-Intelligence Transport System PHHung Media IC & System Lab

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-Intelligence Transport System PHHung Media IC & System Lab Progress report (11/08) -Intelligence Transport System PHHung Media IC & System Lab

Done (10/18) Vehicle/Pedestrian Detect Map Generate Better Quality Camera Calibration More and more label Vehicle/Pedestrian Detect Background Modeling(MOG2) Shadow eliminate Rotated Bounding box HoG (add one more label category ) SVM Consistent Labeling (single cam) Tracking Faster GPU accelerated Map Generate From video From LIDAR Consistent Labeling (Multiple Cam)

Demo (10/18)

Between 10/18 ~ 11/7 Background eliminate Rotate bounding box CamShift Kalman filter + CamShift ……When to do background modeling? & When to do tracking?

Between 10/18 ~ 11/7 64x64 --> 128x64 64x64 64x128 Online Offline !! -> higher resolution (640x480 -> 1280x960) Generate coordinate data for belief merge Belief merge grouping detect object by position & type !! Correct rate must be higher -> require a new labeled dataset 64x64 --> 128x64 64x64 64x128

For demo @ 11/10 , 11/11 , 11/15 Visualization…