""" file_name: intensity project_name: DBM created: 2020-20-07 """ import pandas as pd import numpy as np import glob import parselmouth import librosa from os.path import join import logging from dbm_lib.dbm_features.raw_features.util import util as ut logging.basicConfig(level=logging.INFO) logger=logging.getLogger() intensity_dir = 'audio/intensity' csv_ext = '_intensity.csv' error_txt = 'error: length less than 0.064' def intensity_score(path): """ Using parselmouth library fetching Intensity Args: path: (.wav) audio file location Returns: (list) list of Intensity for each voice frame """ sound_pat = parselmouth.Sound(path) intensity = sound_pat.to_intensity(time_step=.001) return intensity.values[0] def calc_intensity(video_uri, audio_file, out_loc, fl_name, r_config): """ Preparing Intensity matrix Args: audio_file: (.wav) parsed audio file out_loc: (str) Output directory for csv's """ intensity_frames = intensity_score(audio_file) df_intensity = pd.DataFrame(intensity_frames, columns=[r_config.aco_int]) df_intensity['Frames'] = df_intensity.index df_intensity['dbm_master_url'] = video_uri df_intensity[r_config.err_reason] = 'Pass'# will replace with threshold in future release logger.info('Saving Output file {} '.format(out_loc)) ut.save_output(df_intensity, out_loc, fl_name, intensity_dir, csv_ext) def empty_intensity(video_uri, out_loc, fl_name, r_config): """ Preparing empty Intensity matrix if something fails """ cols = ['Frames', r_config.aco_int, r_config.err_reason] out_val = [[np.nan, np.nan, error_txt]] df_int = pd.DataFrame(out_val, columns = cols) df_int['dbm_master_url'] = video_uri logger.info('Saving Output file {} '.format(out_loc)) ut.save_output(df_int, out_loc, fl_name, intensity_dir, csv_ext) def run_intensity(video_uri, out_dir, r_config): """ Processing all patient's for fetching Intensity ------------------- ------------------- Args: video_uri: video path; r_config: raw variable config object out_dir: (str) Output directory for processed output """ input_loc, out_loc, fl_name = ut.filter_path(video_uri, out_dir) aud_filter = glob.glob(join(input_loc, fl_name + '.wav')) if len(aud_filter)>0: audio_file = aud_filter[0] aud_dur = librosa.get_duration(filename=audio_file) if float(aud_dur) < 0.064: logger.info('Output file {} size is less than 0.064sec'.format(audio_file)) empty_intensity(video_uri, out_loc, fl_name, r_config) return calc_intensity(video_uri, audio_file, out_loc, fl_name, r_config)