There is actually an example on how to do this in the Speech API in
Using Time offsets(TimeStamps):
Time offset (timestamp) values can be included in the response text
for your recognize request. Time offset values show the beginning and
end of each spoken word that is recognized in the supplied audio. A
time offset value represents the amount of time that has elapsed from
the beginning of the audio, in increments of 100ms.
Time offsets are especially useful for analyzing longer audio files,
where you may need to search for a particular word in the recognized
text and locate it (seek) in the original audio. Time offsets are
supported for all our recognition methods: recognize,
streamingrecognize, and longrunningrecognize. See below for an example
of longrunningrecognize.....
This is the code sample for Python:
def transcribe_gcs_with_word_time_offsets(gcs_uri):
"""Transcribe the given audio file asynchronously and output the word time
offsets."""
from google.cloud import speech
from google.cloud.speech import enums
from google.cloud.speech import types
client = speech.SpeechClient()
audio = types.RecognitionAudio(uri=gcs_uri)
config = types.RecognitionConfig(
encoding=enums.RecognitionConfig.AudioEncoding.FLAC,
sample_rate_hertz=16000,
language_code='en-US',
enable_word_time_offsets=True)
operation = client.long_running_recognize(config, audio)
print('Waiting for operation to complete...')
result = operation.result(timeout=90)
for result in result.results:
alternative = result.alternatives[0]
print('Transcript: {}'.format(alternative.transcript))
print('Confidence: {}'.format(alternative.confidence))
for word_info in alternative.words:
word = word_info.word
start_time = word_info.start_time
end_time = word_info.end_time
print('Word: {}, start_time: {}, end_time: {}'.format(
word,
start_time.seconds + start_time.nanos * 1e-9,
end_time.seconds + end_time.nanos * 1e-9))
Hope this helps.