I have a Python script using the speech_recognition package to recognize speech and return the text of what was spoken. The transcription has a few seconds delay, however. Is there another way to write this script to return each word as it is spoken? I have another script to do this, using the pysphinx package, but the results are wildly inaccurate.

Install dependencies:

pip install SpeechRecognition
pip install pocketsphinx

Script 1 - Delayed speech-to-text:

import speech_recognition as sr  

# obtain audio from the microphone  
r = sr.Recognizer()  
with sr.Microphone() as source:  
    print("Please wait. Calibrating microphone...")  
    # listen for 5 seconds and create the ambient noise energy level  
    r.adjust_for_ambient_noise(source, duration=5)  
    print("Say something!")  
    audio = r.listen(source)  

    # recognize speech using Sphinx  
        print("Sphinx thinks you said '" + r.recognize_sphinx(audio) + "'")  
    except sr.UnknownValueError:  
        print("Sphinx could not understand audio")  
    except sr.RequestError as e:  
        print("Sphinx error; {0}".format(e))

Script 2 - Immediate albeit inaccurate speech-to-text:

import os
from pocketsphinx import LiveSpeech, get_model_path

model_path = get_model_path()
speech = LiveSpeech(
    hmm=os.path.join(model_path, 'en-us'),
    lm=os.path.join(model_path, 'en-us.lm.bin'),
    dic=os.path.join(model_path, 'cmudict-en-us.dict')
for phrase in speech:
  • Most likely you run this on something like raspberry-pi which is not powerful enough to run large vocabulary continuous speech recognition with large dictionary. – Nikolay Shmyrev Nov 14 '17 at 17:14
  • what-if you listen for a 1s and then print the word, there might be some loss but it will return per-word, would that work? – Aqua 4 Jan 21 '20 at 9:34
  • 1
    are you sure that both systems are using the same language model? – SuperKogito Jan 23 '20 at 17:54

If you happen to have a CUDA enabled GPU then you can try Mozilla's DeepSpeech GPU library. They also have a CPU version in case you don't have a CUDA enabled GPU. A CPU transcribes an audio file using DeepSpeech in 1.3x time whereas, on GPU, the speed is 0.3x ie it transcribes a 1-second audio file in 0.33 seconds. Quickstart:

# Create and activate a virtualenv
virtualenv -p python3 $HOME/tmp/deepspeech-gpu-venv/
source $HOME/tmp/deepspeech-gpu-venv/bin/activate

# Install DeepSpeech CUDA enabled package
pip3 install deepspeech-gpu

# Transcribe an audio file.
deepspeech --model deepspeech-0.6.1-models/output_graph.pbmm --lm deepspeech- 
0.6.1-models/lm.binary --trie deepspeech-0.6.1-models/trie --audio audio/2830- 

Some important notes- Deepspeech-gpu has some dependencies like tensorflow, CUDA, cuDNN etc. So check out their github repo for more details -https://github.com/mozilla/DeepSpeech

  • What about something that is not hardware related? – Damian-Teodor Beleș Jan 27 '20 at 7:44
  • @Damian-TeodorBeleș Can you please elaborate more? I am not sure about what you are asking. – Glitch101 Jan 28 '20 at 11:28
  • 1
    What if this doesn't hold: "If you happen to have a CUDA enabled GPU then you can try Mozilla's DeepSpeech."? – Damian-Teodor Beleș Jan 28 '20 at 17:06
  • DeepSpeech can run on a CPU as well. It's just that doing inference is faster on the GPU than the CPU. Other than that, it's all the same. – Glitch101 Jan 29 '20 at 18:36
  • 1
    Ok, I see, thanks, but which is the "live" part in an "audio file"? – Damian-Teodor Beleș Jan 30 '20 at 9:57

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.