Emergence Model of Perception With Global-Contour Precedence Based on Gestalt Theory and Primary Visual Cortex

Jingmeng Li;Hui Wei
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Abstract

Perceptual edge grouping is a technique for organizing the cluttered edge pixels into meaningful structures and further serves high-level vision tasks, which has long been a basic and critical task in computer vision. Existing methods usually have a poor performance when coping with the junctions caused by occlusion and noise in natural images. In this paper, we present GPGrouper, a perceptual edge grouping model based on gestalt theory and the primary visual cortex (V1). Different from the existing methods, GPGrouper leverages the edge representation and grouping matrix (ERGM), a functional structure inspired by V1 mechanisms, to represent edges in a way that can effectively reduce grouping errors caused by occlusion between objects. ERGM is trained with natural image contours and further provides a priori guidance for the construction of the edge connection graph (ECG) that is useful to minimize the impact of noise on grouping. In the experiment, we compared GPGrouper and the state-of-the-art (SOTA) method of perceptual grouping on the visual psychology pathfinder challenge. The results demonstrate that GPGrouper outperforms the SOTA method in grouping performance. Furthermore, in the grouping experiments involving line segments with varying lengths detected by the Line Segment Detector (LSD), as well as those involving superpixel segmentation results with significant levels of interfering noise using the SLIC algorithm, GPGrouper was superior to the existing methods in terms of grouping effect and robustness. Moreover, the results of applying the grouping results to the vision tasks objectness demonstrate that GPGrouper can contribute significantly to high-level visual tasks.
基于格式塔理论和初级视觉皮层的全局轮廓优先感知涌现模型
感知边缘分组是一种将混乱的边缘像素组织成有意义的结构,进而服务于高级视觉任务的技术,一直是计算机视觉的基础和关键任务。现有的方法在处理自然图像中由遮挡和噪声引起的连接点时,通常表现不佳。本文提出了一种基于格式塔理论和初级视觉皮层(V1)的感知边缘分组模型GPGrouper。与现有方法不同的是,GPGrouper利用边缘表示和分组矩阵(ERGM)这一受V1机制启发的功能结构来表示边缘,可以有效地减少物体之间遮挡造成的分组错误。ERGM使用自然图像轮廓进行训练,并进一步为边缘连接图(ECG)的构建提供先验指导,有助于最小化噪声对分组的影响。在实验中,我们比较了GPGrouper和最先进的感知分组方法(SOTA)在视觉心理探路者挑战中的表现。结果表明,GPGrouper在分组性能上优于SOTA方法。此外,在LSD检测到的不同长度线段的分组实验中,以及在SLIC算法对具有显著干扰噪声的超像素分割结果的分组实验中,GPGrouper在分组效果和鲁棒性方面都优于现有方法。此外,将分组结果应用于视觉任务对象的结果表明,GPGrouper对高级视觉任务有显著的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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