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Invariant-Feature Based Object Tracking Using Discrete Dynamic Swarm Optimization

  • Kang, Kyuchang (Department of IT Information and Control Engineering in Kunsan National University) ;
  • Bae, Changseok (Department of Electronics, Information & Communication Engineering, Daejeon University) ;
  • Moon, Jinyoung (SW & Contents Research Laboratory, ETRI) ;
  • Park, Jongyoul (SW & Contents Research Laboratory, ETRI) ;
  • Chung, Yuk Ying (School of Information Technologies, University of Sydney) ;
  • Sha, Feng (School of Information Technologies, University of Sydney) ;
  • Zhao, Ximeng (School of Information Technologies, University of Sydney)
  • Received : 2016.09.06
  • Accepted : 2017.02.02
  • Published : 2017.04.01

Abstract

With the remarkable growth in rich media in recent years, people are increasingly exposed to visual information from the environment. Visual information continues to play a vital role in rich media because people's real interests lie in dynamic information. This paper proposes a novel discrete dynamic swarm optimization (DDSO) algorithm for video object tracking using invariant features. The proposed approach is designed to track objects more robustly than other traditional algorithms in terms of illumination changes, background noise, and occlusions. DDSO is integrated with a matching procedure to eliminate inappropriate feature points geographically. The proposed novel fitness function can aid in excluding the influence of some noisy mismatched feature points. The test results showed that our approach can overcome changes in illumination, background noise, and occlusions more effectively than other traditional methods, including color-tracking and invariant feature-tracking methods.

Keywords

References

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