All Projects → AKSHAYUBHAT → Imagesegmentation

AKSHAYUBHAT / Imagesegmentation

Licence: mit
Perform image segmentation and background removal in javascript using superpixes

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Image Eraser by Akshay Bhat

https://www.eraseimage.com/

Image Eraser allows users to perform image segmentation inside browser using a vector editor (FabricJS) and JS implementations of superpixel algorithms.

Using SLIC superpixels

Segmentation

Following libraries & templates are used:

  1. https://almsaeedstudio.com/
  2. https://github.com/kyamagu/js-segment-annotator/blob/master/LICENSE
  3. http://fabricjs.com/kitchensink/
  4. http://inspirit.github.io/jsfeat/
  5. http://linkedin.github.io/hopscotch/
  6. http://ace.c9.io/
  7. https://firebase.google.com
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