use-tensorflow

0.3.2 • Public • Published

use-tensorflow

A React hook for tensorflow.js to detect objects and poses easily:

Recognized output

import React, { useRef } from "react";
import { useObjects } from "use-tensorflow";    // This library :)
import { Container, Box } from './components';  // Find the implementation below
 
export default () => {
  const ref = useRef(null);
  const objects = useObjects(ref);
  return (
    <Container>
      <img ref={ref} src="/living-room.jpg" />
      {objects ? objects.map(({ left, top, width, height, label, score }) => (
        <Box
          left={left}
          top={top}
          width={width}
          height={height}
          label={label}
          color={score > 0.6 ? "blue" : "red"}
          score={score}
        />
      )) : 'Loading...'}
    </Container>
  );
};

API

Import one of the models:

// Available models right now
import { usePoses, useObjects } from 'use-tensorflow';

All the named imported models follow the same structure:

export default () => {
  const ref = useRef();
  const detected = use{Name}(ref, config);
  return ...;
};
  • ref: the reference for the image or video.
  • config: the configuration for the specific model in Tensorflow. See Coco SSD example.

There's also a default export useTensorflow, but it's experimental by now.

useObjects

Detect objects in the image, including the label, position and score:

import React, { useRef } from 'react';
import { useObjects } from 'use-tensorflow';
 
export default () => {
  const ref = useRef();
  const objects = useObjects(ref, { modelUrl: "/objects/model.json" });
  console.log(objects);
  return <img ref={ref} src="/living-room.jpg" />;
};

Output:

[
  {
    "label": "chair",
    "score": 0.8703018426895142,
    "left": 681,
    "top": 409,
    "width": 101,
    "height": 140
  },
  {
    "label": "couch",
    "score": 0.8127394318580627,
    "left": 160,
    "top": 335,
    "width": 308,
    "height": 140
  },
  ...
]

usePoses

Using poses as well:

import React, { useRef } from 'react';
import { usePoses } from 'use-tensorflow';
 
export default () => {
  const ref = useRef();
  const poses = usePoses(ref);
  console.log(poses);
  return <img ref={ref} src="/living-room.jpg" />;
};
[
  {
    "nose": {
      "label": "nose",
      "left": 762,
      "top": 299,
      "score": 0.22580526769161224
    },
    "leftEye": {
      "label": "leftEye",
      "left": 758,
      "top": 294,
      "score": 0.24668794870376587
    },
    ...
  },
  ...
]

All the keys are:

  • nose
  • leftEye
  • rightEye
  • leftEar
  • rightEar
  • leftShoulder
  • rightShoulder
  • leftElbow
  • rightElbow
  • leftWrist
  • rightWrist
  • leftHip
  • rightHip
  • leftKnee
  • rightKnee
  • leftAnkle
  • rightAnkle

useTensorflow

This is too experimental right now, please read the code to see how it works for now under src/useModel.js.

Examples

Some more examples. These examples unfortunately don't load on Codesandbox, so you'll have to install and load them locally for them to work (including loading the images locally to avoid CORS issues).

Loading local models

For local development you very likely want to download and load the model locally for speed. I haven't found an easy way of doing this, so let's get scrappy:

1. Open the network requests in the browser and load the library without the modelUrl:

useObjects(ref);

2. Copy the .json file and all the related files into your public folder. Create a folder called public/objects and put it all there:

Folder organization example

3. Point the use{Name} to these files from the public location:

const objects = useObjects(ref, { modelUrl: "/objects/model.json" });
const poses = usePoses(ref, { modelUrl: "/poses/model.json" });

Realtime camera recognition

To load a realtime video you can install my library use-camera and do:

import React from "react";
import useCamera from "use-camera";
import { useObjects } from "use-tensorflow";
import { Container, Box } from "./components";
 
export default () => {
  const ref = useCamera({ audio: false });
  const objects = useObjects(ref, { modelUrl: "/objects/model.json" });
  return (
    <Container>
      <video ref={ref} autoPlay width="640" height="480" />
      {objects && objects.map(({ left, top, width, height, label, score }) => (
        <Box
          left={left}
          top={top}
          width={width}
          height={height}
          label={label}
          color={score > 0.6 ? "blue" : "red"}
          score={score}
        />
      ))}
    </Container>
  );
};

Adding bounding boxes

An example with all the bounding boxes and the border color depending on the accuracy. We're using Styled Components here, but use any styling library you prefer:

import styled from "styled-components";
 
// See their implementations below
export const Container = styled.div`
  position: relative;
`;
 
export const Box = styled.div.attrs(props => ({
  style: {
    left: `${props.left}px`,
    top: `${props.top}px`,
    width: `${props.width}px`,
    height: `${props.height}px`
  }
}))`
  border: 2px solid ${({ color }) => color || "red"};
  position: absolute;
  border-radius: 4px;
 
  &::before,
  &::after {
    display: block;
    position: absolute;
    top: 0;
    color: white;
    background: ${({ color }) => color || "red"};
    padding: 3px 6px;
    font-size: 12px;
    font-family: monospace;
  }
 
  &::before {
    content: "${({ label }) => label}";
    left: 0;
    border-radius: 0 0 4px;
  }
 
  &::after {
    content: "${({ score }) => Math.round(score * 100)}%";
    right: 0;
    border-radius: 0 0 0 4px;
  }
`;
 
export const Circle = styled.div`
  content: "";
  background: ${({ color }) => color || "red"};
  position: absolute;
  width: 8px;
  height: 8px;
  transform: translate(-4px, -4px);
  border-radius: 8px;
  left: ${({ left }) => left}px;
  top: ${({ top }) => top}px;
  width: ${({ width }) => width}px;
  height: ${({ height }) => height}px;
`;

Credits

Unsplash picture by ROOM:

https://unsplash.com/photos/FZrn8fhqpp8

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Install

npm i use-tensorflow

Weekly Downloads

12

Version

0.3.2

License

MIT

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694 kB

Total Files

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Collaborators

  • franciscop