Understanding Tracking Methodology of Kernelized Correlation Filter

Srishti Yadav, S. Payandeh
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引用次数: 4

Abstract

Visual tracking as a field of research has undergone tremendous progress in the past decade. Researchers around the world have presented state-of-art trackers which work in presence of occlusions, clutter, variations in illumination and many others. Despite the significant progress the challenge continues in presenting real-time trackers which are computationally efficient and accurate. Kernelized Correlation Filter (KCF) is one of the recent finding which has shown good results. Based on the idea of traditional correlational filter, it uses kernel trick and circulant matrices to significantly improve the computation speed. Given the complexity of this tracker, a clear step-by-step explanation is highly desirable in order to fully appreciate and expedite the research in real-time visual tracking. This paper aims to make the understanding of this tracker simpler for the benefit of the research community
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了解核化相关滤波器的跟踪方法
视觉跟踪作为一个研究领域,在过去的十年中取得了巨大的进步。世界各地的研究人员已经提出了最先进的跟踪器,可以在遮挡、杂乱、光照变化和许多其他情况下工作。尽管取得了重大进展,但在提供计算效率高且准确的实时跟踪器方面仍然存在挑战。核化相关滤波器(KCF)是近年来取得良好效果的一项新发现。在传统相关滤波思想的基础上,采用核技巧和循环矩阵,大大提高了计算速度。考虑到这种跟踪器的复杂性,为了充分理解和加快实时视觉跟踪的研究,一个清晰的一步一步的解释是非常可取的。本文旨在使这个跟踪器的理解更简单,为研究界的利益
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