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This sample shows how to integrate the Azure Speech service into a sample React application. This sample shows design pattern examples for authentication token exchange and management, as well as capturing audio from a microphone or file for speech-to-text conversions.

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React Speech service sample app

This sample shows how to integrate the Azure Speech service into a sample React application. This sample shows design pattern examples for authentication token exchange and management, as well as capturing audio from a microphone or file for speech-to-text conversions.

Prerequisites

  1. This article assumes that you have an Azure account and Speech service subscription. If you don't have an account and subscription, try the Speech service for free.
  2. Ensure you have Node.js installed.

How to run the app

  1. Clone this repo, then change directory to the project root and run npm install to install dependencies.
  2. Add your Azure Speech key and region to the .env file, replacing the placeholder text.
  3. To run the Express server and React app together, run npm run dev.

Change recognition language

To change the source recognition language, change the locale strings in App.js lines 32 and 66, which sets the recognition language property on the SpeechConfig object.

speechConfig.speechRecognitionLanguage = 'en-US'

For a full list of supported locales, see the language support article.

Speech-to-text from microphone

To convert speech-to-text using a microphone, run the app and then click Convert speech to text from your mic.. This will prompt you for access to your microphone, and then listen for you to speak. The following function sttFromMic in App.js contains the implementation.

async sttFromMic() {
    const tokenObj = await getTokenOrRefresh();
    const speechConfig = speechsdk.SpeechConfig.fromAuthorizationToken(tokenObj.authToken, tokenObj.region);
    speechConfig.speechRecognitionLanguage = 'en-US';
    
    const audioConfig = speechsdk.AudioConfig.fromDefaultMicrophoneInput();
    const recognizer = new speechsdk.SpeechRecognizer(speechConfig, audioConfig);

    this.setState({
        displayText: 'speak into your microphone...'
    });

    recognizer.recognizeOnceAsync(result => {
        let displayText;
        if (result.reason === ResultReason.RecognizedSpeech) {
            displayText = `RECOGNIZED: Text=${result.text}`
        } else {
            displayText = 'ERROR: Speech was cancelled or could not be recognized. Ensure your microphone is working properly.';
        }

        this.setState({
            displayText: displayText
        });
    });
}

Running speech-to-text from a microphone is done by creating an AudioConfig object and using it with the recognizer.

const audioConfig = speechsdk.AudioConfig.fromDefaultMicrophoneInput();
const recognizer = new speechsdk.SpeechRecognizer(speechConfig, audioConfig);

Speech-to-text from file

To convert speech-to-text from an audio file, run the app and then click Convert speech to text from an audio file.. This will open a file browser and allow you to select an audio file. The following function fileChange is bound to an event handler that detects the file change.

async fileChange(event) {
    const audioFile = event.target.files[0];
    console.log(audioFile);
    const fileInfo = audioFile.name + ` size=${audioFile.size} bytes `;

    this.setState({
        displayText: fileInfo
    });

    const tokenObj = await getTokenOrRefresh();
    const speechConfig = speechsdk.SpeechConfig.fromAuthorizationToken(tokenObj.authToken, tokenObj.region);
    speechConfig.speechRecognitionLanguage = 'en-US';

    const audioConfig = speechsdk.AudioConfig.fromWavFileInput(audioFile);
    const recognizer = new speechsdk.SpeechRecognizer(speechConfig, audioConfig);

    recognizer.recognizeOnceAsync(result => {
        let displayText;
        if (result.reason === ResultReason.RecognizedSpeech) {
            displayText = `RECOGNIZED: Text=${result.text}`
        } else {
            displayText = 'ERROR: Speech was cancelled or could not be recognized. Ensure your microphone is working properly.';
        }

        this.setState({
            displayText: fileInfo + displayText
        });
    });
}

You need the audio file as a JavaScript File object, so you can grab it directly off the event target using const audioFile = event.target.files[0];. Next, you use the file to create the AudioConfig and then pass it to the recognizer.

const audioConfig = speechsdk.AudioConfig.fromWavFileInput(audioFile);
const recognizer = new speechsdk.SpeechRecognizer(speechConfig, audioConfig);

Token exchange process

This sample application shows an example design pattern for retrieving and managing tokens, a common task when using the Speech JavaScript SDK in a browser environment. A simple Express back-end is implemented in the same project under server/index.js, which abstracts the token retrieval process.

The reason for this design is to prevent your speech key from being exposed on the front-end, since it can be used to make calls directly to your subscription. By using an ephemeral token, you are able to protect your speech key from being used directly. To get a token, you use the Speech REST API and make a call using your speech key and region. In the Express part of the app, this is implemented in index.js behind the endpoint /api/get-speech-token, which the front-end uses to get tokens.

app.get('/api/get-speech-token', async (req, res, next) => {
    res.setHeader('Content-Type', 'application/json');
    const speechKey = process.env.SPEECH_KEY;
    const speechRegion = process.env.SPEECH_REGION;

    if (speechKey === 'paste-your-speech-key-here' || speechRegion === 'paste-your-speech-region-here') {
        res.status(400).send('You forgot to add your speech key or region to the .env file.');
    } else {
        const headers = { 
            headers: {
                'Ocp-Apim-Subscription-Key': speechKey,
                'Content-Type': 'application/x-www-form-urlencoded'
            }
        };

        try {
            const tokenResponse = await axios.post(`https://${speechRegion}.api.cognitive.microsoft.com/sts/v1.0/issueToken`, null, headers);
            res.send({ token: tokenResponse.data, region: speechRegion });
        } catch (err) {
            res.status(401).send('There was an error authorizing your speech key.');
        }
    }
});

In the request, you create a Ocp-Apim-Subscription-Key header, and pass your speech key as the value. Then you make a request to the issueToken endpoint for your region, and an authorization token is returned. In a production application, this endpoint returning the token should be restricted by additional user authentication whenever possible.

On the front-end, token_util.js contains the helper function getTokenOrRefresh that is used to manage the refresh and retrieval process.

export async function getTokenOrRefresh() {
    const cookie = new Cookie();
    const speechToken = cookie.get('speech-token');

    if (speechToken === undefined) {
        try {
            const res = await axios.get('/api/get-speech-token');
            const token = res.data.token;
            const region = res.data.region;
            cookie.set('speech-token', region + ':' + token, {maxAge: 540, path: '/'});

            console.log('Token fetched from back-end: ' + token);
            return { authToken: token, region: region };
        } catch (err) {
            console.log(err.response.data);
            return { authToken: null, error: err.response.data };
        }
    } else {
        console.log('Token fetched from cookie: ' + speechToken);
        const idx = speechToken.indexOf(':');
        return { authToken: speechToken.slice(idx + 1), region: speechToken.slice(0, idx) };
    }
}

This function uses the universal-cookie library to store and retrieve the token from local storage. It first checks to see if there is an existing cookie, and in that case it returns the token without hitting the Express back-end. If there is no existing cookie for a token, it makes the call to /api/get-speech-token to fetch a new one. Since we need both the token and its corresponding region later, the cookie is stored in the format token:region and upon retrieval is spliced into each value.

Tokens for the service expire after 10 minutes, so the sample uses the maxAge property of the cookie to act as a trigger for when a new token needs to be generated. It is reccommended to use 9 minutes as the expiry time to act as a buffer, so we set maxAge to 540 seconds.

In App.js you use getTokenOrRefresh in the functions for speech-to-text from a microphone, and from a file. Finally, use the SpeechConfig.fromAuthorizationToken function to create an auth context using the token.

const tokenObj = await getTokenOrRefresh();
const speechConfig = speechsdk.SpeechConfig.fromAuthorizationToken(tokenObj.authToken, tokenObj.region);

In many other Speech service samples, you will see the function SpeechConfig.fromSubscription used instead of SpeechConfig.fromAuthorizationToken, but by avoiding the usage of fromSubscription on the front-end, you prevent your speech subscription key from becoming exposed, and instead utilize the token authentication process. fromSubscription is safe to use in a Node.js environment, or in other Speech SDK programming languages when the call is made on a back-end, but it is best to avoid using in a browser-based JavaScript environment.

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This sample shows how to integrate the Azure Speech service into a sample React application. This sample shows design pattern examples for authentication token exchange and management, as well as capturing audio from a microphone or file for speech-to-text conversions.

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