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Infrared target tracking with kernel-based performance metric and eigenvalue-based similarity measure

机译:基于内核性能指标和基于特征值的相似性度量的红外目标跟踪

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摘要

An infrared target tracking framework is presented that consists of three main parts: mean shift tracking, its tracking performance evaluation, and position correction. The mean shift tracking algorithm, which is a widely used kernel-based method, has been developed for the initial tracking for its efficiency and effectiveness. A performance evaluation module is applied for the online evaluation of its tracking performance with a kernel-based metric to unify the tracking and performance metric within a kernel-based tracking framework. Then the tracking performance evaluation result is input into a controller in which a decision is made whether to trigger a position correction process. The position correction module employs a matching method with a new eigenvalue-based similarity measure computed from a local complexity degree weighted covariance matrix. Experimental results on real-life infrared image sequences are presented to demonstrate the efficacy of the proposed method.
机译:提出了一种红外目标跟踪框架,该框架包括三个主要部分:均值漂移跟踪,其跟踪性能评估和位置校正。均值漂移跟踪算法是一种广泛使用的基于核的方法,其效率和有效性已被开发用于初始跟踪。性能评估模块用于通过基于内核的指标对其跟踪性能进行在线评估,以统一基于内核的跟踪框架中的跟踪和性能指标。然后,将跟踪性能评估结果输入到控制器中,在该控制器中确定是否触发位置校正过程。位置校正模块采用匹配方法,该方法与根据局部复杂度加权加权协方差矩阵计算出的基于新特征值的相似性度量进行匹配。提出了关于真实红外图像序列的实验结果,以证明该方法的有效性。

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