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import re | |
from thefuzz import fuzz | |
import numpy as np | |
def match_mask_and_transcript(split_punct, transcript, classification): | |
""" | |
Input: | |
split_punct: the punctuated text, split on ?/!/.\s, | |
transcript: original transcript with timestamps | |
classification: classification object (list of numbers 0,1) | |
Output: times | |
""" | |
# Get the sponsored part | |
sponsored_segment = [] | |
for i, val in enumerate(classification): | |
if val == 1: | |
sponsored_segment.append(split_punct[i]) | |
segment = " ".join(sponsored_segment) | |
sim_scores = list() | |
# Check the similarity scores between the sponsored part and the transcript parts | |
for elem in transcript: | |
sim_scores.append(fuzz.partial_ratio(segment, elem["text"])) | |
# Get the scores and check if they are above mean + 2*stdev | |
scores = np.array(sim_scores) | |
timestamp_mask = (scores > np.mean(scores) + np.std(scores) * 2).astype(int) | |
timestamps = [ | |
(transcript[i]["start"], transcript[i]["duration"]) | |
for i, elem in enumerate(timestamp_mask) | |
if elem == 1 | |
] | |
# Get the timestamp segments | |
times = [] | |
current = -1 | |
current_time = 0 | |
for elem in timestamps: | |
# Threshold of 5 to see if it is a jump to another segment (also to make sure smaller segments are added together | |
if elem[0] > (current_time + 15): | |
current += 1 | |
times.append((elem[0], elem[0] + elem[1])) | |
current_time = elem[0] + elem[1] | |
else: | |
times[current] = (times[current][0], elem[0] + elem[1]) | |
current_time = elem[0] + elem[1] | |
return_times = [x for x in times if (x[1] - x[0]) > 10] | |
return return_times, timestamps | |