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Constructing Adaptive Complex Cells for Robust Visual Tracking

机译:构建适应性复杂单元以实现强大的视觉跟踪

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Representation is a fundamental problem in object tracking. Conventional methods track the target by describing its local or global appearance. In this paper we present that, besides the two paradigms, the composition of local region histograms can also provide diverse and important object cues. We use cells to extract local appearance, and construct complex cells to integrate the information from cells. With different spatial arrangements of cells, complex cells can explore various contextual information at multiple scales, which is important to improve the tracking performance. We also develop a novel template-matching algorithm for object tracking, where the template is composed of temporal varying cells and has two layers to capture the target and background appearance respectively. An adaptive weight is associated with each complex cell to cope with occlusion as well as appearance variation. A fusion weight is associated with each complex cell type to preserve the global distinctiveness. Our algorithm is evaluated on 25 challenging sequences, and the results not only confirm the contribution of each component in our tracking system, but also outperform other competing trackers.
机译:表示是对象跟踪中的一个根本问题。传统方法通过描述其本地或全球外观来跟踪目标。在本文中,我们介绍,除了两个范式之外,局部区域直方图的组成还可以提供多样化和重要的对象提示。我们使用单元格提取本地外观,并构建复杂的单元格来集成来自小区的信息。具有不同的细胞空间布置,复杂的细胞可以在多个尺度处探索各种上下文信息,这对于提高跟踪性能很重要。我们还开发了一种用于对象跟踪的新型模板匹配算法,其中模板由时间变化单元组成,并且分别具有两层捕获目标和背景外观。自适应重量与每个复杂的细胞相关联,以应对闭塞以及外观变化。融合重量与每个复杂的细胞类型相关联,以保持全局的独特性。我们的算法在25个挑战性序列中进行了评估,结果不仅确认了我们跟踪系统中每个组件的贡献,而且还优于其他竞争跟踪器。

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