利用可变形圆盘模型检测弯曲对称零件

T. S. Lee, S. Fidler, Sven J. Dickinson
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引用次数: 42

摘要

对称性是一种强大的形状规则,被人类和计算机视觉的感知分组研究人员利用,在没有先验的场景内容知识的情况下,从图像中恢复部分结构。根据中轴线的概念(定义为扫描对称部分的最大内切盘的中心轨迹),我们将部分恢复建模为搜索由多尺度超像素分割(由LEV09提出的框架)生成的一系列可变形的最大内切盘假设。然而,我们在一个沿对称轴弯曲和变细不变的空间中学习相邻超级像素之间的亲和力,使我们能够捕获更广泛的对称部分。此外,我们引入了一个全局代价,该代价通过结合对和更高级别平滑项来感知地集成假设空间,并使用动态规划对其进行全局最小化。新框架在两个数据集上进行了演示,并被证明显著优于基线水平。
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Detecting Curved Symmetric Parts Using a Deformable Disc Model
Symmetry is a powerful shape regularity that's been exploited by perceptual grouping researchers in both human and computer vision to recover part structure from an image without a priori knowledge of scene content. Drawing on the concept of a medial axis, defined as the locus of centers of maximal inscribed discs that sweep out a symmetric part, we model part recovery as the search for a sequence of deformable maximal inscribed disc hypotheses generated from a multiscale super pixel segmentation, a framework proposed by LEV09. However, we learn affinities between adjacent super pixels in a space that's invariant to bending and tapering along the symmetry axis, enabling us to capture a wider class of symmetric parts. Moreover, we introduce a global cost that perceptually integrates the hypothesis space by combining a pair wise and a higher-level smoothing term, which we minimize globally using dynamic programming. The new framework is demonstrated on two datasets, and is shown to significantly outperform the baseline LEV09.
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