Arjun Watane Soumyabrata Dey

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Presentation transcript:

Arjun Watane Soumyabrata Dey ADHD Arjun Watane Soumyabrata Dey

Work accomplished Pre-processed images by normalizing them Extracted Features for different layers Used pre-trained model Tested on SVM (different slices)

Results Slice Feature Layer Accuracy % 80 FC6 46% FC7 56% 90 51% 80th Slice 90th Slice

Tried Optical Flow Very complicated to input more than 3 dimensions

Next Week Need to find way to input optical flow into Caffe Will extract features for segmented images of GM, WM, and CSF May go back to feature pool idea