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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Extended compressed tracking via random projection based on MSERs and online LS-SVM learning
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Extended compressed tracking via random projection based on MSERs and online LS-SVM learning

机译:通过基于MSER和在线LS-SVM学习的随机投影进行扩展的压缩跟踪

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摘要

The compressed tracking algorithm (CT tracker) is a well-known visual tracking method that models a target object's appearance through sparse random projection. However, the tracking results are not stable and robust due to the randomness of random projection: To solve this problem, a more stable and robust approach is proposed for visual tracking based on maximally stable extremal regions (MSERs), sparse random projection and online least squares SVM classifier (LS-SVM) learning. To obtain a relatively stable appearance model, the stable connected components of an object based on MSERs in image feature space are extracted. With the fusion of MSERs and sparse random projection, we model adaptive object appearance to adapt the variation of appearance. Additionally, an online closed-form LS-SVM is employed to quickly and robustly predict the target object location in a tracking by detection framework. Experimental results on benchmark sequences show the stability and robustness of the proposed algorithm compared with the existing CT-based trackers and other state-of-the-art trackers. (C) 2016 Elsevier Ltd. All rights reserved.
机译:压缩跟踪算法(CT跟踪器)是一种众所周知的视觉跟踪方法,它通过稀疏随机投影对目标对象的外观进行建模。然而,由于随机投影的随机性,跟踪结果不稳定且不稳定:为了解决此问题,提出了一种基于最大稳定极值区域(MSER),稀疏随机投影和在线最小的视觉跟踪的更稳定,更鲁棒的方法。平方SVM分类器(LS-SVM)学习。为了获得相对稳定的外观模型,基于图像特征空间中基于MSER的对象的稳定连接成分被提取。通过MSER和稀疏随机投影的融合,我们对自适应对象外观进行建模以适应外观的变化。另外,采用在线封闭式LS-SVM在检测框架跟踪中快速,稳健地预测目标对象的位置。在基准序列上的实验结果表明,与现有的基于CT的跟踪器和其他最新的跟踪器相比,该算法的稳定性和鲁棒性。 (C)2016 Elsevier Ltd.保留所有权利。

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