E-Health Workshop on Remote Health using Technology (RHT) 2017

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Presentation transcript:

E-Health Workshop on Remote Health using Technology (RHT) 2017 Manoranjan Paul, PhD, SMIEEE, MACS (Snr) CP Associate Professor in Computer Science School of Computing & Mathematics, Faculty of BJBS Steering Committee Member CSU Machine Learning (CML) Research Unit E-Health Research Group Leader Faculty of BJBS Seminar Coordinator School of Computing & Mathematics

Recent Projects Epileptic Seizure Prediction using EEG signals Early diagnosis of Alzheimer's Disease using deep learning Image Contrast Enhancement for the Diabetic Retinopathy Blood glucose drop prediction for diabetic patient Cardiopulmonary measurement using the smartphone Fall detection using depth camera

Expertise Data compression Image/video processing Machine learning e.g. PCA, SVM, Deep Learning Signal processing e.g. EMD, FFT, DWT Eye tracking Pattern recognition Computer vision

Facilities in my Computer Vision Lab CCTV Cameras Computer Vision Lab Video Surveillance EEG Machine Eye Tracker Brain Signal Processing Eye Movement Monitoring

Facilities in my Computer Vision Lab conti… Fig. Hyperspectral camera to capture images

Thanks