash_dir, "{}.json".format(self.model_hash))
if os.path.isfile(model_settings_json):
return json.load(open(model_settings_json))
else:
for hash, settings in hash_mapper.items():
if self.model_hash in hash:
return settings
else:
return self.get_model_data_from_popup()
def get_model_data_from_popup(self):
return None
def get_model_hash(self):
self.model_hash = None
if not os.path.isfile(self.model_path):
self.model_status = False
self.model_hash is None
else:
if model_hash_table:
for (key, value) in model_hash_table.items():
if self.model_path == key:
self.model_hash = value
break
if not self.model_hash:
try:
with open(self.model_path, 'rb') as f:
f.seek(- 10000 * 1024, 2)
self.model_hash = hashlib.md5(f.read()).hexdigest()
except:
self.model_hash = hashlib.md5(open(self.model_path,'rb').read()).hexdigest()
table_entry = {self.model_path: self.model_hash}
model_hash_table.update(table_entry)
class Ensembler():
def __init__(self, is_manual_ensemble=False):
self.is_save_all_outputs_ensemble = root.is_save_all_outputs_ensemble_var.get()
chosen_ensemble_name = '{}'.format(root.chosen_ensemble_var.get().replace(" ", "_")) if not root.chosen_ensemble_var.get() == CHOOSE_ENSEMBLE_OPTION else 'Ensembled'
ensemble_algorithm = root.ensemble_type_var.get().partition("/")
ensemble_main_stem_pair = root.ensemble_main_stem_var.get().partition("/")
time_stamp = round(time.time())
self.audio_tool = MANUAL_ENSEMBLE
self.main_export_path = Path(root.export_path_var.get())
self.chosen_ensemble = f"_{chosen_ensemble_name}" if root.is_append_ensemble_name_var.get() else ''
ensemble_folder_name = self.main_export_path if self.is_save_all_outputs_ensemble else ENSEMBLE_TEMP_PATH
self.ensemble_folder_name = os.path.join(ensemble_folder_name, '{}_Outputs_{}'.format(chosen_ensemble_name, time_stamp))
self.is_testing_audio = f"{time_stamp}_" if root.is_testing_audio_var.get() else ''
self.primary_algorithm = ensemble_algorithm[0]
self.secondary_algorithm = ensemble_algorithm[2]
self.ensemble_primary_stem = ensemble_main_stem_pair[0]
self.ensemble_secondary_stem = ensemble_main_stem_pair[2]
self.is_normalization = root.is_normalization_var.get()
self.wav_type_set = root.wav_type_set
self.mp3_bit_set = root.mp3_bit_set_var.get()
self.save_format = root.save_format_var.get()
if not is_manual_ensemble:
os.mkdir(self.ensemble_folder_name)
def ensemble_outputs(self, audio_file_base, export_path, stem, is_4_stem=False, is_inst_mix=False):
"""Processes the given outputs and ensembles them with the chosen algorithm"""
if is_4_stem:
algorithm = root.ensemble_type_var.get()
stem_tag = stem
else:
if is_inst_mix:
algorithm = self.secondary_algorithm
stem_tag = f"{self.ensemble_secondary_stem} {INST_STEM}"
else:
algorithm = self.primary_algorithm if stem == PRIMARY_STEM else self.secondary_algorithm
stem_tag = self.ensemble_primary_stem if stem == PRIMARY_STEM else self.ensemble_secondary_stem
stem_outputs = self.get_files_to_ensemble(folder=export_path, prefix=audio_file_base, suffix=f"_({stem_tag}).wav")
audio_file_output = f"{self.is_testing_audio}{audio_file_base}{self.chosen_ensemble}_({stem_tag})"
stem_save_path = os.path.join('{}'.format(self.main_export_path),'{}.wav'.format(audio_file_output))
if stem_outputs:
spec_utils.ensemble_inputs(stem_outputs, algorithm, self.is_normalization, self.wav_type_set, stem_save_path)
save_format(stem_save_path, self.save_format, self.mp3_bit_set)
if self.is_save_all_outputs_ensemble:
for i in stem_outputs:
save_format(i, self.save_format, self.mp3_bit_set)
else:
for i in stem_outputs:
try:
os.remove(i)
except Exception as e:
print(e)
def ensemble_manual(self, audio_inputs, audio_file_base, is_bulk=False):
"""Processes the given outputs and ensembles them with the chosen algorithm"""
is_mv_sep = True
if is_bulk:
number_list = list(set([os.path.basename(i).split("_")[0] for i in audio_inputs]))
for n in number_list:
current_list = [i for i in audio_inputs if os.path.basename(i).startswith(n)]
audio_file_base = os.path.basename(current_list[0]).split('.wav')[0]
stem_testing = "instrum" if "Instrumental" in audio_file_base else "vocals"
if is_mv_sep:
audio_file_base = audio_file_base.split("_")
audio_file_base = f"{audio_file_base[1]}_{audio_file_base[2]}_{stem_testing}"
self.ensemble_manual_process(current_list, audio_file_base, is_bulk)
else:
self.ensemble_manual_process(audio_inputs, audio_file_base, is_bulk)
def ensemble_manual_process(self, audio_inputs, audio_file_base, is_bulk):
algorithm = root.choose_algorithm_var.get()
algorithm_text = "" if is_bulk else f"_({root.choose_algorithm_var.get()})"
stem_save_path = os.path.join('{}'.format(self.main_export_path),'{}{}{}.wav'.format(self.is_testing_audio, audio_file_base, algorithm_text))
spec_utils.ensemble_inputs(audio_inputs, algorithm, self.is_normalization, self.wav_type_set, stem_save_path)
save_format(stem_save_path, self.save_format, self.mp3_bit_set)
def get_files_to_ensemble(self, folder="", prefix="", suffix=""):
"""Grab all the files to be ensembled"""
return [os.path.join(folder, i) for i in os.listdir(folder) if i.startswith(prefix) and i.endswith(suffix)]
def secondary_stem(stem):
"""Determines secondary stem"""
for key, value in STEM_PAIR_MAPPER.items():
if stem in key:
secondary_stem = value
return secondary_stem
class UVRInterface:
def __init__(self) -> None:
pass
def assemble_model_data(self, model=None, arch_type=ENSEMBLE_MODE, is_dry_check=False) -> List[ModelData]:
if arch_type == ENSEMBLE_STEM_CHECK:
model_data = self.model_data_table
missing_models = [model.model_status for model in model_data if not model.model_status]
if missing_models or not model_data:
model_data: List[ModelData] = [ModelData(model_name, is_dry_check=is_dry_check) for model_name in self.ensemble_model_list]
self.model_data_table = model_data
if arch_type == ENSEMBLE_MODE:
model_data: List[ModelData] = [ModelData(model_name) for model_name in self.ensemble_listbox_get_all_selected_models()]
if arch_type == ENSEMBLE_CHECK:
model_data: List[ModelData] = [ModelData(model)]
if arch_type == VR_ARCH_TYPE or arch_type == VR_ARCH_PM:
model_data: List[ModelData] = [ModelData(model, VR_ARCH_TYPE)]
if arch_type == MDX_ARCH_TYPE:
model_data: List[ModelData] = [ModelData(model, MDX_ARCH_TYPE)]
if arch_type == DEMUCS_ARCH_TYPE:
model_data: List[ModelData] = [ModelData(model, DEMUCS_ARCH_TYPE)]#
return model_data
def create_sample(self, audio_file, sample_path=SAMPLE_CLIP_PATH):
try:
with audioread.audio_open(audio_file) as f:
track_length = int(f.duration)
except Exception as e:
print('Audioread failed to get duration. Trying Librosa...')
y, sr = librosa.load(audio_file, mono=False, sr=44100)
track_length = int(librosa.get_duration(y=y, sr=sr))
clip_duration = int(root.model_sample_mode_duration_var.get())
if track_length >= clip_duration:
offset_cut = track_length//3
off_cut = offset_cut + track_length
if not off_cut >= clip_duration:
offset_cut = 0
name_apped = f'{clip_duration}_second_'
else:
offset_cut, clip_duration = 0, track_length
name_apped = ''
sample = librosa.load(audio_file, offset=offset_cut, duration=clip_duration, mono=False, sr=44100)[0].T
audio_sample = os.path.join(sample_path, f'{os.path.splitext(os.path.basename(audio_file))[0]}_{name_apped}sample.wav')
sf.write(audio_sample, sample, 44100)
return audio_sample
def verify_audio(self, audio_file, is_process=True, sample_path=None):
is_good = False
error_data = ''
if os.path.isfile(audio_file):
try:
librosa.load(audio_file, duration=3, mono=False, sr=44100) if not type(sample_path) is str else self.create_sample(audio_file, sample_path)
is_good = True
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}"'
if is_process:
audio_base_name = os.path.basename(audio_file)
self.error_log_var.set(f'Error Loading the Following File:\n\n\"{audio_base_name}\"\n\nRaw Error Details:\n\n{message}')
else:
error_data = AUDIO_VERIFICATION_CHECK(audio_file, message)
if is_process:
return is_good
else:
return is_good, error_data
def cached_sources_clear(self):
self.vr_cache_source_mapper = {}
self.mdx_cache_source_mapper = {}
self.demucs_cache_source_mapper = {}
def cached_model_source_holder(self, process_method, sources, model_name=None):
if process_method == VR_ARCH_TYPE:
self.vr_cache_source_mapper = {**self.vr_cache_source_mapper, **{model_name: sources}}
if process_method == MDX_ARCH_TYPE:
self.mdx_cache_source_mapper = {**self.mdx_cache_source_mapper, **{model_name: sources}}
if process_method == DEMUCS_ARCH_TYPE:
self.demucs_cache_source_mapper = {**self.demucs_cache_source_mapper, **{model_name: sources}}
def cached_source_callback(self, process_method, model_name=None):
model, sources = None, None
if process_method == VR_ARCH_TYPE:
mapper = self.vr_cache_source_mapper
if process_method == MDX_ARCH_TYPE:
mapper = self.mdx_cache_source_mapper
if process_method == DEMUCS_ARCH_TYPE:
mapper = self.demucs_cache_source_mapper
for key, value in mapper.items():
if model_name in key:
model = key
sources = value
return model, sources
def cached_source_model_list_check(self, model_list: List[ModelData]):
model: ModelData
primary_model_names = lambda process_method:[model.model_basename if model.process_method == process_method else None for model in model_list]
secondary_model_names = lambda process_method:[model.secondary_model.model_basename if model.is_secondary_model_activated and model.process_method == process_method else None for model in model_list]
self.vr_primary_model_names = primary_model_names(VR_ARCH_TYPE)
self.mdx_primary_model_names = primary_model_names(MDX_ARCH_TYPE)
self.demucs_primary_model_names = primary_model_names(DEMUCS_ARCH_TYPE)
self.vr_secondary_model_names = secondary_model_names(VR_ARCH_TYPE)
self.mdx_secondary_model_names = secondary_model_names(MDX_ARCH_TYPE)
self.demucs_secondary_model_names = [model.secondary_model.model_basename if model.is_secondary_model_activated and model.process_method == DEMUCS_ARCH_TYPE and not model.secondary_model is None else None for model in model_list]
self.demucs_pre_proc_model_name = [model.pre_proc_model.model_basename if model.pre_proc_model else None for model in model_list]#list(dict.fromkeys())
for model in model_list:
if model.process_method == DEMUCS_ARCH_TYPE and model.is_demucs_4_stem_secondaries:
if not model.is_4_stem_ensemble:
self.demucs_secondary_model_names = model.secondary_model_4_stem_model_names_list
break
else:
for i in model.secondary_model_4_stem_model_names_list:
self.demucs_secondary_model_names.append(i)
self.all_models = self.vr_primary_model_names + self.mdx_primary_model_names + self.demucs_primary_model_names + self.vr_secondary_model_names + self.mdx_secondary_model_names + self.demucs_secondary_model_names + self.demucs_pre_proc_model_name
def process(self, model_name, arch_type, audio_file, export_path, is_model_sample_mode=False, is_4_stem_ensemble=False, set_progress_func=None, console_write=print) -> SeperateAttributes:
stime = time.perf_counter()
time_elapsed = lambda:f'Time Elapsed: {time.strftime("%H:%M:%S", time.gmtime(int(time.perf_counter() - stime)))}'
if arch_type==ENSEMBLE_MODE:
model_list, ensemble = self.assemble_model_data(), Ensembler()
export_path = ensemble.ensemble_folder_name
is_ensemble = True
else:
model_list = self.assemble_model_data(model_name, arch_type)
is_ensemble = False
self.cached_source_model_list_check(model_list)
model = model_list[0]
if self.verify_audio(audio_file):
audio_file = self.create_sample(audio_file) if is_model_sample_mode else audio_file
else:
print(f'"{os.path.basename(audio_file)}\" is missing or currupted.\n')
exit()
audio_file_base = f"{os.path.splitext(os.path.basename(audio_file))[0]}"
audio_file_base = audio_file_base if is_ensemble else f"{round(time.time())}_{audio_file_base}"
audio_file_base = audio_file_base if not is_ensemble else f"{audio_file_base}_{model.model_basename}"
if not is_ensemble:
audio_file_base = f"{audio_file_base}_{model.model_basename}"
if not is_ensemble:
export_path = os.path.join(Path(export_path), model.model_basename, os.path.splitext(os.path.basename(audio_file))[0])
if not os.path.isdir(export_path):
os.makedirs(export_path)
if set_progress_func is None:
pbar = tqdm(total=1)
self._progress = 0
def set_progress_func(step, inference_iterations=0):
progress_curr = step + inference_iterations
pbar.update(progress_curr-self._progress)
self._progress = progress_curr
def postprocess():
pbar.close()
else:
def postprocess():
pass
process_data = {
'model_data': model,
'export_path': export_path,
'audio_file_base': audio_file_base,
'audio_file': audio_file,
'set_progress_bar': set_progress_func,
'write_to_console': lambda progress_text, base_text='': console_write(base_text + progress_text),
'process_iteration': lambda:None,
'cached_source_callback': self.cached_source_callback,
'cached_model_source_holder': self.cached_model_source_holder,
'list_all_models': self.all_models,
'is_ensemble_master': is_ensemble,
'is_4_stem_ensemble': is_ensemble and is_4_stem_ensemble
}
if model.process_method == VR_ARCH_TYPE:
seperator = SeperateVR(model, process_data)
if model.process_method == MDX_ARCH_TYPE:
seperator = SeperateMDX(model, process_data)
if model.process_method == DEMUCS_ARCH_TYPE:
seperator = SeperateDemucs(model, process_data)
seperator.seperate()
postprocess()
if is_ensemble:
audio_file_base = audio_file_base.replace(f"_{model.model_basename}", "")
console_write(ENSEMBLING_OUTPUTS)
if is_4_stem_ensemble:
for output_stem in DEMUCS_4_SOURCE_LIST:
ensemble.ensemble_outputs(audio_file_base, export_path, output_stem, is_4_stem=True)
else:
if not root.is_secondary_stem_only_var.get():
ensemble.ensemble_outputs(audio_file_base, export_path, PRIMARY_STEM)
if not root.is_primary_stem_only_var.get():
ensemble.ensemble_outputs(audio_file_base, export_path, SECONDARY_STEM)
ensemble.ensemble_outputs(audio_file_base, export_path, SECONDARY_STEM, is_inst_mix=True)
console_write(DONE)
if is_model_sample_mode:
if os.path.isfile(audio_file):
os.remove(audio_file)
torch.cuda.empty_cache()
if is_ensemble and len(os.listdir(export_path)) == 0:
shutil.rmtree(export_path)
console_write(f'Process Complete, using time: {time_elapsed()}\nOutput path: {export_path}')
self.cached_sources_clear()
return seperator
class RootWrapper:
def __init__(self, var) -> None:
self.var=var
def set(self, val):
self.var=val
def get(self):
return self.var
class FakeRoot:
def __init__(self) -> None:
self.wav_type_set = 'PCM_16'
self.vr_hash_MAPPER = load_model_hash_data(VR_HASH_JSON)
self.mdx_hash_MAPPER = load_model_hash_data(MDX_HASH_JSON)
self.mdx_name_select_MAPPER = load_model_hash_data(MDX_MODEL_NAME_SELECT)
self.demucs_name_select_MAPPER = load_model_hash_data(DEMUCS_MODEL_NAME_SELECT)
def __getattribute__(self, __name: str):
try:
return super().__getattribute__(__name)
except AttributeError:
wrapped=RootWrapper(None)
super().__setattr__(__name, wrapped)
return wrapped
def load_saved_settings(self, loaded_setting: dict, process_method=None):
"""Loads user saved application settings or resets to default"""
for key, value in DEFAULT_DATA.items():
if not key in loaded_setting.keys():
loaded_setting = {**loaded_setting, **{key:value}}
loaded_setting['batch_size'] = DEF_OPT
is_ensemble = True if process_method == ENSEMBLE_MODE else False
if not process_method or process_method == VR_ARCH_PM or is_ensemble:
self.vr_model_var.set(loaded_setting['vr_model'])
self.aggression_setting_var.set(loaded_setting['aggression_setting'])
self.window_size_var.set(loaded_setting['window_size'])
self.batch_size_var.set(loaded_setting['batch_size'])
self.crop_size_var.set(loaded_setting['crop_size'])
self.is_tta_var.set(loaded_setting['is_tta'])
self.is_output_image_var.set(loaded_setting['is_output_image'])
self.is_post_process_var.set(loaded_setting['is_post_process'])
self.is_high_end_process_var.set(loaded_setting['is_high_end_process'])
self.post_process_threshold_var.set(loaded_setting['post_process_threshold'])
self.vr_voc_inst_secondary_model_var.set(loaded_setting['vr_voc_inst_secondary_model'])
self.vr_other_secondary_model_var.set(loaded_setting['vr_other_secondary_model'])
self.vr_bass_secondary_model_var.set(loaded_setting['vr_bass_secondary_model'])
self.vr_drums_secondary_model_var.set(loaded_setting['vr_drums_secondary_model'])
self.vr_is_secondary_model_activate_var.set(loaded_setting['vr_is_secondary_model_activate'])
self.vr_voc_inst_secondary_model_scale_var.set(loaded_setting['vr_voc_inst_secondary_model_scale'])
self.vr_other_secondary_model_scale_var.set(loaded_setting['vr_other_secondary_model_scale'])
self.vr_bass_secondary_model_scale_var.set(loaded_setting['vr_bass_secondary_model_scale'])
self.vr_drums_secondary_model_scale_var.set(loaded_setting['vr_drums_secondary_model_scale'])
if not process_method or process_method == DEMUCS_ARCH_TYPE or is_ensemble:
self.demucs_model_var.set(loaded_setting['demucs_model'])
self.segment_var.set(loaded_setting['segment'])
self.overlap_var.set(loaded_setting['overlap'])
self.shifts_var.set(loaded_setting['shifts'])
self.chunks_demucs_var.set(loaded_setting['chunks_demucs'])
self.margin_demucs_var.set(loaded_setting['margin_demucs'])
self.is_chunk_demucs_var.set(loaded_setting['is_chunk_demucs'])
self.is_chunk_mdxnet_var.set(loaded_setting['is_chunk_mdxnet'])
self.is_primary_stem_only_Demucs_var.set(loaded_setting['is_primary_stem_only_Demucs'])
self.is_secondary_stem_only_Demucs_var.set(loaded_setting['is_secondary_stem_only_Demucs'])
self.is_split_mode_var.set(loaded_setting['is_split_mode'])
self.is_demucs_combine_stems_var.set(loaded_setting['is_demucs_combine_stems'])
self.demucs_voc_inst_secondary_model_var.set(loaded_setting['demucs_voc_inst_secondary_model'])
self.demucs_other_secondary_model_var.set(loaded_setting['demucs_other_secondary_model'])
self.demucs_bass_secondary_model_var.set(loaded_setting['demucs_bass_secondary_model'])
self.demucs_drums_secondary_model_var.set(loaded_setting['demucs_drums_secondary_model'])
self.demucs_is_secondary_model_activate_var.set(loaded_setting['demucs_is_secondary_model_activate'])
self.demucs_voc_inst_secondary_model_scale_var.set(loaded_setting['demucs_voc_inst_secondary_model_scale'])
self.demucs_other_secondary_model_scale_var.set(loaded_setting['demucs_other_secondary_model_scale'])
self.demucs_bass_secondary_model_scale_var.set(loaded_setting['demucs_bass_secondary_model_scale'])
self.demucs_drums_secondary_model_scale_var.set(loaded_setting['demucs_drums_secondary_model_scale'])
self.demucs_stems_var.set(loaded_setting['demucs_stems'])
# self.update_stem_checkbox_labels(self.demucs_stems_var.get(), demucs=True)
self.demucs_pre_proc_model_var.set(data['demucs_pre_proc_model'])
self.is_demucs_pre_proc_model_activate_var.set(data['is_demucs_pre_proc_model_activate'])
self.is_demucs_pre_proc_model_inst_mix_var.set(data['is_demucs_pre_proc_model_inst_mix'])
if not process_method or process_method == MDX_ARCH_TYPE or is_ensemble:
self.mdx_net_model_var.set(loaded_setting['mdx_net_model'])
self.chunks_var.set(loaded_setting['chunks'])
self.margin_var.set(loaded_setting['margin'])
self.compensate_var.set(loaded_setting['compensate'])
self.is_denoise_var.set(loaded_setting['is_denoise'])
self.is_invert_spec_var.set(loaded_setting['is_invert_spec'])
self.is_mixer_mode_var.set(loaded_setting['is_mixer_mode'])
self.mdx_batch_size_var.set(loaded_setting['mdx_batch_size'])
self.mdx_voc_inst_secondary_model_var.set(loaded_setting['mdx_voc_inst_secondary_model'])
self.mdx_other_secondary_model_var.set(loaded_setting['mdx_other_secondary_model'])
self.mdx_bass_secondary_model_var.set(loaded_setting['mdx_bass_secondary_model'])
self.mdx_drums_secondary_model_var.set(loaded_setting['mdx_drums_secondary_model'])
self.mdx_is_secondary_model_activate_var.set(loaded_setting['mdx_is_secondary_model_activate'])
self.mdx_voc_inst_secondary_model_scale_var.set(loaded_setting['mdx_voc_inst_secondary_model_scale'])
self.mdx_other_secondary_model_scale_var.set(loaded_setting['mdx_other_secondary_model_scale'])
self.mdx_bass_secondary_model_scale_var.set(loaded_setting['mdx_bass_secondary_model_scale'])
self.mdx_drums_secondary_model_scale_var.set(loaded_setting['mdx_drums_secondary_model_scale'])
if not process_method or is_ensemble:
self.is_save_all_outputs_ensemble_var.set(loaded_setting['is_save_all_outputs_ensemble'])
self.is_append_ensemble_name_var.set(loaded_setting['is_append_ensemble_name'])
self.chosen_audio_tool_var.set(loaded_setting['chosen_audio_tool'])
self.choose_algorithm_var.set(loaded_setting['choose_algorithm'])
self.time_stretch_rate_var.set(loaded_setting['time_stretch_rate'])
self.pitch_rate_var.set(loaded_setting['pitch_rate'])
self.is_primary_stem_only_var.set(loaded_setting['is_primary_stem_only'])
self.is_secondary_stem_only_var.set(loaded_setting['is_secondary_stem_only'])
self.is_testing_audio_var.set(loaded_setting['is_testing_audio'])
self.is_add_model_name_var.set(loaded_setting['is_add_model_name'])
self.is_accept_any_input_var.set(loaded_setting["is_accept_any_input"])
self.is_task_complete_var.set(loaded_setting['is_task_complete'])
self.is_create_model_folder_var.set(loaded_setting['is_create_model_folder'])
self.mp3_bit_set_var.set(loaded_setting['mp3_bit_set'])
self.save_format_var.set(loaded_setting['save_format'])
self.wav_type_set_var.set(loaded_setting['wav_type_set'])
self.user_code_var.set(loaded_setting['user_code'])
self.is_gpu_conversion_var.set(loaded_setting['is_gpu_conversion'])
self.is_normalization_var.set(loaded_setting['is_normalization'])
self.help_hints_var.set(loaded_setting['help_hints_var'])
self.model_sample_mode_var.set(loaded_setting['model_sample_mode'])
self.model_sample_mode_duration_var.set(loaded_setting['model_sample_mode_duration'])
root = FakeRoot()
root.load_saved_settings(DEFAULT_DATA)