1

I'm trying to setup BodyPix via the tutorial on the TensorFlow website, and I'm getting the following error

Uncaught (in promise) Error: No backend found in registry.
    at Engine.getSortedBackends (engine.js:248)
    at Engine.initializeBackendsAndReturnBest (engine.js:257)
    at Engine.get backend [as backend] (engine.js:94)
    at Engine.makeTensor (engine.js:556)
    at makeTensor (tensor_ops_util.js:57)
    at tensor (tensor.js:48)
    at Module.decodeWeights (io_utils.js:212)
    at GraphModel.loadSync (graph_model.js:118)
    at GraphModel.load (graph_model.js:102)
    at async loadGraphModel (graph_model.js:348)

I tried installing several packages that I thought might help, but I'm really not sure what to do now.. appreciate any input I could get.

package.json

  "dependencies": {
    "@babel/core": "^7.11.1",
    "@babel/preset-env": "^7.11.0",
    "@tensorflow-models/body-pix": "^2.0.5",
    "@tensorflow/tfjs": "^2.3.0",
    "@tensorflow/tfjs-converter": "^2.3.0",
    "@tensorflow/tfjs-core": "^2.3.0",
    "@tensorflow/tfjs-node-gpu": "^2.3.0"
  },
  "devDependencies": {
    "babel-loader": "^8.1.0",
    "webpack-dev-server": "^3.11.0",
    "webpack": "^4.44.1",
    "webpack-cli": "^3.3.12"
  }

index.js

import * as bodyPix from '@tensorflow-models/body-pix';

const img = document.getElementById('image');

async function loadAndPredict() {
  const net = await bodyPix.load(/** optional arguments, see below **/);

  /**
   * One of (see documentation below):
   *   - net.segmentPerson
   *   - net.segmentPersonParts
   *   - net.segmentMultiPerson
   *   - net.segmentMultiPersonParts
   * See documentation below for details on each method.
   */
  const segmentation = await net.segmentPerson(img);
  console.log(segmentation);
}
loadAndPredict();
4

I was using the same version of body-pix and ran into the exact same issue. I resolved the problem by importing modules from @tensorflow/tfjs package. It seems importing these modules is necessary to register the backends. You may have to do the following to fix this issue:

import * as tf from '@tensorflow/tfjs';
...

console.log('Using TensorFlow backend: ', tf.getBackend());
loadAndPredict();
2

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.