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LPCF: Robust Correlation Tracking via Locality Preserving Tracking Validation

机译:LPCF:通过定位保存跟踪验证的鲁棒相关跟踪

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摘要

In visual tracking, the tracking model must be updated online, which often leads to undesired inclusion of corrupted training samples, and hence inducing tracking failure. We present a locality preserving correlation filter (LPCF) integrating a novel and generic decontamination approach, which mitigates the model drift problem. Our decontamination approach maintains the local neighborhood feature points structures of the bounding box center. This proposed tracking-result validation approach models not only the spatial neighborhood relationship but also the topological structures of the bounding box center. Additionally, a closed-form solution to our approach is derived, which makes the tracking-result validation process could be accomplished in only milliseconds. Moreover, a dimensionality reduction strategy is introduced to improve the real-time performance of our translation estimation component. Comprehensive experiments are performed on OTB-2015, LASOT, TrackingNet. The experimental results show that our decontamination approach remarkably improves the overall performance by 6.2%, 12.6%, and 3%, meanwhile, our complete algorithm improves the baseline by 27.8%, 34.8%, and 15%. Finally, our tracker achieves the best performance among most existing decontamination trackers under the real-time requirement.
机译:在视觉跟踪中,跟踪模型必须在线更新,这通常会导致不希望的培训样本包含损坏的培训样本,从而导致跟踪失败。我们介绍了集成新颖和通用去污方法的相关相关滤波器(LPCF),这会减轻模型漂移问题。我们的去污方法维护了边界盒中心的本地邻域特征点结构。这提出的跟踪结果验证方法不仅模型不仅是空间邻域关系,而且是边界箱中心的拓扑结构。另外,导出了我们方法的闭合形式解决方案,这使得跟踪结果验证过程可以仅在毫秒内完成。此外,引入了维度减少策略,以改善翻译估计组件的实时性能。综合实验是在OTB-2015,LASOT,TrackingNet上进行的。实验结果表明,我们的去污方法显着提高了6.2%,12.6%和3%的整体性能,同时,我们的完整算法将基线提高了27.8%,34.8%和15%。最后,我们的跟踪器在实时要求下实现了大多数现有的去污跟踪器之间的最佳性能。

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