The project's goal is to show a real world application of image segmentation using k means algorithm

Overview

k-means-real-time-segmentation

The project's goal is to show a real world application of image segmentation using k means algorithm.

image

image

features of the code:

  1. segmentation of an image (can use the webcam class or upload your own)
  2. define which clusters you would like to hide (in black color) --> easy way to reduce noise in an image and make easier detections

example of the results on my data: (different combinations of cluster coloring)

image

image

image

webcam class output: (yea thats me)

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