import os import random import pandas as pd import shutil import uuid # Provided file folder addresses (replace with actual paths) common_dir = "vitsGPT/vits/" folder_paths = [ f"{common_dir}DUMMY5/gt_test_wav/", f"{common_dir}ori_vits/logs/emovdb_base_pretrained16/G_150000/model_test_wav/", f"{common_dir}emo_vits/logs/emovdb_emo_add_ave_pretrained16/G_150000/model_test_wav/", f"{common_dir}emo_vits/logs/emovdb_emo_add_bert_cls_pretrained16/G_150000/model_test_wav/", f"{common_dir}sem_vits/logs/emovdb_sem_mat_text_pretrained16/G_150000/model_test_wav/", f"{common_dir}sem_vits/logs/emovdb_sem_mat_phone_pretrained16/G_150000/model_test_wav/", f"{common_dir}sem_vits/logs/emovdb_sem_mat_bert_text_pretrained16/G_150000/model_test_wav/", f"{common_dir}sem_vits/logs/emovdb_sem_mat_bert_phone_pretrained16/G_150000/model_test_wav/", ] # Identifiers for each folder folder_identifiers = [ "gt", "ori", "emo_ave", "emo_bert_cls", "sem_text", "sem_phone", "sem_bert_text", "sem_bert_phone" ] # Map folders to their identifiers folders = dict(zip(folder_paths, folder_identifiers)) # Provided file names to be extracted from each folder # files_to_extract = [ # "amused_46-56_0056.wav", # "amused_57-84_0068.wav", # "amused_57-84_0076.wav", # "amused_85-112_0094.wav", # "angry_29-56_0047.wav", # "disgustededed_113-140_0114.wav", # "disgustededed_85-112_0086.wav", # "neutral_57-84_0057.wav", # "neutral_57-84_0079.wav", # "sleepy_29-56_0049.wav", # ] # Extract all files from the first folder files_to_extract = os.listdir(folder_paths[0]) # 0. Create human_mos directory if it doesn't exist human_mos_dir = os.path.join(common_dir, "human_evaluation_emovdb_all/human_mos_wavs") if not os.path.exists(human_mos_dir): os.makedirs(human_mos_dir) # 1. Check if every folder has the same number and names of files reference_files = set(os.listdir(next(iter(folders)))) consistent = all(set(os.listdir(folder)) == reference_files for folder in folders.keys()) if not consistent: raise ValueError("Folders do not have consistent file names or counts.") # 2. Extract, rename, and copy files from each folder renamed_files_paths = {} for orig in files_to_extract: for folder, identifier in folders.items(): new_name = f"{identifier}-{orig}" src = os.path.join(folder, orig) # Check if the file exists before trying to copy if not os.path.exists(src): print(f"File {src} does not exist!") continue dst = os.path.join(human_mos_dir, new_name) shutil.copy(src, dst) renamed_files_paths[src] = new_name print(f"File {src} copied to {dst}") # Create dataframes and save them to Excel df_named_score = pd.DataFrame({ "original_file_path": list(renamed_files_paths.keys()), "innominated_file_path": list(renamed_files_paths.values()) }) df_innominated_score = pd.DataFrame({ "file_name": list(renamed_files_paths.values()), "MOS_score": "", }) # Save to excel df_named_score.to_excel("emovdb_named_mos_score.xlsx", index=False) df_innominated_score.to_excel("emovdb_innominated_mos_score.xlsx", index=False) print("Files created and copied successfully.") # Organize the output Excel file for ease of annotator entry # Load the original innominated_score.xlsx df_to_sort = pd.read_excel("emovdb_innominated_mos_score.xlsx") # Extract the number from the filename for each row df_to_sort['sort_key'] = df_to_sort['file_name'].str.extract('(\d+)').astype(int) # Sort the dataframe by this new column df_sorted = df_to_sort.sort_values(by="sort_key") # Drop the 'sort_key' column as it's no longer needed df_sorted = df_sorted.drop(columns=['sort_key']) # Save the sorted dataframe as scoring.xlsx df_sorted.to_excel("emovdb_mos_scoring.xlsx", index=False) print("File scoring.xlsx created and sorted successfully.")