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Learning Aberrance Repressed Correlation Filters for Real-Time UAV Tracking

机译:学习用于自动UAV跟踪的异常控制的相关滤波器

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Traditional framework of discriminative correlation filters (DCF) is often subject to undesired boundary effects. Several approaches to enlarge search regions have been already proposed in the past years to make up for this shortcoming. However, with excessive background information, more background noises are also introduced and the discriminative filter is prone to learn from the ambiance rather than the object. This situation, along with appearance changes of objects caused by full/partial occlusion, illumination variation, and other reasons has made it more likely to have aberrances in the detection process, which could substantially degrade the credibility of its result. Therefore, in this work, a novel approach to repress the aberrances happening during the detection process is proposed, i.e., aberrance repressed correlation filter (ARCF). By enforcing restriction to the rate of alteration in response maps generated in the detection phase, the ARCF tracker can evidently suppress aberrances and is thus more robust and accurate to track objects. Considerable experiments are conducted on different UAV datasets to perform object tracking from an aerial view, i.e., UAV123, UAVDT, and DTB70, with 243 challenging image sequences containing over 90K frames to verify the performance of the ARCF tracker and it has proven itself to have outperformed other 20 state-of-the-art trackers based on DCF and deep-based frameworks with sufficient speed for real-time applications.
机译:判别相关过滤器(DCF)的传统框架经常受到不希望的边界效应的影响。在过去的几年中,已经提出了几种扩大搜索区域的方法来弥补这一缺点。但是,在背景信息过多的情况下,还会引入更多的背景噪声,并且易于从环境中而不是从对象中学习判别式滤波器。这种情况,以及由于完全/部分遮挡,照明变化和其他原因导致的对象外观变化,使得它更可能在检测过程中出现异常,从而可能大大降低其结果的可信度。因此,在这项工作中,提出了一种新颖的方法来抑制在检测过程中发生的像差,即像差抑制相关滤波器(ARCF)。通过对检测阶段生成的响应图中的变化速率实施限制,ARCF跟踪器可以明显地抑制异常,因此可以更稳定,更准确地跟踪对象。在不同的UAV数据集上进行了相当多的实验,以从空中视图进行对象跟踪,即UAV123,UAVDT和DTB70,其中包含243个具有超过90K帧的具有挑战性的图像序列,以验证ARCF跟踪器的性能,并且事实证明它具有基于DCF和基于深度的框架,其他20种最新的跟踪器的性能均优于实时应用。

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