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Optimization of Correlation Filters Using Extended Particle Swarm Optimization Technique

机译:使用扩展粒子群优化技术优化相关滤波器

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摘要

In the past few decades, the field of image processing has seen a rapid advancement in the correlation filters, which serves as a very promising tool for object detection and recognition. Mostly, complex filter equations are used for deriving the correlation filters, leading to a filter solution in a closed loop. Selection of optimal tradeoff (OT) parameters is crucial for the effectiveness of correlation filters. This paper proposes extended particle swarm optimization (EPSO) technique for the optimal selection of OT parameters. The optimal solution is proposed based on two cost functions. The best result for each target is obtained by applying the optimization technique separately. The obtained results are compared with the conventional particle swarm optimization method for various test images belonging from different state-of-the-art datasets. The obtained results depict the performance of filters improved significantly using the proposed optimization method.
机译:在过去的几十年中,图像处理领域已经看到相关滤波器的快速进步,其用作对象检测和识别的非常有前途的工具。 大多数情况下,复杂的滤波器方程用于导出相关滤波器,导致闭环中的滤波器解决方案。 选择最佳权衡(OT)参数对于相关滤波器的有效性至关重要。 本文提出了扩展粒子群优化(EPSO)技术,用于最佳选择OT参数。 基于两个成本函数提出最佳解决方案。 通过单独应用优化技术获得每个目标的最佳结果。 将获得的结果与来自不同最先进的数据集的各种测试图像的常规粒子群优化方法进行比较。 所获得的结果描绘了使用所提出的优化方法显着改善过滤器的性能。

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