5

The AWS Rekognition Javascript API states that for rekognition.compareFaces(params,...) method, the SourceImage and TargetImage can take Bytes or S3Object. I want to use the Bytes which can be

"Bytes — (Buffer, Typed Array, Blob, String)"

Blob of image bytes up to 5 MBs.

When I pass the Base64 encoded string of the images, the JS SDK is re-encoding again (i.e double encoded). Hence server responding with error saying

{"__type":"InvalidImageFormatException","Message":"Invalid image encoding"}

Did anyone manage to use the compareFaces JS SDK API using base64 encoded images (not S3Object)? or any JavaScript examples using Bytes param would help.

  • 1
    I am also looking for an answer to how to do this as I have been unable to do this. I have tried using Base64 encoded string with same result as above as well have tried converting it to a Uint8array, Blob, & ArrayBuffer still with no success. Does anyone have an example that works? My source data is in a HTML5 Canvas object. – Michael Dennis May 26 '17 at 16:50
  • Related and Solved: stackoverflow.com/questions/43599556/… – srikanth Nutigattu Jul 30 '18 at 19:47
3

The technique from this AWS Rekognition JS SDK Invalid image encoding error thread worked.

Convert the base64 image encoding to a ArrayBuffer:

function getBinary(base64Image) {
  var binaryImg = atob(base64Image);
  var length = binaryImg.length;
  var ab = new ArrayBuffer(length);
  var ua = new Uint8Array(ab);
  for (var i = 0; i < length; i++) {
    ua[i] = binaryImg.charCodeAt(i);
  }

  return ab;
}

Pass into rekognition as Bytes parameter:

var data = canvas.toDataURL('image/jpeg');
var base64Image = data.replace(/^data:image\/(png|jpeg|jpg);base64,/, '');
var imageBytes = getBinary(base64Image);

var rekognitionRequest = {
  CollectionId: collectionId,
  Image: {
    Bytes: imageBytes
  }
};
2

Based on the answer supplied by @Sean, I wanted to add another way to get the bytes from a URL request using axios and passed to rekognition.detectLabels() -- or other various detection methods for Amazon Rekognition.

I went ahead create a promise for fs.readFile that should work with the async/await structure. Then some regex to determine if you need a URL fetch or file read as a fallback.

I've also added a check for Gray and World Of Warcraft for the labels. Not sure if anyone else experiences that but lorempixel seems to throw those labels every once in a while. I've seen them show on an all black image before as well.

/* jshint esversion: 6, node:true, devel: true, undef: true, unused: true */

const AWS = require('aws-sdk'),
  axios = require('axios'),
  fs = require('fs'),
  path = require('path');

// Get credentials from environmental variables.
const {S3_ACCESS_KEY, S3_SECRET_ACCESS_KEY, S3_REGION} = process.env;

// Set AWS credentials.
AWS.config.update({
  accessKeyId: S3_ACCESS_KEY,
  secretAccessKey: S3_SECRET_ACCESS_KEY,
  region: S3_REGION
});

const rekognition = new AWS.Rekognition({
  apiVersion: '2016-06-27'
});

startDetection();

// ----------------

async function startDetection() {
    let found = {};

    found = await detectFromPath(path.join(__dirname, 'test.jpg'));
    console.log(found);

    found = await detectFromPath('https://upload.wikimedia.org/wikipedia/commons/9/96/Bill_Nye%2C_Barack_Obama_and_Neil_deGrasse_Tyson_selfie_2014.jpg');
    console.log(found);

    found = await detectFromPath('http://placekitten.com/g/200/300');
    console.log(found);

    found = await detectFromPath('https://loremflickr.com/g/320/240/text');
    console.log(found);

    found = await detectFromPath('http://lorempixel.com/400/200/sports/');
    console.log(found);

    // Sometimes 'Grey' and 'World Of Warcraft' are the only labels...
    if (found && found.labels.length === 2 && found.labels.some(i => i.Name === 'Gray') && found.labels.some(i => i.Name === 'World Of Warcraft')) {
        console.log('⚠️', '\n\tMaybe this is a bad image...`Gray` and `World Of Warcraft`???\n');
    }
}

// ----------------

/**
 * @param {string} path URL or filepath on your local machine.
 * @param {Number} maxLabels 
 * @param {Number} minConfidence 
 * @param {array} attributes 
 */
async function detectFromPath(path, maxLabels, minConfidence, attributes) {

    // Convert path to base64 Buffer data.
    const bytes = (/^https?:\/\//gm.exec(path)) ?
        await getBase64BufferFromURL(path) :
        await getBase64BufferFromFile(path);

    // Invalid data.
    if (!bytes)
        return {
            path,
            faces: [],
            labels: [],
            text: [],
            celebs: [],
            moderation: []
        };

    // Pass buffer to rekognition methods.
    let labels = await detectLabelsFromBytes(bytes, maxLabels, minConfidence),
        text = await detectTextFromBytes(bytes),
        faces = await detectFacesFromBytes(bytes, attributes),
        celebs = await recognizeCelebritiesFromBytes(bytes),
        moderation = await detectModerationLabelsFromBytes(bytes, minConfidence);

    // Filter out specific values.
    labels = labels && labels.Labels ? labels.Labels : [];
    faces = faces && faces.FaceDetails ? faces.FaceDetails : [];
    text = text && text.TextDetections ? text.TextDetections.map(i => i.DetectedText) : [];

    celebs = celebs && celebs.CelebrityFaces ? celebs.CelebrityFaces.map(i => ({
        Name: i.Name,
        MatchConfidence: i.MatchConfidence
    })) : [];

    moderation = moderation && moderation.ModerationLabels ? moderation.ModerationLabels.map(i => ({
        Name: i.Name,
        Confidence: i.Confidence
    })) : [];

    // Return collection.
    return {
        path,
        faces,
        labels,
        text,
        celebs,
        moderation
    };
}

/**
 * https://nodejs.org/api/fs.html#fs_fs_readfile_path_options_callback
 * 
 * @param {string} filename 
 */
function getBase64BufferFromFile(filename) {
    return (new Promise(function(resolve, reject) {
        fs.readFile(filename, 'base64', (err, data) => {
            if (err) return reject(err);
            resolve(new Buffer(data, 'base64'));
        });
    })).catch(error => {
        console.log('[ERROR]', error);
    });
}

/**
 * https://github.com/axios/axios
 *
 * @param {string} url
 */
function getBase64BufferFromURL(url) {
    return axios
        .get(url, {
            responseType: 'arraybuffer'
        })
        .then(response => new Buffer(response.data, 'base64'))
        .catch(error => {
            console.log('[ERROR]', error);
        });
}

/**
 * https://docs.aws.amazon.com/rekognition/latest/dg/labels.html
 * https://docs.aws.amazon.com/AWSJavaScriptSDK/latest/AWS/Rekognition.html#detectLabels-property
 *
 * @param {Buffer} bytes
 * @param {Number} maxLabels
 * @param {Number} minConfidence
 */
function detectLabelsFromBytes(bytes, maxLabels, minConfidence) {
    return rekognition
        .detectLabels({
            Image: {
                Bytes: bytes
            },
            MaxLabels: typeof maxLabels !== 'undefined' ? maxLabels : 1000,
            MinConfidence: typeof minConfidence !== 'undefined' ? minConfidence : 50.0
        })
        .promise()
        .catch(error => {
            console.error('[ERROR]', error);
        });
}

/**
 * https://docs.aws.amazon.com/rekognition/latest/dg/text-detection.html
 * https://docs.aws.amazon.com/AWSJavaScriptSDK/latest/AWS/Rekognition.html#detectText-property
 *
 * @param {Buffer} bytes
 */
function detectTextFromBytes(bytes) {
    return rekognition
        .detectText({
            Image: {
                Bytes: bytes
            }
        })
        .promise()
        .catch(error => {
            console.error('[ERROR]', error);
        });
}

/**
 * https://docs.aws.amazon.com/rekognition/latest/dg/celebrities.html
 * https://docs.aws.amazon.com/AWSJavaScriptSDK/latest/AWS/Rekognition.html#recognizeCelebrities-property
 *
 * @param {Buffer} bytes
 */
function recognizeCelebritiesFromBytes(bytes) {
    return rekognition
        .recognizeCelebrities({
            Image: {
                Bytes: bytes
            }
        })
        .promise()
        .catch(error => {
            console.error('[ERROR]', error);
        });
}

/**
 * https://docs.aws.amazon.com/rekognition/latest/dg/moderation.html
 * https://docs.aws.amazon.com/AWSJavaScriptSDK/latest/AWS/Rekognition.html#detectModerationLabels-property
 *
 * @param {Buffer} bytes
 * @param {Number} minConfidence
 */
function detectModerationLabelsFromBytes(bytes, minConfidence) {
    return rekognition
        .detectModerationLabels({
            Image: {
                Bytes: bytes
            },
            MinConfidence: typeof minConfidence !== 'undefined' ? minConfidence : 60.0
        })
        .promise()
        .catch(error => {
            console.error('[ERROR]', error);
        });
}

/**
 * https://docs.aws.amazon.com/rekognition/latest/dg/faces.html
 * https://docs.aws.amazon.com/AWSJavaScriptSDK/latest/AWS/Rekognition.html#detectFaces-property
 *
 * @param {Buffer} bytes
 * @param {array} attributes Attributes can be "ALL" or "DEFAULT". "DEFAULT" includes: BoundingBox, Confidence, Landmarks, Pose, and Quality.
 */
function detectFacesFromBytes(bytes, attributes) {
    return rekognition
        .detectFaces({
            Image: {
                Bytes: bytes
            },
            Attributes: typeof attributes !== 'undefined' ? attributes : ['ALL']
        })
        .promise()
        .catch(error => {
            console.error('[ERROR]', error);
        });
}

/**
 * https://docs.aws.amazon.com/rekognition/latest/dg/API_CompareFaces.html
 * https://docs.aws.amazon.com/AWSJavaScriptSDK/latest/AWS/Rekognition.html#compareFaces-property
 *
 * @param {Buffer} sourceBytes
 * @param {Buffer} targetBytes
 * @param {Number} similarityThreshold
 */
function compareFaces(sourceBytes, targetBytes, similarityThreshold) {
    return rekognition
        .detectModerationLabels({
            SourceImage: {
                Bytes: sourceBytes
            },
            TargetImage: {
                Bytes: targetBytes
            },
            SimilarityThreshold: typeof similarityThreshold !== 'undefined' ? similarityThreshold : 0.0
        })
        .promise()
        .catch(error => {
            console.error('[ERROR]', error);
        });
}

Resources:

AWS JavaScript SDK Reference:

Reference:

1

I was running into a similar issue when reading in a file in Node as a byte array buffer and sending it to Rekognition.

I solved it by instead reading in the base64 representation, then turning it into a buffer like this:

const aws = require('aws-sdk');
const fs = require('fs');

var rekognition = new aws.Rekognition({
  apiVersion: '2016-06-27'
});

// pull base64 representation of image from file system (or somewhere else)
fs.readFile('./test.jpg', 'base64', (err, data) => {

  // create a new buffer out of the string passed to us by fs.readFile()
  const buffer = new Buffer(data, 'base64');

  // now that we have things in the right type, send it to rekognition
  rekognition.detectLabels({
      Image: {
        Bytes: buffer
      }
    }).promise()
    .then((res) => {

      // print out the labels that rekognition sent back
      console.log(res);

    });

});

This might also be relevant to people getting the: Expected params.Image.Bytes to be a string, Buffer, Stream, Blob, or typed array object message.

0

I had same issue you had and i'm going to tell you how i solved it.

Amazon Rekognition supports image type are JPEG and PNG

It means that if you input image file with encoding other formats like webp, you always get same that error.

After changing image formats which not encoding with jpeg or png to jpeg, i could solved that problem.

Hope you to solve this problem!

0

It seems that converting the string to a buffer works more consistently but documentation on it is very hard to find.

For Node, you can use this to convert the params from the string (make sure you take off the data... up to the ",".

var params = {
    CollectionId: collectionId,
    Image: {
        Bytes: new Buffer(imageBytes, 'base64')
    }
};

In normal JS, you'd want can convert with atob and pass the Array buffer using this code:

function getBinary(base64Image) {

    var binaryImg = Buffer.from(base64Image, 'base64').toString();
    var length = binaryImg.length;
    var ab = new ArrayBuffer(length);
    var ua = new Uint8Array(ab);
    for (var i = 0; i < length; i++) {
        ua[i] = binaryImg.charCodeAt(i);
    }

    return ab;
}

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.