Multiple Moving Object Detection Using Different Algorithms
Author(s) -
Seong-Nam Heo,
Hyeon-Sik Son,
Byungin Moon
Publication year - 2015
Publication title -
the journal of korean institute of communications and information sciences
Language(s) - English
Resource type - Journals
eISSN - 2287-3880
pISSN - 1226-4717
DOI - 10.7840/kics.2015.40.9.1828
Subject(s) - background subtraction , object detection , viola–jones object detection framework , computer science , artificial intelligence , computer vision , object (grammar) , video tracking , algorithm , computation , object class detection , tracking (education) , task (project management) , pattern recognition (psychology) , pixel , face detection , engineering , psychology , pedagogy , systems engineering , facial recognition system
Object tracking algorithms can reduce computational cost by avoiding computation over the whole image through the selection of region of interests based on object detection. So, accurate object detection is an important task for object tracking. The background subtraction algorithm has been widely used in moving object detection using a stationary camera. However, it has the problem of object detection error due to incorrect background modeling, whereas the method of background modeling has been improved by many researches. This paper proposes a new moving object detection algorithm to overcome the drawback of the conventional background subtraction algorithm by combining the background subtraction algorithm with the motion history image algorithm that is usually used in gesture detection. Although the proposed algorithm demands more processing time because of time taken for combining two algorithms, it meet the real-time processing requirement. Moreover, experimental results show that it has higher accuracy compared with the previous two algorithms.
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