通过解缠格式塔原则的知觉分组

Yonggang Qi, Jun Guo, Yi Li, Honggang Zhang, T. Xiang, Yi-Zhe Song, Z. Tan
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引用次数: 2

摘要

格式塔原则是一套源自人类视觉研究的连接规则,在计算机视觉中发挥着重要作用。许多应用,如图像分割,轮廓分组和场景理解往往依赖于这些规则的工作。然而,格式塔冲突的问题,即每个规则相对于另一个规则的相对重要性,仍然没有得到解决。本文通过量化三种常用规则:相似性、连续性和接近性之间的冲突来研究感知分组问题。更具体地说,我们建议通过解决一个学习排序问题来量化格式塔规则的重要性,并制定一个多标签图切割算法来对图像原语进行分组,同时考虑到学习到的格式塔冲突。我们的实验结果证实了感知分组中格式塔冲突的存在,并证明了通过所提出的分组算法考虑这种冲突后的性能有所提高。最后,提出了一种利用感知分组作为表示的跨域图像分类方法。
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Perceptual grouping via untangling Gestalt principles
Gestalt principles, a set of conjoining rules derived from human visual studies, have been known to play an important role in computer vision. Many applications such as image segmentation, contour grouping and scene understanding often rely on such rules to work. However, the problem of Gestalt confliction, i.e., the relative importance of each rule compared with another, remains unsolved. In this paper, we investigate the problem of perceptual grouping by quantifying the confliction among three commonly used rules: similarity, continuity and proximity. More specifically, we propose to quantify the importance of Gestalt rules by solving a learning to rank problem, and formulate a multi-label graph-cuts algorithm to group image primitives while taking into account the learned Gestalt confliction. Our experiment results confirm the existence of Gestalt confliction in perceptual grouping and demonstrate an improved performance when such a confliction is accounted for via the proposed grouping algorithm. Finally, a novel cross domain image classification method is proposed by exploiting perceptual grouping as representation.
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