human/demo/nodejs/node-webcam.js

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/**
* Human demo for NodeJS
* Unsupported sample of using external utility fswebcam to capture screenshot from attached webcam in regular intervals and process it using Human
*
* Note that node-webcam is not part of Human dependencies and should be installed manually
* Working version of fswebcam must be present on the system
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*/
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let initial = true; // remember if this is the first run to print additional details
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const log = require('@vladmandic/pilogger');
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// eslint-disable-next-line node/no-missing-require
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const nodeWebCam = require('node-webcam');
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// for NodeJS, `tfjs-node` or `tfjs-node-gpu` should be loaded before using Human
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// eslint-disable-next-line no-unused-vars, @typescript-eslint/no-unused-vars
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const tf = require('@tensorflow/tfjs-node'); // or const tf = require('@tensorflow/tfjs-node-gpu');
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// load specific version of Human library that matches TensorFlow mode
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const Human = require('../../dist/human.node.js').default; // or const Human = require('../dist/human.node-gpu.js').default;
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// options for node-webcam
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const tempFile = 'webcam-snap'; // node-webcam requires writting snapshot to a file, recommended to use tmpfs to avoid excessive disk writes
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const optionsCamera = {
callbackReturn: 'buffer', // this means whatever `fswebcam` writes to disk, no additional processing so it's fastest
saveShots: false, // don't save processed frame to disk, note that temp file is still created by fswebcam thus recommendation for tmpfs
};
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const camera = nodeWebCam.create(optionsCamera);
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// options for human
const optionsHuman = {
backend: 'tensorflow',
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modelBasePath: 'file://models/',
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};
const human = new Human(optionsHuman);
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function buffer2tensor(buffer) {
return human.tf.tidy(() => {
if (!buffer) return null;
const decode = human.tf.node.decodeImage(buffer, 3);
let expand;
if (decode.shape[2] === 4) { // input is in rgba format, need to convert to rgb
const channels = human.tf.split(decode, 4, 2); // tf.split(tensor, 4, 2); // split rgba to channels
const rgb = human.tf.stack([channels[0], channels[1], channels[2]], 2); // stack channels back to rgb and ignore alpha
expand = human.tf.reshape(rgb, [1, decode.shape[0], decode.shape[1], 3]); // move extra dim from the end of tensor and use it as batch number instead
} else {
expand = human.tf.expandDims(decode, 0); // inpur ia rgb so use as-is
}
const cast = human.tf.cast(expand, 'float32');
return cast;
});
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}
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async function detect() {
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// trigger next frame every 5 sec
// triggered here before actual capture and detection since we assume it will complete in less than 5sec
// so it's as close as possible to real 5sec and not 5sec + detection time
// if there is a chance of race scenario where detection takes longer than loop trigger, then trigger should be at the end of the function instead
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setTimeout(() => detect(), 5000);
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camera.capture(tempFile, (err, data) => { // gets the (default) jpeg data from from webcam
if (err) {
log.error('error capturing webcam:', err);
} else {
const tensor = buffer2tensor(data); // create tensor from image buffer
if (initial) log.data('input tensor:', tensor.shape);
// eslint-disable-next-line promise/no-promise-in-callback
human.detect(tensor).then((result) => {
if (result && result.face && result.face.length > 0) {
for (let i = 0; i < result.face.length; i++) {
const face = result.face[i];
const emotion = face.emotion.reduce((prev, curr) => (prev.score > curr.score ? prev : curr));
log.data(`detected face: #${i} boxScore:${face.boxScore} faceScore:${face.faceScore} age:${face.age} genderScore:${face.genderScore} gender:${face.gender} emotionScore:${emotion.score} emotion:${emotion.emotion} iris:${face.iris}`);
}
} else {
log.data(' Face: N/A');
}
});
}
initial = false;
});
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// alternatively to triggering every 5sec sec, simply trigger next frame as fast as possible
// setImmediate(() => process());
}
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async function main() {
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camera.list((list) => {
log.data('detected camera:', list);
});
await human.load();
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detect();
}
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log.header();
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main();