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Object Detection and Classification Algorithms using Deep Learning for Video Surveillance Applications

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Figure

Fig. 1. YOLOv2 model regression.
Fig. 2. Speed v/s Accuracy of detection algorithms. Two main issues that are present in the traditional CNN
Fig 6.  Implementation of Anchor Boxes [8]. In Fig. 6, two objects are sharing the same midpoint
Fig 7. Different kinds of detectors based on Haar-Like feature[15].  Fig. 7 shows the various kinds of detectors based on Haar-Like feature
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