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""" |
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Inference code of music style transfer |
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of the work "Music Mixing Style Transfer: A Contrastive Learning Approach to Disentangle Audio Effects" |
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Process : converts the mastering style of the input music recording to that of the refernce music. |
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files inside the target directory should be organized as follow |
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"path_to_data_directory"/"song_name_#1"/input.wav |
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"path_to_data_directory"/"song_name_#1"/reference.wav |
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... |
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"path_to_data_directory"/"song_name_#n"/input.wav |
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"path_to_data_directory"/"song_name_#n"/reference.wav |
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where the 'input' and 'reference' should share the same names. |
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""" |
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import numpy as np |
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from glob import glob |
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import os |
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import torch |
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import sys |
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currentdir = os.path.dirname(os.path.realpath(__file__)) |
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sys.path.append(os.path.join(os.path.dirname(currentdir), "mixing_style_transfer")) |
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from networks import FXencoder, TCNModel |
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from data_loader import * |
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import librosa |
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class Mastering_Style_Transfer_Inference: |
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def __init__(self, args, trained_w_ddp=True): |
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if torch.cuda.is_available(): |
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self.device = torch.device("cuda:0") |
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else: |
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self.device = torch.device("cpu") |
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self.args = args |
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self.segment_length = args.segment_length |
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self.batch_size = args.batch_size |
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self.sample_rate = 44100 |
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self.time_in_seconds = int(args.segment_length // self.sample_rate) |
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self.output_dir = args.target_dir if args.output_dir==None else args.output_dir |
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self.target_dir = args.target_dir |
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self.models = {} |
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self.models['effects_encoder'] = FXencoder(args.cfg_encoder).to(self.device) |
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self.models['mastering_converter'] = TCNModel(nparams=args.cfg_converter["condition_dimension"], \ |
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ninputs=2, \ |
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noutputs=2, \ |
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nblocks=args.cfg_converter["nblocks"], \ |
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dilation_growth=args.cfg_converter["dilation_growth"], \ |
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kernel_size=args.cfg_converter["kernel_size"], \ |
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channel_width=args.cfg_converter["channel_width"], \ |
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stack_size=args.cfg_converter["stack_size"], \ |
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cond_dim=args.cfg_converter["condition_dimension"], \ |
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causal=args.cfg_converter["causal"]).to(self.device) |
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ckpt_paths = {'effects_encoder' : args.ckpt_path_enc, \ |
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'mastering_converter' : args.ckpt_path_conv} |
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ddp = trained_w_ddp |
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self.reload_weights(ckpt_paths, ddp=ddp) |
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def reload_weights(self, ckpt_paths, ddp=True): |
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for cur_model_name in self.models.keys(): |
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checkpoint = torch.load(ckpt_paths[cur_model_name], map_location=self.device) |
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from collections import OrderedDict |
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new_state_dict = OrderedDict() |
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for k, v in checkpoint["model"].items(): |
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name = k[7:] if ddp else k |
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new_state_dict[name] = v |
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self.models[cur_model_name].load_state_dict(new_state_dict) |
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print(f"---reloaded checkpoint weights : {cur_model_name} ---") |
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def inference(self, input_track_path, reference_track_path): |
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print("\n======= Start to inference music mixing style transfer =======") |
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output_name_tag = 'output' if self.args.normalize_input else 'output_notnormed' |
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input_aud = load_wav_segment(input_track_path, axis=0) |
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reference_aud = load_wav_segment(reference_track_path, axis=0) |
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input_aud = torch.FloatTensor(input_aud).to(self.device) |
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reference_aud = torch.FloatTensor(reference_aud).to(self.device) |
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cur_out_dir = './yt_dir/0/' |
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os.makedirs(cur_out_dir, exist_ok=True) |
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''' segmentize whole songs into batch ''' |
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if input_aud.shape[1] > self.args.segment_length: |
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cur_inst_input_stem = self.batchwise_segmentization(input_aud, \ |
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"input", \ |
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segment_length=self.args.segment_length, \ |
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discard_last=False) |
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else: |
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cur_inst_input_stem = [input_aud.unsqueeze(0)] |
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if reference_aud.shape[1] > self.args.segment_length*2: |
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cur_inst_reference_stem = self.batchwise_segmentization(reference_aud, \ |
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"reference", \ |
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segment_length=self.args.segment_length_ref, \ |
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discard_last=False) |
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else: |
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cur_inst_reference_stem = [reference_aud.unsqueeze(0)] |
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''' inference ''' |
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infered_ref_data_list = [] |
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for cur_ref_data in cur_inst_reference_stem: |
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cur_ref_data = cur_ref_data.to(self.device) |
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with torch.no_grad(): |
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self.models["effects_encoder"].eval() |
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reference_feature = self.models["effects_encoder"](cur_ref_data) |
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infered_ref_data_list.append(reference_feature) |
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infered_ref_data = torch.stack(infered_ref_data_list) |
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infered_ref_data_avg = torch.mean(infered_ref_data.reshape(infered_ref_data.shape[0]*infered_ref_data.shape[1], infered_ref_data.shape[2]), axis=0) |
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infered_data_list = [] |
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for cur_data in cur_inst_input_stem: |
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cur_data = cur_data.to(self.device) |
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with torch.no_grad(): |
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self.models["mastering_converter"].eval() |
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infered_data = self.models["mastering_converter"](cur_data, infered_ref_data_avg.unsqueeze(0)) |
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infered_data_list.append(infered_data.cpu().detach()) |
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for cur_idx, cur_batch_infered_data in enumerate(infered_data_list): |
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cur_infered_data_sequential = torch.cat(torch.unbind(cur_batch_infered_data, dim=0), dim=-1) |
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fin_data_out = cur_infered_data_sequential if cur_idx==0 else torch.cat((fin_data_out, cur_infered_data_sequential), dim=-1) |
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fin_data_out_mastered = fin_data_out[:, :input_aud.shape[-1]].numpy() |
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fin_output_path_mastering = os.path.join(cur_out_dir, f"remastered_output.wav") |
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sf.write(fin_output_path_mastering, fin_data_out_mastered.transpose(-1, -2), self.args.sample_rate, 'PCM_16') |
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return fin_output_path_mastering |
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def inference_interpolation(self, ): |
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print("\n======= Start to inference interpolation examples =======") |
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output_name_tag = 'output_interpolation' if self.args.normalize_input else 'output_notnormed_interpolation' |
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for step, (input_stems, reference_stems_A, reference_stems_B, dir_name) in enumerate(self.data_loader): |
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print(f"---inference file name : {dir_name[0]}---") |
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cur_out_dir = dir_name[0].replace(self.target_dir, self.output_dir) |
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os.makedirs(cur_out_dir, exist_ok=True) |
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''' stem-level inference ''' |
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inst_outputs = [] |
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for cur_inst_idx, cur_inst_name in enumerate(self.args.instruments): |
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print(f'\t{cur_inst_name}...') |
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''' segmentize whole song ''' |
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interpolate_segment_length = input_stems[0][cur_inst_idx].shape[1] // self.args.interpolate_segments + 1 |
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cur_inst_input_stem = self.batchwise_segmentization(input_stems[0][cur_inst_idx], \ |
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dir_name[0], \ |
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segment_length=interpolate_segment_length, \ |
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discard_last=False) |
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if len(reference_stems_A[0][cur_inst_idx][0]) > self.args.segment_length_ref: |
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cur_inst_reference_stem_A = self.batchwise_segmentization(reference_stems_A[0][cur_inst_idx], \ |
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dir_name[0], \ |
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segment_length=self.args.segment_length_ref, \ |
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discard_last=False) |
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else: |
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cur_inst_reference_stem_A = [reference_stems_A[:, cur_inst_idx]] |
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if len(reference_stems_B[0][cur_inst_idx][0]) > self.args.segment_length_ref: |
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cur_inst_reference_stem_B = self.batchwise_segmentization(reference_stems_B[0][cur_inst_idx], \ |
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dir_name[0], \ |
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segment_length=self.args.segment_length, \ |
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discard_last=False) |
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else: |
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cur_inst_reference_stem_B = [reference_stems_B[:, cur_inst_idx]] |
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''' inference ''' |
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infered_ref_data_list = [] |
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for cur_ref_data in cur_inst_reference_stem_A: |
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cur_ref_data = cur_ref_data.to(self.device) |
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with torch.no_grad(): |
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self.models["effects_encoder"].eval() |
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reference_feature = self.models["effects_encoder"](cur_ref_data) |
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infered_ref_data_list.append(reference_feature) |
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infered_ref_data = torch.stack(infered_ref_data_list) |
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infered_ref_data_avg_A = torch.mean(infered_ref_data.reshape(infered_ref_data.shape[0]*infered_ref_data.shape[1], infered_ref_data.shape[2]), axis=0) |
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infered_ref_data_list = [] |
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for cur_ref_data in cur_inst_reference_stem_B: |
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cur_ref_data = cur_ref_data.to(self.device) |
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with torch.no_grad(): |
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self.models["effects_encoder"].eval() |
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reference_feature = self.models["effects_encoder"](cur_ref_data) |
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infered_ref_data_list.append(reference_feature) |
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infered_ref_data = torch.stack(infered_ref_data_list) |
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infered_ref_data_avg_B = torch.mean(infered_ref_data.reshape(infered_ref_data.shape[0]*infered_ref_data.shape[1], infered_ref_data.shape[2]), axis=0) |
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infered_data_list = [] |
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for cur_idx, cur_data in enumerate(cur_inst_input_stem): |
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cur_data = cur_data.to(self.device) |
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cur_weight = (self.args.interpolate_segments-1-cur_idx) / (self.args.interpolate_segments-1) |
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cur_ref_emb = cur_weight * infered_ref_data_avg_A + (1-cur_weight) * infered_ref_data_avg_B |
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with torch.no_grad(): |
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self.models["mastering_converter"].eval() |
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infered_data = self.models["mastering_converter"](cur_data, cur_ref_emb.unsqueeze(0)) |
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infered_data_list.append(infered_data.cpu().detach()) |
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for cur_idx, cur_batch_infered_data in enumerate(infered_data_list): |
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cur_infered_data_sequential = torch.cat(torch.unbind(cur_batch_infered_data, dim=0), dim=-1) |
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fin_data_out = cur_infered_data_sequential if cur_idx==0 else torch.cat((fin_data_out, cur_infered_data_sequential), dim=-1) |
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fin_data_out_inst = fin_data_out[:, :input_stems[0][cur_inst_idx].shape[-1]].numpy() |
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inst_outputs.append(fin_data_out_inst) |
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if self.args.save_each_inst: |
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sf.write(os.path.join(cur_out_dir, f"{cur_inst_name}_{output_name_tag}.wav"), fin_data_out_inst.transpose(-1, -2), self.args.sample_rate, 'PCM_16') |
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fin_data_out_mix = sum(inst_outputs) |
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fin_output_path = os.path.join(cur_out_dir, f"mixture_{output_name_tag}.wav") |
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sf.write(fin_output_path, fin_data_out_mix.transpose(-1, -2), self.args.sample_rate, 'PCM_16') |
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return fin_output_path |
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def batchwise_segmentization(self, target_song, song_name, segment_length, discard_last=False): |
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assert target_song.shape[-1] >= self.args.segment_length, \ |
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f"Error : Insufficient duration!\n\t \ |
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Target song's length is shorter than segment length.\n\t \ |
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Song name : {song_name}\n\t \ |
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Consider changing the 'segment_length' or song with sufficient duration" |
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if discard_last: |
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target_length = target_song.shape[-1] - target_song.shape[-1] % segment_length |
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target_song = target_song[:, :target_length] |
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else: |
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pad_length = segment_length - target_song.shape[-1] % segment_length |
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target_song = torch.cat((target_song, torch.zeros(2, pad_length)), axis=-1) |
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whole_batch_data = [] |
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batch_wise_data = [] |
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for cur_segment_idx in range(target_song.shape[-1]//segment_length): |
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batch_wise_data.append(target_song[..., cur_segment_idx*segment_length:(cur_segment_idx+1)*segment_length]) |
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if len(batch_wise_data)==self.args.batch_size: |
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whole_batch_data.append(torch.stack(batch_wise_data, dim=0)) |
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batch_wise_data = [] |
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if batch_wise_data: |
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whole_batch_data.append(torch.stack(batch_wise_data, dim=0)) |
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return whole_batch_data |
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def set_up_mastering(start_point_in_second=0, duration_in_second=30): |
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os.environ['MASTER_ADDR'] = '127.0.0.1' |
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os.environ["CUDA_VISIBLE_DEVICES"] = '0' |
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os.environ['MASTER_PORT'] = '8888' |
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def str2bool(v): |
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if v.lower() in ('yes', 'true', 't', 'y', '1'): |
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return True |
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elif v.lower() in ('no', 'false', 'f', 'n', '0'): |
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return False |
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else: |
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raise argparse.ArgumentTypeError('Boolean value expected.') |
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''' Configurations for music mixing style transfer ''' |
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currentdir = os.path.dirname(os.path.realpath(__file__)) |
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default_ckpt_path_enc = os.path.join(os.path.dirname(currentdir), 'weights', 'FXencoder_ps.pt') |
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default_ckpt_path_conv = os.path.join(os.path.dirname(currentdir), 'weights', 'MixFXcloner_ps.pt') |
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default_ckpt_path_master = os.path.join(os.path.dirname(currentdir), 'weights', 'MasterFXcloner_ps.pt') |
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default_norm_feature_path = os.path.join(os.path.dirname(currentdir), 'weights', 'musdb18_fxfeatures_eqcompimagegain.npy') |
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import argparse |
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import yaml |
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parser = argparse.ArgumentParser() |
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directory_args = parser.add_argument_group('Directory args') |
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directory_args.add_argument('--target_dir', type=str, default='./yt_dir/') |
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directory_args.add_argument('--output_dir', type=str, default=None, help='if no output_dir is specified (None), the results will be saved inside the target_dir') |
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directory_args.add_argument('--input_file_name', type=str, default='input') |
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directory_args.add_argument('--reference_file_name', type=str, default='reference') |
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directory_args.add_argument('--reference_file_name_2interpolate', type=str, default='reference_B') |
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directory_args.add_argument('--ckpt_path_enc', type=str, default=default_ckpt_path_enc) |
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directory_args.add_argument('--ckpt_path_conv', type=str, default=default_ckpt_path_master) |
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directory_args.add_argument('--precomputed_normalization_feature', type=str, default=default_norm_feature_path) |
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inference_args = parser.add_argument_group('Inference args') |
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inference_args.add_argument('--sample_rate', type=int, default=44100) |
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inference_args.add_argument('--segment_length', type=int, default=2**19) |
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inference_args.add_argument('--segment_length_ref', type=int, default=2**19) |
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inference_args.add_argument('--instruments', type=str2bool, default=["drums", "bass", "other", "vocals"], help='instrumental tracks to perform style transfer') |
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inference_args.add_argument('--stem_level_directory_name', type=str, default='separated') |
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inference_args.add_argument('--save_each_inst', type=str2bool, default=False) |
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inference_args.add_argument('--do_not_separate', type=str2bool, default=False) |
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inference_args.add_argument('--separation_model', type=str, default='htdemucs') |
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inference_args.add_argument('--normalize_input', type=str2bool, default=False) |
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inference_args.add_argument('--normalization_order', type=str2bool, default=['loudness', 'eq', 'compression', 'imager', 'loudness']) |
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inference_args.add_argument('--interpolation', type=str2bool, default=False) |
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inference_args.add_argument('--interpolate_segments', type=int, default=30) |
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device_args = parser.add_argument_group('Device args') |
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device_args.add_argument('--workers', type=int, default=1) |
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device_args.add_argument('--batch_size', type=int, default=1) |
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args = parser.parse_args() |
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with open(os.path.join(currentdir, 'configs.yaml'), 'r') as f: |
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configs = yaml.full_load(f) |
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args.cfg_encoder = configs['Effects_Encoder']['default'] |
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args.cfg_converter = configs['TCN']['default'] |
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return args |
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