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Non-rigid object tracking via discriminative features

Qian Wang, Qingxuan Shi


Non-rigid objects are typically complex and difficult to track due to the appearance change caused by geometric changes. In this paper, we model the appearance of non-rigid objects by discriminative features which are adaptively selected according to their descriptive ability. To adapt to the geometric changes, we use a deformable rectangle to represent the object, and use Markov Chain Monte Carlo-based Particle Filter (MCMCPF) to estimate the state of the object in a restricted four-dimensional space. Experimental results show that the proposed tracking algorithm has ideal performance.


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  • CASS
  • Google Scholar
  • Abra o portão J
  • Infraestrutura Nacional de Conhecimento da China (CNKI)
  • CiteFactor
  • Cosmos SE
  • Diretório de indexação de periódicos de pesquisa (DRJI)
  • Laboratórios secretos de mecanismos de pesquisa
  • Euro Pub
  • ICMJE

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