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首页> 外文期刊>Concurrency and computation: practice and experience >Online visual tracking via cross-similarity-based siamese network
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Online visual tracking via cross-similarity-based siamese network

机译:通过跨相似性暹罗网络在线视觉跟踪

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摘要

Among deep-learning-based trackers, the siamese-based method inspires many researchers due to its effectiveness and simplicity. However, the traditional siamese tracker has not achieved satisfactory performance due to the limited representation ability and the lack of appropriate model update strategy. To cover the shortage of siamese models, we proposed a cross-similarity-based siamese network with three contributions. First, we introduce a novel cross similarity module into the SiameseFC framework, which could improve the matching ability of fully convolutional networks during the tracking process. Second, we propose a novel attention weighting layer to emphasize various contributions of matching scores in different positions. This adaptive attention weighting scheme makes our tracker well adapt to the appearance change caused by pose variation, partial occlusion, and so on. Third, we develop a simple yet effective model update strategy, which exploits an independent classification model to invoke the model fine-tuning process. Experimental results on the standard tracking benchmark show that our tracker performs much better than the baseline SiameseFC method and also achieves promising results in comparisons to other state-of-the-art algorithms.
机译:在基于深度学习的跟踪器中,暹罗的方法由于其有效性和简单而激发了许多研究人员。然而,由于有限的代表能力和缺乏适当的型号更新策略,传统的暹罗跟踪器尚未实现令人满意的性能。为了涵盖暹罗模型的短缺,我们提出了一个具有三个贡献的跨相似性的暹罗网络。首先,我们将一个新的交叉相似模块介绍到暹罗福尔框架中,这可以在跟踪过程中提高完全卷积网络的匹配能力。其次,我们提出了一种新的注意力层,以强调不同位置匹配分数的各种贡献。这种自适应注意力加权方案使我们的跟踪器适应由姿势变化,部分闭塞等引起的外观变化。第三,我们开发了一个简单而有效的模型更新策略,它利用独立的分类模型来调用模型微调过程。标准跟踪基准测试的实验结果表明,我们的跟踪器比基准暹罗法表现得多,并且还实现了对其他最先进算法的比较结果。

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