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Improved dual-mode compressive tracking integrating balanced colour and texture features

机译:改进的双模式压缩跟踪,融合了平衡的颜色和纹理特征

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摘要

Discriminative tracking methods can achieve state-of-the-art performance by considering tracking as a classification problem tackled with both object and background information. As a high efficient discriminative tracker, compressive tracking (CT) has attracted much attention recently. However, it may easily fail when the object suffers from long-term occlusions, and severe appearance and illumination changes. To address these issues, the authors develop a robust tracking framework based on CT by considering balanced feature representation as well as dual-mode classifier construction. First, the original measurement matrix of CT works as a dominated texture feature extractor. To obtain a balanced feature representation, they propose to induce a complementary measurement matrix by considering both texture and colour features. Then, they develop two classifiers (dual mode) by using previous and current sample sets, respectively, and subsequently combine them into one ensemble classifier to track the target, which can help to avoid tracking failure suffering from severe appearance changes and long term occlusion. Moreover, they propose a classifier updating schema to prevent the inclusion of unsatisfied positive samples by predicting the occlusions with their ensemble classifier. The extensive experiments demonstrate the superior performance of their tracking framework under various situations.
机译:通过将跟踪视为对象和背景信息都可以解决的分类问题,判别跟踪方法可以实现最先进的性能。作为一种高效的判别跟踪器,压缩跟踪(CT)最近引起了很多关注。但是,如果物体长期被遮挡,并且外观和照明发生严重变化,则很容易发生故障。为了解决这些问题,作者通过考虑平衡特征表示以及双模式分类器构造,开发了基于CT的鲁棒跟踪框架。首先,CT的原始测量矩阵充当主要的纹理特征提取器。为了获得平衡的特征表示,他们建议通过同时考虑纹理和颜色特征来引入互补的测量矩阵。然后,他们分别使用先前的样本集和当前的样本集来开发两个分类器(双模式),然后将它们组合到一个整体分类器中以跟踪目标,这有助于避免跟踪因外观严重变化和长期遮挡而造成的故障。此外,他们提出了一种分类器更新方案,以通过使用其整体分类器预测遮挡来防止包含不满意的阳性样本。大量的实验证明了其跟踪框架在各种情况下的优越性能。

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