基于水平集和对称性的分割

Tammy Riklin-Raviv, N. Kiryati, N. Sochen
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引用次数: 45

摘要

形状对称是图像理解的重要线索。在没有更详细的先验形状信息的情况下,对称可以显著地促进分割。然而,当对称被透视扭曲时,对称的检测变得非常重要,从而使对称辅助分割变得复杂。我们提出了一种适合透视失真的对称物体分割的原始方法。关键思想是使用由对称引起的复制形式来完成具有挑战性的分割任务。这是通过基于图像梯度、灰度或颜色动态提取物体边界来实现的,同时将图像对称对应物(例如反射)配准到自身。通过解决由于噪声、杂波、失真、阴影、遮挡和与背景的同化而可能产生的歧义,不断变化的物体轮廓的对称对口支持分割。对称约束被集成到一个综合的水平集函数中,用于分割,确定描绘轮廓的演变。该框架在各种不对称物体的图像上进行了实例验证,并证明了其相对于目前最先进的变分分割技术的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation by Level Sets and Symmetry
Shape symmetry is an important cue for image understanding. In the absence of more detailed prior shape information, segmentation can be significantly facilitated by symmetry. However, when symmetry is distorted by perspectivity, the detection of symmetry becomes non-trivial, thus complicating symmetry-aided segmentation. We present an original approach for segmentation of symmetrical objects accommodating perspective distortion. The key idea is the use of the replicative form induced by the symmetry for challenging segmentation tasks. This is accomplished by dynamic extraction of the object boundaries, based on the image gradients, gray levels or colors, concurrently with registration of the image symmetrical counterpart (e.g. reflection) to itself. The symmetrical counterpart of the evolving object contour supports the segmentation by resolving possible ambiguities due to noise, clutter, distortion, shadows, occlusions and assimilation with the background. The symmetry constraint is integrated in a comprehensive level-set functional for segmentation that determines the evolution of the delineating contour. The proposed framework is exemplified on various images of skewsymmetrical objects and its superiority over state of the art variational segmentation techniques is demonstrated.
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