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.
翻译:红外线目标跟踪在民用和军事领域都起着重要作用。设计红外线序列的稳健和高精度跟踪器面临的主要挑战包括重叠、隐蔽和外观变化。为此,本文件提议了基于近乎稳健的主要组成部分分析方法的红外线目标跟踪器。首先,观测矩阵分解成一个稀疏的隐蔽矩阵和一个低级目标矩阵,而限制优化则以接近的准标准进行,该标准比L1-诺姆要好。为了解决这一convex优化问题,将采用倍增效应方向法(ADMM)来对变量进行交替估计。最后,利用带有模型更新战略的粒子过滤框架来确定目标。通过对真实红外线目标序列的一系列实验,我们算法的有效性和稳健性得到了证明。