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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >A Genetic Algorithm for Target Tracking in FLIR Video Sequences Using Intensity Variation Function
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A Genetic Algorithm for Target Tracking in FLIR Video Sequences Using Intensity Variation Function

机译:基于强度变化函数的FLIR视频序列目标跟踪的遗传算法

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摘要

Automatic target tracking in forward-looking infrared (FLIR) imagery is a challenging research area in computer vision. This task could be even more critical when real-time requirements have to be taken into account. In this context, techniques exploiting the target intensity profile generated by an intensity variation function (IVF) proved to be capable of providing significant results. However, one of their main limitations is represented by the associated computational cost. In this paper, an alternative approach based on genetic algorithms (GAs) is proposed. GAs are search methods based on evolutionary computations, which exploit operators inspired by genetic variation and natural selection rules. They have been proven to be theoretically and empirically robust in complex space searches by their founder, J. H. Holland. Contrary to most optimization techniques, whose goal is to improve performances toward the optimum, GAs aim at finding near-optimal solutions by performing parallel searches in the solution space. In this paper, an optimized target search strategy relying on GAs and exploiting an evolutionary approach for the computation of the IVF is presented. The proposed methodology was validated on several data sets, and it was compared against the original IVF implementation by Bal and Alam. Experimental results showed that the proposed approach is capable of significantly improving performances by dramatically reducing algorithm processing time.
机译:前视红外(FLIR)图像中的自动目标跟踪是计算机视觉中一个具有挑战性的研究领域。当必须考虑实时需求时,该任务甚至可能变得更加关键。在这种情况下,利用强度变化函数(IVF)生成的目标强度分布的技术被证明能够提供重要的结果。但是,它们的主要限制之一是由相关的计算成本来表示的。本文提出了一种基于遗传算法的替代方法。遗传算法是基于进化计算的搜索方法,可利用受遗传变异和自然选择规则启发的算子。其创始人J.H.Holland已证明它们在复杂空间搜索方面具有理论和经验上的优势。与大多数优化技术(其目标是将性能提高到最佳状态)相反,GA旨在通过在解决方案空间中执行并行搜索来找到接近最佳的解决方案。本文提出了一种基于遗传算法的优化目标搜索策略,并采用了一种进化的方法来进行IVF的计算。所提出的方法已在多个数据集上得到验证,并且与Bal和Alam最初的IVF实施方法进行了比较。实验结果表明,该方法能够通过显着减少算法处理时间来显着提高性能。

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