On Reflection Symmetry In Natural Images

Alessandro Gnutti, Fabrizio Guerrini, R. Leonardi
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引用次数: 3

Abstract

Many new symmetry detection algorithms have been recently developed, thanks to an interest revival on computational symmetry for computer graphics and computer vision applications. Notably, in 2013 the IEEE CVPR Conference organized a dedicated workshop and an accompanying symmetry detection competition. In this paper we propose an approach for symmetric object detection that is based both on the computation of a symmetry measure for each pixel and on saliency. The symmetry value is obtained as the energy balance of the even-odd decomposition of a patch w.r.t. each possible axis. The candidate symmetry axes are then identified through the localization of peaks along the direction perpendicular to each considered axis orientation. These found candidate axes are finally evaluated through a confidence measure that also allow removing redundant detected symmetries. The obtained results within the framework adopted in the aforementioned competition show significant performance improvement.
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论自然图像中的反射对称性
由于计算机图形学和计算机视觉应用对计算对称性的兴趣复兴,最近开发了许多新的对称检测算法。值得注意的是,2013年IEEE CVPR会议组织了一个专门的研讨会和相应的对称检测竞赛。在本文中,我们提出了一种基于计算每个像素的对称度量和显著性的对称目标检测方法。对称值是一个贴片在每个可能的轴上的奇偶分解的能量平衡。然后通过沿垂直于每个考虑的轴方向的峰的定位来识别候选对称轴。这些发现的候选轴最终通过一个置信度措施进行评估,该措施也允许删除冗余检测到的对称性。在上述竞赛所采用的框架内获得的结果显示出显著的性能提升。
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