由关注模块和关系检测模块组成的暹罗网络跟踪器

Xiaohan Liu, Aimin Li, Deqi Liu, Dexu Yao, Mengfan Cheng
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引用次数: 1

摘要

近年来,基于Siamese网络的目标跟踪技术表现出了良好的跟踪性能。然而,在跟踪过程中,会有许多相似的对象,由于网络的判别能力较弱,很容易跟踪到错误的对象。同时,siamrpn++的分类和回归通常是独立优化的,这会造成不匹配问题,即分类置信度最高的位置不一定是目标。为了解决这些问题,我们提出了一种由关注模块和关系检测模块(SiamAR)组成的Siamese网络跟踪器。首先,在siamrpn++中引入多尺度注意机制,捕获不同尺度的信息,融合空间注意和通道注意,提高特征信息的学习能力;不仅获得了不同的感受野,而且有用的特征被选择性地聚焦,不太有用的特征被抑制。为了不影响计算效率,采用分组并行计算的方法。其次,我们在跟踪器中加入关系检测模块,过滤掉背景中的干扰物,并在杂乱的背景中区分目标。实验结果表明,该算法在跟踪精度和鲁棒性方面优于几种已知的跟踪算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Siamese Network Tracker by Attention Module and Relation Detector Module
In recent years, object tracking techniques based on Siamese networks have shown excellent tracking performance. However, in the tracking process, there will be many similar objects, and it is easy to track the wrong object due to the weak discriminative ability of the network. At the same time, the classification and regression of SiamRPN ++ are usually optimized independently, which will cause a mismatch problem, that is, the location with the highest classification confidence is not necessarily the object. To address these problems, we proposed a Siamese network tracker by attention module and relation detector module (SiamAR). First, we introduce a multi-scale attention mechanism in SiamRPN++ to capture information at different scales, and fuse spatial attention and channel attention to improving the ability to learn feature information. Not only different receptive fields are obtained, but also useful features are selectively focused and less useful features are suppressed. In order not to affect the computational efficiency, the method of grouping parallel computing is used. Secondly, we add a relation detector module to our tracker to filter out distractors from the background and distinguish the object in the cluttered background. Experiment results show that our algorithm out-performs several well-known tracking algorithms in terms of tracking accuracy and robustness.
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