Assginment for UofT CSC420: Intro to Image Understanding

Overview

Run the code

  1. Open edge_detection.ipynb in google colab.

  2. Upload image1.jpg,image2.jpg and my_image.jpg to '/content/drive/My Drive'.

  3. chooose 'Run all' in the tap 'Runtime'.

(In the code, it will need authorization to mount google drive and open the images)

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