10/22/2015
More stringent pedestrian detectionby Deep learning verification
Labels:
Pedestrian detection,
Pedestrian tracking,
Total,
Tracking
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Hello Kim,
ReplyDeleteI am trying to achieve same thing with Raspberrypi and HOG+SVM 320x240 body it seems too slow to me . So my query is that if i want to achieve Realtime tracking upper body and face detection minimum Hardware requirement for.