I'm doing and application that do the fallowing:

1:If some noise is detected by the microphone, its starts to record audio, until no noise is detected. After it, the audio is recorded to a wav file.

2:I have to detect some words on it. There are only, 5 to 10 words to detect.

So far, my code only does the first part (detect noise and record audio). Now, I have a list with the following words: help, please, yes, no, could, you, after, tomorrow. I need an offline way to detect if my sound contains these words. Is this possible? How can I do that? I'm using linux and there is no way to change my operational system to windows or use virtual machine.

I'm thinking to use the sound's spectrogram, create a train database and use some classifier to predict. For example, this is a spectrogram of a word. Is this a good technique to use?


  • stackoverflow.com/questions/3644129/… maybe this helps – timgeb Feb 6 '16 at 21:47
  • You are not showing any code, nor do you demonstrate any search effort. As it is, your question reads like a thinly veiled request for a software recommendation, which is off-topic here; and if it's not, it is certainly much too broad. I have conceded with the previous close vote as "too broad". If you can edit your question to avoid both of these problems, you are also much more likely to receive genuinely helpful answers. Please review the help center for more information about Stack Overflow. – tripleee Feb 7 '16 at 8:41

You can use pocketsphinx from python, install with pip install pocketsphinx. Code looks like this:

import sys, os
from pocketsphinx.pocketsphinx import *
from sphinxbase.sphinxbase import *

modeldir = "../../../model"
datadir = "../../../test/data"

# Create a decoder with certain model
config = Decoder.default_config()
config.set_string('-hmm', os.path.join(modeldir, 'en-us/en-us'))
config.set_string('-dict', os.path.join(modeldir, 'en-us/cmudict-en-us.dict'))
config.set_string('-kws', 'command.list')

# Open file to read the data
stream = open(os.path.join(datadir, "goforward.raw"), "rb")

# Alternatively you can read from microphone
# import pyaudio
# p = pyaudio.PyAudio()
# stream = p.open(format=pyaudio.paInt16, channels=1, rate=16000, input=True, frames_per_buffer=1024)
# stream.start_stream()

# Process audio chunk by chunk. On keyword detected perform action and restart search
decoder = Decoder(config)
while True:
    buf = stream.read(1024)
    if buf:
         decoder.process_raw(buf, False, False)
    if decoder.hyp() != None:
        print ([(seg.word, seg.prob, seg.start_frame, seg.end_frame) for seg in decoder.seg()])
        print ("Detected keyword, restarting search")

The list of keywords should look like this:

  forward /1e-1/
  down /1e-1/
  other phrase /1e-20/

The numbers are thresholds for detection

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