利用lgem训练的SSVM进行遮挡下的目标跟踪

Anqi Lin, Tingyang Wei, Wing W. Y. Ng
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引用次数: 2

摘要

自适应检测跟踪方法在计算机视觉中被广泛应用于目标跟踪。hit跟踪被称为避免不明确的中间标记步骤,并利用SMO和预算机制进行更新。然而,固定预算是不灵活的和启发式的,优化循环容易导致支持向量机过度拟合,并且具有特定特征的三个核的固定组合削弱了扩展能力。此外,快速更新会导致遮挡下的错误学习,将之前的“负”样本视为当前的“正”样本,并将跟踪器漂移到“负”样本上。本文提出了一种基于单核打击和局部泛化误差模型(LGEM)的框架。通过比较不同结构的结构化输出支持向量机(SSVM)的$Q$值并控制更新循环,实现了最优性和泛化的权衡。此外,通过测量$Q$值的波动,选择合适的新样本进行更新,将跟踪简化为使用单个高斯核进行进一步的潜在扩展。因此,构造了一个更广义的、克服遮挡的跟踪器。实验表明,我们的算法能够在各种基准视频的遮挡处理上优于最先进的跟踪器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Tracking Under Occlusion Using LGEM-Trained SSVM
Adaptive tracking-by-detection methods are widely used in computer vision for object tracking. Struck tracking is known as avoiding unclear intermediate labeling steps, and utilizing both the SMO and the budgeting mechanism for updating. However, the fixed budget is inflexible and heuristic, and the optimization-loop easily leads SVMs to overfitting, and the fixed combination of three kernels with specified features weakens extension capabilities. Furthermore, the quick update causes wrong learning under occlusion, considering previous “negative” samples as the current “positive” samples and drifting the tracker to that “neg-ative” samples. In this paper, we present a framework based on both the one-kernel Struck and the Localized Generalization Error Model (LGEM). By comparing the $Q$ values of Structured output SVM (SSVM) with different structures and con-troling the updating loops, a tradeoff the Optimality and Generalization is realized. Moreover, via measuring the fluctuation on $Q$ value, suitable new samples are selected for updating, tracking is simplified into using a single Gaussian kernel for further potential extension. As a result, a more generalized, occlusion-overcoming tracker is constructed. Experimentally, our algorithm is shown to be able to outperform state-of-the-art trackers on occlusion handle on various benchmark videos.
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