face-api

  •        60

JavaScript API for face detection and face recognition in the browser with tensorflow.js

https://github.com/justadudewhohacks/face-api.js

Dependencies:

@tensorflow/tfjs-core : ^0.12.14
tfjs-image-recognition-base : ^0.0.0
tfjs-tiny-yolov2 : 0.0.2

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