Elsevier

Image and Vision Computing

Volume 32, Issue 12, December 2014, Pages 1090-1101
Image and Vision Computing

Adaptive visual tracking using the prioritized Q-learning algorithm: MDP-based parameter learning approach

https://doi.org/10.1016/j.imavis.2014.08.009Get rights and content
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open access

Highlights

  • We use an MDP formulation for optimal adaptation of tracking algorithms.

  • We optimize the tracker control parameters using prioritized Q-learning.

  • The proposed prioritized Q-learning approach is based on sensitivity analysis.

  • The performance of our method is superior to other approaches.

  • The proposed method can balance tracking accuracy and speed.

Abstract

This paper introduces an adaptive visual tracking method that combines the adaptive appearance model and the optimization capability of the Markov decision process. Most tracking algorithms are limited due to variations in object appearance from changes in illumination, viewing angle, object scale, and object shape. This paper is motivated by the fact that tracking performance degradation is caused not only by changes in object appearance but also by the inflexible controls of tracker parameters. To the best of our knowledge, optimization of tracker parameters has not been thoroughly investigated, even though it critically influences tracking performance. The challenge is to equip an adaptive tracking algorithm with an optimization capability for a more flexible and robust appearance model. In this paper, the Markov decision process, which has been applied successfully in many dynamic systems, is employed to optimize an adaptive appearance model-based tracking algorithm. The adaptive visual tracking is formulated as a Markov decision process based dynamic parameter optimization problem with uncertain and incomplete information. The high computation requirements of the Markov decision process formulation are solved by the proposed prioritized Q-learning approach. We carried out extensive experiments using realistic video sets, and achieved very encouraging and competitive results.

Keywords

Adaptive visual tracking
Prioritized Q-learning
Markov decision process
Dynamic parameter optimization

Cited by (0)

Sarang Khim received his BS degree in Computer Science and Information Technology from Inha University, Korea in 2013. He is currently pursuing the Master's degree at Inha University where he is majoring in Computer Science and Information Technology. His research interests include pattern recognition, adaptive visual tracking, and machine intelligence.

Sungjin Hong received his BS degree in Computer Science and Information Technology from Inha University, Incheon, Korea in 2013. He is currently pursuing the Master's degree at Inha University where he is majoring in Computer Science and Information Technology. His research interests include computer vision, face recognition, pattern recognition, and big data.

Yoonyoung Kim received his BS degree in Computer Science and Information Technology from Inha University, Incheon, Korea in 2014. He is currently pursuing the Master's degree at Inha University where he is majoring in Computer Science and Information Technology. His research interests include face recognition, big data, machine intelligence, and pattern recognition.

Phill Kyu Rhee received his BS degree in electrical engineering from Seoul University, Seoul, Korea, his MS degree in Computer Science from East Texas State University, Commerce, Texas, and his Ph.D. degree in computer science from the University of Louisiana, Lafayette, Louisiana, in 1982, 1986, and 1990 respectively. During 1982 to 1985, he was working in the System Engineering Research Institute, Seoul, Korea as a research scientist. In 1991, he joined the Electronic and Telecommunication Research Institute, Seoul, Korea, as a senior research staff. Since 1992, he has been an associate professor in the Department of Computer Science and Information Technology of Inha University, Incheon, Korea and since 2001, he is a professor in the same department and university. His current research interests are pattern recognition, machine intelligence, and autonomic cloud computing. Rhee is a member of the IEEE Computer Society and KISS (Korea Information Science Society).

This paper has been recommended for acceptance by Ming-Hsuan Yang.

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