Complementary tracker's fusion for robust visual tracking

S. Kakanuru, Madan Kumar Rapuru, Deepak Mishra, R. S. S. Gorthi
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引用次数: 2

Abstract

Though visual object tracking algorithms are capable of handling various challenging scenarios individually, still none of them is robust enough to handle all the challenges simultaneously. This paper aims at proposing a novel robust tracking algorithm by elegantly fusing the frame level detection strategy of Tracking Learning & Detection (TLD) with systematic model update strategy of Kernelized Correlation Filter tracker (KCF). The motivation behind the selection of trackers is their complementary nature in handling tracking challenges. The proposed algorithm efficiently combines the two tracking algorithms based on conservative correspondence measure with strategic model updates, which takes advantages of both and outperforms them on their short-ends by the virtue of other. The proposed fusion approach is quite general and any complimentary tracker (not just KCF) can be fused with TLD to leverage the best performance. Extensive evaluation of the proposed method based on different metrics is carried out on the datasets ALOV300++, Online Tracking Benchmark (OTB) and Visual Object Tracking (VOT2015) and demonstrated its superiority in terms of robustness and success rate by comparing with state-of-the-art trackers.
互补跟踪融合的鲁棒视觉跟踪
虽然视觉目标跟踪算法能够单独处理各种具有挑战性的场景,但它们都没有足够的鲁棒性来同时处理所有的挑战。本文将跟踪学习与检测(TLD)的帧级检测策略与核化相关滤波跟踪器(KCF)的系统模型更新策略巧妙融合,提出一种新的鲁棒跟踪算法。选择跟踪器背后的动机是它们在处理跟踪挑战方面的互补性。该算法有效地将两种基于保守对应度量和策略模型更新的跟踪算法结合起来,既发挥了两者的优点,又以其短端优势胜过它们。所提出的融合方法是非常通用的,任何免费的跟踪器(不仅仅是KCF)都可以与TLD融合,以利用最佳性能。在alov300++、在线跟踪基准(Online Tracking Benchmark, OTB)和视觉目标跟踪(Visual Object Tracking, VOT2015)数据集上对该方法进行了基于不同指标的广泛评估,并与最先进的跟踪器进行了比较,证明了该方法在鲁棒性和成功率方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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