Infrared target tracking based on proximal robust principal component
analysis method
- URL: http://arxiv.org/abs/2010.05260v1
- Date: Sun, 11 Oct 2020 14:54:00 GMT
- Title: Infrared target tracking based on proximal robust principal component
analysis method
- Authors: Chao Ma, Guohua Gu, Xin Miao, Minjie Wan, Weixian Qian, Kan Ren, and
Qian Chen
- Abstract summary: Infrared target tracking plays an important role in both civil and military fields.
The main challenges in designing a robust and high-precision tracker for infrared sequences include overlap, occlusion and appearance change.
This paper proposes an infrared target tracker based on proximal robust principal component analysis method.
- Score: 12.560236015149965
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Infrared target tracking plays an important role in both civil and military
fields. The main challenges in designing a robust and high-precision tracker
for infrared sequences include overlap, occlusion and appearance change. To
this end, this paper proposes an infrared target tracker based on proximal
robust principal component analysis method. Firstly, the observation matrix is
decomposed into a sparse occlusion matrix and a low-rank target matrix, and the
constraint optimization is carried out with an approaching proximal norm which
is better than L1-norm. To solve this convex optimization problem, Alternating
Direction Method of Multipliers (ADMM) is employed to estimate the variables
alternately. Finally, the framework of particle filter with model update
strategy is exploited to locate the target. Through a series of experiments on
real infrared target sequences, the effectiveness and robustness of our
algorithm are proved.
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