ADHD Arjun Watane Soumyabrata Dey. Work accomplished Extracted features for – Normalized brain, GM, WM, CSF Ran feature vectors through SVM Ready to fine.

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Presentation transcript:

ADHD Arjun Watane Soumyabrata Dey

Work accomplished Extracted features for – Normalized brain, GM, WM, CSF Ran feature vectors through SVM Ready to fine tune classifier

Segmented images of Brain Cerebrospinal Fluid Gray Matter White Matter Actual Brain

Results Feature TypeKernel FunctionSliceAccuracy Mean – FC6MLP100 th 73% Mean – FC7Linear100 th 68% Mean – FC6Linear130 th 68% GM – FC6Linear45 th 73% GM – FC7Quadratic120 th 78%

Next Week Combine features from different slices Fine tune classifier to receive better results Input 5 slices into Caffe to simulate a volume of the brain