Monitoring and Enhancing Visual Features (movement, color) as a Method for Predicting Brain Activity Level -in Terms of the Perception of Pain Sensation.

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Presentation transcript:

Monitoring and Enhancing Visual Features (movement, color) as a Method for Predicting Brain Activity Level -in Terms of the Perception of Pain Sensation Noam Roth The relationship between perception of pain and its measurement, using computational vision tool (Evaluation of blood supply to the brain from a video signal)

Image Representations Adelson et al Szeliski, 2010 Gaussian pyramid Laplacian pyramid

Eulerian Motion Magnification Wu et al. 2012

Eulerian Motion Magnification- for Motion

Blood flow & Brain activity that is related to pain

Current Research Feasibility Study Study Hypothesis Method Initial Results Discussion

Current Research Feasibility Study Study Hypothesis Method Initial Results Discussion

Current Research Feasibility Study Study Hypothesis Method Initial Results Discussion

Current Research Feasibility Study Study Hypothesis Method Initial Results Discussion

Eulerian Motion Magnification- for color

Current Research Feasibility Study Study Hypothesis Method Initial Results Discussion

Future Work and Implementations

Questions