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Particle Filter Target Tracking Algorithm Based on Dynamic Niche Genetic Algorithm
Weicheng XIE Junxu WEI Zhichao CHEN Tianqian LI
Publication
IEICE TRANSACTIONS on Fundamentals of Electronics, Communications and Computer Sciences
Vol.E100-A
No.6
pp.1325-1332 Publication Date: 2017/06/01 Online ISSN: 1745-1337
DOI: 10.1587/transfun.E100.A.1325 Type of Manuscript: PAPER Category: Vision Keyword: dynamic niche, particle filter, feature fusion, sample impoverishment, target tracking,
Full Text: PDF(4.4MB)>>
Summary:
Particle filter algorithm is an important algorithm in the field of target tracking. however, this algorithm faces the problem of sample impoverishment which is caused by the introduction of re-sampling and easily affected by illumination variation. This problem seriously affects the tracking performance of a particle filter algorithm. To solve this problem, we introduce a particle filter target tracking algorithm based on a dynamic niche genetic algorithm. The application of this dynamic niche genetic algorithm to re-sampling ensures particle diversity and dynamically fuses the color and profile features of the target in order to increase the algorithm accuracy under the illumination variation. According to the test results, the proposed algorithm accurately tracks the target, significantly increases the number of particles, enhances the particle diversity, and exhibits better robustness and better accuracy.
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