PARTICLE FILTER AND VISUAL TRACKING: A HYBRID RESAMPLING APPROACH TO IMPROVING ROBUSTNESS IN CLUTTERED AND OCCLUDED ENVIRONMENTS

Título: PARTICLE FILTER AND VISUAL TRACKING: A HYBRID RESAMPLING APPROACH TO IMPROVING ROBUSTNESS IN CLUTTERED AND OCCLUDED ENVIRONMENTS

Autores: Cordoba, Diego A. L.; Koike, Carla M. C. C.; Vidal, Flavio de Barros

Resumo: Occlusions and cluttered environments represent real challenges for visual tracking methods. In order to increase robustness in such situations this article presents a method for visual tracking using a Particle Filter with Hybrid Resampling. Our approach consists of using a particle filter to estimate the state of the tracked object, and both particles’ inertia and update information are used in the resampling stage. The proposed method is tested using a public benchmark and the results are compared with other tracking algorithms. The results show that our approach performs better in cluttered environments, as well as in situations with total or partial occlusions.

Palavras-chave: Visual tracking; Particle Filter; Hybrid resampling; Occlusions; Cluttered environments

Páginas: 12

Código DOI: 10.21528/LNLM-vol14-no2-art1

Artigo em PDF: vol14-no2-art1.pdf

Arquivo BibTex: vol14-no2-art1.bib