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Real-Time Object Tracking via Adaptive Correlation Filters

机译:通过自适应相关滤波器实时对象跟踪

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摘要

Although correlation filter-based trackers (CFTs) have made great achievements on both robustness and accuracy, the performance of trackers can still be improved, because most of the existing trackers use either a sole filter template or fixed features fusion weight to represent a target. Herein, a real-time dual-template CFT for various challenge scenarios is proposed in this work. First, the color histograms, histogram of oriented gradient (HOG), and color naming (CN) features are extracted from the target image patch. Then, the dual-template is utilized based on the target response confidence. Meanwhile, in order to solve the various appearance variations in complicated challenge scenarios, the schemes of discriminative appearance model, multi-peaks target re-detection, and scale adaptive are integrated into the proposed tracker. Furthermore, the problem that the filter model may drift or even corrupt is solved by using high confidence template updating technique. In the experiment, 27 existing competitors, including 16 handcrafted features-based trackers (HFTs) and 11 deep features-based trackers (DFTs), are introduced for the comprehensive contrastive analysis on four benchmark databases. The experimental results demonstrate that the proposed tracker performs favorably against state-of-the-art HFTs and is comparable with the DFTs.
机译:虽然基于相关滤波器的跟踪器(CFT)对稳健性和准确性进行了巨大成就,但仍然可以提高跟踪器的性能,因为大多数现有的跟踪器使用唯一的过滤器模板或固定特征融合来表示目标。这里,在这项工作中提出了一种用于各种挑战情景的实时双模板CFT。首先,从目标图像贴片中提取取向梯度(Hog)和颜色命名(CN)特征的颜色直方图。然后,基于目标响应置信度使用双模板。同时,为了解决复杂挑战情景的各种外观变化,鉴别外观模型的方案,多峰目标重新检测和比例自适应被集成到所提出的跟踪器中。此外,通过使用高置信模板更新技术解决了滤波器模型可以漂移甚至腐败的问题。在实验中,现有的27个竞争对手,包括16个由基于手工特性的跟踪器(HFTS)和11个基于深度特征的跟踪器(DFTS),用于四个基准数据库的综合对比分析。实验结果表明,所提出的跟踪器对最先进的HFTS进行有利地执行,并且与DFT相当。

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