Despite the great success of Siamese-based trackers, their performance under complicated scenarios is still not satisfying, especially when there are distractors. To this end, we propose a novel Siamese relation network, which introduces two efficient modules, i.e. Relation Detector (RD) and Refinement Module (RM). RD performs in a meta-learning way to obtain a learning ability to filter the distractors from the background while RM aims to effectively integrate the proposed RD into the Siamese framework to generate accurate tracking result. Moreover, to further improve the discriminability and robustness of the tracker, we introduce a contrastive training strategy that attempts not only to learn matching the same target but also to learn how to distinguish the different objects. Therefore, our tracker can achieve accurate tracking results when facing background clutters, fast motion, and occlusion. Experimental results on five popular benchmarks, including VOT2018, VOT2019, OTB100, LaSOT, and UAV123, show that the proposed method is effective and can achieve state-of-the-art results. The code will be available at https://github.com/hqucv/siamrn
翻译:尽管以暹罗为基地的跟踪者取得了巨大成功,但它们在复杂的情景下的表现仍然不尽人意,特别是在有分流器的情况下。为此,我们提议建立一个新型的暹罗关系网络,引入两个高效模块,即关系探测器(RD)和精炼模块(RM)。RD以元化学习方式运行,以获得从背景中过滤分流器的学习能力,而RM旨在有效地将拟议的RD纳入Siame框架,以产生准确的跟踪结果。此外,为了进一步改善追踪器的可调和性和稳健性,我们引入了一个对比式的培训战略,不仅试图学习匹配同一目标,而且还学习如何区分不同对象。因此,我们的跟踪器可以在面临背景的断层、快速运动和封闭时实现准确的跟踪结果。关于五个流行基准的实验结果,包括VOT2018、VOT2019、OT100、LASOT100和UAV123, 显示拟议的方法是有效的,能够实现州-艺术结果。代码将在 https://giv/qrmasia提供。