Fig. 1 Concept of IoT space.
Fig. 2 Object recognition process.
Fig. 3 Tracking process based on mean shift.
Fig. 4 Active model learning process.
Fig. 5 Multiple human tracking results.
Fig. 6 Active color models of three humans.
Fig. 7 Comparison of the active Models.
References
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