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Discriminative Metric Preservation for Tracking Low-Resolution Targets

机译:区分度量标准保留,用于跟踪低分辨率目标

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摘要

Tracking low-resolution (LR) targets is a practical yet quite challenging problem in real video analysis applications. Lack of discriminative details in the visual appearance of the LR target leads to the matching ambiguity, which confronts most existing tracking methods. Although artificially enhancing the video resolution by superresolution (SR) techniques before analyzing might be an option, the high demand of computational cost can hardly meet the requirements of the tracking scenario. This paper presents a novel solution to track LR targets without explicitly performing SR. This new approach is based on discriminative metric preservation that preserves the data affinity structure in the high-resolution (HR) feature space for effective and efficient matching of LR images. In addition, we substantialize this new approach in a solid case study of differential tracking under metric preservation and derive a closed-form solution to motion estimation for LR video. In addition, this paper extends the basic linear metric preservation method to a more powerful nonlinear kernel metric preservation method. Such a solution to LR target tracking is discriminative, robust, and efficient. Extensive experiments validate the entrustments and effectiveness of the proposed approach and demonstrate the improved performance of the proposed method in tracking LR targets.
机译:在真实视频分析应用中,跟踪低分辨率(LR)目标是一个实际但颇具挑战性的问题。 LR目标的视觉外观缺乏区分性细节会导致匹配模糊性,这是大多数现有跟踪方法所面临的。尽管在分析之前通过超分辨率(SR)技术人为地提高视频分辨率可能是一种选择,但对计算成本的高要求几乎无法满足跟踪方案的要求。本文提出了一种无需明确执行SR即可跟踪LR目标的新颖解决方案。此新方法基于判别性度量保留,该度量保留了高分辨率(HR)特征空间中的数据亲和力结构,以实现LR图像的有效匹配。此外,我们在度量保留下的差分跟踪的可靠案例研究中充分利用了这种新方法,并导出了用于LR视频运动估计的闭式解决方案。另外,本文将基本的线性度量保存方法扩展为更强大的非线性核度量保存方法。 LR目标跟踪的这种解决方案具有区别性,鲁棒性和高效性。大量实验验证了该方法的有效性和有效性,并证明了该方法在跟踪LR目标方面的改进性能。

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