Malaria detection in Segmented Blood Cell using Convolutional Neural Networks and Canny Edge Detection

02/21/2022
by   Tahsinur Rahman Talukdar, et al.
0

We apply convolutional neural networks to identify between malaria infected and non-infected segmented cells from the thin blood smear slide images. We optimize our model to find over 95 apply Canny image processing to reduce training file size while maintaining comparable accuracy (  94

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