This is a Fork of SpeechRecognition. I have not personally written any code for it, but since no PRs have been merged into the main project in at least 2 years...I figured I would fork it, so I could merge and use some of them.
If you open a PR on this repo, I'm likely to merge it, providing it doesn't break something else. I don't claim to be an expert with any of the pieces used, but I'm hoping others can benefit from an itch I scratched.
Library for performing speech recognition, with support for several engines and APIs, online and offline.
UPDATE 2022-02-09: Hey everyone! This project started as a tech demo, but these days it needs more time than I have to keep up with all the PRs and issues. Therefore, I'd like to put out an open invite for collaborators - just reach out at [email protected] if you're interested!
Speech recognition engine/API support:
- CMU Sphinx (works offline)
- Google Speech Recognition
- Google Cloud Speech API
- Wit.ai
- Microsoft Azure Speech
- Microsoft Bing Voice Recognition (Deprecated)
- Houndify API
- IBM Speech to Text
- Snowboy Hotword Detection (works offline)
- Tensorflow
- Vosk API (works offline)
Quickstart: pip install speech-recognition-fork
. See the "Installing" section for more details.
To quickly try it out, run python -m speech_recognition
after installing (which additionally requires the pyaudio
package).
Project links:
The library reference documents every publicly accessible object in the library.
See Notes on using PocketSphinx for information about installing languages, compiling PocketSphinx, and building language packs from online resources.
You have to install Vosk models for using Vosk. Here are models avaiable. You have to place them in models folder of your project, like "your-project-folder/models/your-vosk-model"
See the examples directory in the repository root for usage examples:
- Recognize speech input from the microphone
- Transcribe an audio file
- Save audio data to an audio file
- Show extended recognition results
- Calibrate the recognizer energy threshold for ambient noise levels (see
recognizer_instance.energy_threshold
for details) - Listening to a microphone in the background
- Various other useful recognizer features
First, make sure you have all the requirements listed in the "Requirements" section.
The easiest way to install this is using pip install speech-recognition-fork
.
Otherwise, download the source distribution from PyPI, and extract the archive.
In the folder, run python setup.py install
.
To use all of the functionality of the library, you should have:
- Python 2.6, 2.7, or 3.3+ (required)
- PyAudio 0.2.11+ (required only if you use microphone input,
Microphone
) - PocketSphinx (required only if you use the Sphinx recognizer,
recognizer_instance.recognize_sphinx
) - Google API Client Library for Python (required only if you use the Google Cloud Speech API,
recognizer_instance.recognize_google_cloud
) - FLAC encoder (required only if the system is not x86-based Windows/Linux/OS X)
- Vosk (required only if you need to use Vosk API speech recognition
recognizer_instance.recognize_vosk
)
The following requirements are optional, but can improve or extend functionality in some situations:
- On Python 2, and only on Python 2, some functions (like
recognizer_instance.recognize_bing
) will run slower if you do not have Monotonic for Python 2 installed. - If using CMU Sphinx, you may want to install additional language packs to support languages like International French or Mandarin Chinese.
The following sections go over the details of each requirement.
PyAudio is required if and only if you want to use microphone input (Microphone
). PyAudio version 0.2.11+ is required, as earlier versions have known memory management bugs when recording from microphones in certain situations.
If not installed, everything in the library will still work, except attempting to instantiate a Microphone
object will raise an AttributeError
.
The installation instructions on the PyAudio website are quite good - for convenience, they are summarized below:
- On Windows, install PyAudio using Pip: execute
pip install pyaudio
in a terminal. - On Debian-derived Linux distributions (like Ubuntu and Mint), install PyAudio using APT: execute
sudo apt-get install python-pyaudio python3-pyaudio
in a terminal. - If the version in the repositories is too old, install the latest release using Pip: execute
sudo apt-get install portaudio19-dev python-all-dev python3-all-dev && sudo pip install pyaudio
(replacepip
withpip3
if using Python 3).
- If the version in the repositories is too old, install the latest release using Pip: execute
- On Debian-derived Linux distributions (like Ubuntu and Mint), install PyAudio using APT: execute
- On OS X, install PortAudio using Homebrew:
brew install portaudio
. Then, install PyAudio using Pip:pip install pyaudio
. - On other POSIX-based systems, install the
portaudio19-dev
andpython-all-dev
(orpython3-all-dev
if using Python 3) packages (or their closest equivalents) using a package manager of your choice, and then install PyAudio using Pip:pip install pyaudio
(replacepip
withpip3
if using Python 3).
PyAudio wheel packages for common 64-bit Python versions on Windows and Linux are included for convenience, under the third-party/
directory in the repository root. To install, simply run pip install wheel
followed by pip install ./third-party/WHEEL_FILENAME
(replace pip
with pip3
if using Python 3) in the repository root directory.
PocketSphinx-Python is required if and only if you want to use the Sphinx recognizer (recognizer_instance.recognize_sphinx
).
PocketSphinx-Python wheel packages for 64-bit Python 2.7, 3.4, and 3.5 on Windows are included for convenience, under the third-party/
directory. To install, simply run pip install wheel
followed by pip install ./third-party/WHEEL_FILENAME
(replace pip
with pip3
if using Python 3) in the SpeechRecognition folder.
On Linux and other POSIX systems (such as OS X), follow the instructions under "Building PocketSphinx-Python from source" in Notes on using PocketSphinx for installation instructions.
Note that the versions available in most package repositories are outdated and will not work with the bundled language data. Using the bundled wheel packages or building from source is recommended.
See Notes on using PocketSphinx for information about installing languages, compiling PocketSphinx, and building language packs from online resources. This document is also included under reference/pocketsphinx.rst
.
Vosk API is required if and only if you want to use Vosk recognizer (recognizer_instance.recognize_vosk
).
You can install it with python3 -m pip install vosk
.
You also have to install Vosk Models:
Here are models avaiable for download. You have to place them in models folder of your project, like "your-project-folder/models/your-vosk-model"
Google Cloud Speech library for Python is required if and only if you want to use the Google Cloud Speech API (recognizer_instance.recognize_google_cloud
).
If not installed, everything in the library will still work, except calling recognizer_instance.recognize_google_cloud
will raise an RequestError
.
According to the official installation instructions, the recommended way to install this is using Pip: execute pip install google-cloud-speech
(replace pip
with pip3
if using Python 3).
A FLAC encoder is required to encode the audio data to send to the API. If using Windows (x86 or x86-64), OS X (Intel Macs only, OS X 10.6 or higher), or Linux (x86 or x86-64), this is already bundled with this library - you do not need to install anything.
Otherwise, ensure that you have the flac
command line tool, which is often available through the system package manager. For example, this would usually be sudo apt-get install flac
on Debian-derivatives, or brew install flac
on OS X with Homebrew.
On Python 2, and only on Python 2, if you do not install the Monotonic for Python 2 library, some functions will run slower than they otherwise could (though everything will still work correctly).
On Python 3, that library's functionality is built into the Python standard library, which makes it unnecessary.
This is because monotonic time is necessary to handle cache expiry properly in the face of system time changes and other time-related issues. If monotonic time functionality is not available, then things like access token requests will not be cached.
To install, use Pip: execute pip install monotonic
in a terminal.
Try increasing the recognizer_instance.energy_threshold
property. This is basically how sensitive the recognizer is to when recognition should start. Higher values mean that it will be less sensitive, which is useful if you are in a loud room.
This value depends entirely on your microphone or audio data. There is no one-size-fits-all value, but good values typically range from 50 to 4000.
Also, check on your microphone volume settings. If it is too sensitive, the microphone may be picking up a lot of ambient noise. If it is too insensitive, the microphone may be rejecting speech as just noise.
The recognizer_instance.energy_threshold
property is probably set to a value that is too high to start off with, and then being adjusted lower automatically by dynamic energy threshold adjustment. Before it is at a good level, the energy threshold is so high that speech is just considered ambient noise.
The solution is to decrease this threshold, or call recognizer_instance.adjust_for_ambient_noise
beforehand, which will set the threshold to a good value automatically.
Try setting the recognition language to your language/dialect. To do this, see the documentation for recognizer_instance.recognize_sphinx
, recognizer_instance.recognize_google
, recognizer_instance.recognize_wit
, recognizer_instance.recognize_bing
, recognizer_instance.recognize_api
, recognizer_instance.recognize_houndify
, and recognizer_instance.recognize_ibm
.
For example, if your language/dialect is British English, it is better to use "en-GB"
as the language rather than "en-US"
.
The recognizer hangs on recognizer_instance.listen
; specifically, when it's calling Microphone.MicrophoneStream.read
.
This usually happens when you're using a Raspberry Pi board, which doesn't have audio input capabilities by itself. This causes the default microphone used by PyAudio to simply block when we try to read it. If you happen to be using a Raspberry Pi, you'll need a USB sound card (or USB microphone).
Once you do this, change all instances of Microphone()
to Microphone(device_index=MICROPHONE_INDEX)
, where MICROPHONE_INDEX
is the hardware-specific index of the microphone.
To figure out what the value of MICROPHONE_INDEX
should be, run the following code:
import speech_recognition as sr
for index, name in enumerate(sr.Microphone.list_microphone_names()):
print("Microphone with name \"{1}\" found for `Microphone(device_index={0})`".format(index, name))
This will print out something like the following:
Microphone with name "HDA Intel HDMI: 0 (hw:0,3)" found for `Microphone(device_index=0)` Microphone with name "HDA Intel HDMI: 1 (hw:0,7)" found for `Microphone(device_index=1)` Microphone with name "HDA Intel HDMI: 2 (hw:0,8)" found for `Microphone(device_index=2)` Microphone with name "Blue Snowball: USB Audio (hw:1,0)" found for `Microphone(device_index=3)` Microphone with name "hdmi" found for `Microphone(device_index=4)` Microphone with name "pulse" found for `Microphone(device_index=5)` Microphone with name "default" found for `Microphone(device_index=6)`
Now, to use the Snowball microphone, you would change Microphone()
to Microphone(device_index=3)
.
As the error says, the program doesn't know which microphone to use.
To proceed, either use Microphone(device_index=MICROPHONE_INDEX, ...)
instead of Microphone(...)
, or set a default microphone in your OS. You can obtain possible values of MICROPHONE_INDEX
using the code in the troubleshooting entry right above this one.
When you're using Python 2, and your language uses non-ASCII characters, and the terminal or file-like object you're printing to only supports ASCII, an error is raised when trying to write non-ASCII characters.
This is because in Python 2, recognizer_instance.recognize_sphinx
, recognizer_instance.recognize_google
, recognizer_instance.recognize_wit
, recognizer_instance.recognize_bing
, recognizer_instance.recognize_api
, recognizer_instance.recognize_houndify
, and recognizer_instance.recognize_ibm
return unicode strings (u"something"
) rather than byte strings ("something"
). In Python 3, all strings are unicode strings.
To make printing of unicode strings work in Python 2 as well, replace all print statements in your code of the following form:
print SOME_UNICODE_STRING
With the following:
print SOME_UNICODE_STRING.encode("utf8")
This change, however, will prevent the code from working in Python 3.
The program doesn't run when compiled with PyInstaller.
As of PyInstaller version 3.0, SpeechRecognition is supported out of the box. If you're getting weird issues when compiling your program using PyInstaller, simply update PyInstaller.
You can easily do this by running pip install --upgrade pyinstaller
.
On Ubuntu/Debian, I get annoying output in the terminal saying things like "bt_audio_service_open: [...] Connection refused" and various others.
The "bt_audio_service_open" error means that you have a Bluetooth audio device, but as a physical device is not currently connected, we can't actually use it - if you're not using a Bluetooth microphone, then this can be safely ignored. If you are, and audio isn't working, then double check to make sure your microphone is actually connected. There does not seem to be a simple way to disable these messages.
For errors of the form "ALSA lib [...] Unknown PCM", see this StackOverflow answer. Basically, to get rid of an error of the form "Unknown PCM cards.pcm.rear", simply comment out pcm.rear cards.pcm.rear
in /usr/share/alsa/alsa.conf
, ~/.asoundrc
, and /etc/asound.conf
.
For "jack server is not running or cannot be started" or "connect(2) call to /dev/shm/jack-1000/default/jack_0 failed (err=No such file or directory)" or "attempt to connect to server failed", these are caused by ALSA trying to connect to JACK, and can be safely ignored. I'm not aware of any simple way to turn those messages off at this time, besides entirely disabling printing while starting the microphone.
On OS X, I get a ChildProcessError
saying that it couldn't find the system FLAC converter, even though it's installed.
Installing FLAC for OS X directly from the source code will not work, since it doesn't correctly add the executables to the search path.
Installing FLAC using Homebrew ensures that the search path is correctly updated. First, ensure you have Homebrew, then run brew install flac
to install the necessary files.
To hack on this library, first make sure you have all the requirements listed in the "Requirements" section.
- Most of the library code lives in
speech_recognition/__init__.py
. - Examples live under the
examples/
directory, and the demo script lives inspeech_recognition/__main__.py
. - The FLAC encoder binaries are in the
speech_recognition/
directory. - Documentation can be found in the
reference/
directory. - Third-party libraries, utilities, and reference material are in the
third-party/
directory.
To install/reinstall the library locally, run python setup.py install
in the project root directory.
Before a release, the version number is bumped in README.rst
and speech_recognition/__init__.py
. Version tags are then created using git config gpg.program gpg2 && git config user.signingkey DB45F6C431DE7C2DCD99FF7904882258A4063489 && git tag -s VERSION_GOES_HERE -m "Version VERSION_GOES_HERE"
.
Releases are done by running make-release.sh VERSION_GOES_HERE
to build the Python source packages, sign them, and upload them to PyPI.
To run all the tests:
python -m unittest discover --verbose
Testing is also done automatically by TravisCI, upon every push. To set up the environment for offline/local Travis-like testing on a Debian-like system:
sudo docker run --volume "$(pwd):/speech_recognition" --interactive --tty quay.io/travisci/travis-python:latest /bin/bash
su - travis && cd /speech_recognition
sudo apt-get update && sudo apt-get install swig libpulse-dev
pip install --user pocketsphinx monotonic && pip install --user flake8 rstcheck && pip install --user -e .
python -m unittest discover --verbose # run unit tests
python -m flake8 --ignore=E501,E701 speech_recognition tests examples setup.py # ignore errors for long lines and multi-statement lines
python -m rstcheck README.rst reference/*.rst # ensure RST is well-formed
The included flac-win32
executable is the official FLAC 1.3.2 32-bit Windows binary.
The included flac-linux-x86
and flac-linux-x86_64
executables are built from the FLAC 1.3.2 source code with Manylinux to ensure that it's compatible with a wide variety of distributions.
The built FLAC executables should be bit-for-bit reproducible. To rebuild them, run the following inside the project directory on a Debian-like system:
# download and extract the FLAC source code
cd third-party
sudo apt-get install --yes docker.io
# build FLAC inside the Manylinux i686 Docker image
tar xf flac-1.3.2.tar.xz
sudo docker run --tty --interactive --rm --volume "$(pwd):/root" quay.io/pypa/manylinux1_i686:latest bash
cd /root/flac-1.3.2
./configure LDFLAGS=-static # compiler flags to make a static build
make
exit
cp flac-1.3.2/src/flac/flac ../speech_recognition/flac-linux-x86 && sudo rm -rf flac-1.3.2/
# build FLAC inside the Manylinux x86_64 Docker image
tar xf flac-1.3.2.tar.xz
sudo docker run --tty --interactive --rm --volume "$(pwd):/root" quay.io/pypa/manylinux1_x86_64:latest bash
cd /root/flac-1.3.2
./configure LDFLAGS=-static # compiler flags to make a static build
make
exit
cp flac-1.3.2/src/flac/flac ../speech_recognition/flac-linux-x86_64 && sudo rm -r flac-1.3.2/
The included flac-mac
executable is extracted from xACT 2.39, which is a frontend for FLAC 1.3.2 that conveniently includes binaries for all of its encoders. Specifically, it is a copy of xACT 2.39/xACT.app/Contents/Resources/flac
in xACT2.39.zip
.
Uberi <[email protected]> (Anthony Zhang) bobsayshilol arvindch <[email protected]> (Arvind Chembarpu) kevinismith <[email protected]> (Kevin Smith) haas85 DelightRun <[email protected]> maverickagm kamushadenes <[email protected]> (Kamus Hadenes) sbraden <[email protected]> (Sarah Braden) tb0hdan (Bohdan Turkynewych) Thynix <[email protected]> (Steve Dougherty) beeedy <[email protected]> (Broderick Carlin)
Please report bugs and suggestions at the issue tracker!
How to cite this library (APA style):
Zhang, A. (2017). Speech Recognition (Version 3.8) [Software]. Available from https://github.com/Uberi/speech_recognition#readme.
How to cite this library (Chicago style):
Zhang, Anthony. 2017. Speech Recognition (version 3.8).
Also check out the Python Baidu Yuyin API, which is based on an older version of this project, and adds support for Baidu Yuyin. Note that Baidu Yuyin is only available inside China.
Copyright 2014-2017 Anthony Zhang (Uberi). The source code for this library is available online at GitHub.
SpeechRecognition is made available under the 3-clause BSD license. See LICENSE.txt
in the project's root directory for more information.
For convenience, all the official distributions of SpeechRecognition already include a copy of the necessary copyright notices and licenses. In your project, you can simply say that licensing information for SpeechRecognition can be found within the SpeechRecognition README, and make sure SpeechRecognition is visible to users if they wish to see it.
SpeechRecognition distributes source code, binaries, and language files from CMU Sphinx. These files are BSD-licensed and redistributable as long as copyright notices are correctly retained. See speech_recognition/pocketsphinx-data/*/LICENSE*.txt
and third-party/LICENSE-Sphinx.txt
for license details for individual parts.
SpeechRecognition distributes source code and binaries from PyAudio. These files are MIT-licensed and redistributable as long as copyright notices are correctly retained. See third-party/LICENSE-PyAudio.txt
for license details.
SpeechRecognition distributes binaries from FLAC - speech_recognition/flac-win32.exe
, speech_recognition/flac-linux-x86
, and speech_recognition/flac-mac
. These files are GPLv2-licensed and redistributable, as long as the terms of the GPL are satisfied. The FLAC binaries are an aggregate of separate programs, so these GPL restrictions do not apply to the library or your programs that use the library, only to FLAC itself. See LICENSE-FLAC.txt
for license details.