Jeff B. Pelz Visual Perception Laboratory Carlson Center for Imaging Science Rochester Institute of Technology Using Eyetracking to Improve Image Composition.

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Jeff B. Pelz Visual Perception Laboratory Carlson Center for Imaging Science Rochester Institute of Technology Using Eyetracking to Improve Image Composition and Classification Techniques

RIT Wearable Eyetracker

color CMOS scene camera calibration LASER hot mirror folding mirror IR illuminator/ optics module monochrome CMOS eye camera

RIT Wearable Eyetracker

Remote eyetracker Infrared / Video Remote-head eyetracker

= 250 ms Visualization

Task: Locate the difference between A & B

Human Computer Interface

Task: Crop image for best composition