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Joint Group Feature Selection and Discriminative Filter Learning for Robust Visual Object Tracking

机译:联合组特征选择和判别式滤波学习,实现可靠的视觉对象跟踪

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We propose a new Group Feature Selection method for Discriminative Correlation Filters (GFS-DCF) based visual object tracking. The key innovation of the proposed method is to perform group feature selection across both channel and spatial dimensions, thus to pinpoint the structural relevance of multi-channel features to the filtering system. In contrast to the widely used spatial regularisation or feature selection methods, to the best of our knowledge, this is the first time that channel selection has been advocated for DCF-based tracking. We demonstrate that our GFS-DCF method is able to significantly improve the performance of a DCF tracker equipped with deep neural network features. In addition, our GFS-DCF enables joint feature selection and filter learning, achieving enhanced discrimination and interpretability of the learned filters. To further improve the performance, we adaptively integrate historical information by constraining filters to be smooth across temporal frames, using an efficient low-rank approximation. By design, specific temporal-spatial-channel configurations are dynamically learned in the tracking process, highlighting the relevant features, and alleviating the performance degrading impact of less discriminative representations and reducing information redundancy. The experimental results obtained on OTB2013, OTB2015, VOT2017, VOT2018 and TrackingNet demonstrate the merits of our GFS-DCF and its superiority over the state-of-the-art trackers. The code is publicly available at url{https://github.com/XU-TIANYANG/GFS-DCF}.
机译:我们提出了一种新的基于歧视性相关过滤器(GFS-DCF)的视觉对象跟踪的组特征选择方法。所提出方法的关键创新是在通道和空间维度上执行组特征选择,从而查明多通道特征与过滤系统的结构相关性。据我们所知,与广泛使用的空间正则化或特征选择方法相反,这是首次提倡基于DCF的跟踪选择信道。我们证明了我们的GFS-DCF方法能够显着提高配备深度神经网络功能的DCF跟踪器的性能。此外,我们的GFS-DCF支持联合特征选择和过滤器学习,从而增强了对所学习过滤器的辨别力和解释性。为了进一步提高性能,我们使用有效的低秩逼近方法,通过将滤波器约束为在时间范围内保持平滑,来自适应地集成历史信息。通过设计,可以在跟踪过程中动态学习特定的时空信道配置,突出显示相关功能,并减轻区分性较小的表示对性能的影响,并减少信息冗余。在OTB2013,OTB2015,VOT2017,VOT2018和TrackingNet上获得的实验结果证明了我们的GFS-DCF的优点及其相对于最新跟踪器的优越性。该代码可在url {https://github.com/XU-TIANYANG/GFS-DCF}上公开获得。

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