Image Segmentation via Convolution of a Level-Set Function with a Rigaut Kernel.

Ozlem N Subakan, Baba C Vemuri
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引用次数: 11

Abstract

Image segmentation is a fundamental task in Computer Vision and there are numerous algorithms that have been successfully applied in various domains. There are still plenty of challenges to be met with. In this paper, we consider one such challenge, that of achieving segmentation while preserving complicated and detailed features present in the image, be it a gray level or a textured image. We present a novel approach that does not make use of any prior information about the objects in the image being segmented. Segmentation is achieved using local orientation information, which is obtained via the application of a steerable Gabor filter bank, in a statistical framework. This information is used to construct a spatially varying kernel called the Rigaut Kernel, which is then convolved with the signed distance function of an evolving contour (placed in the image) to achieve segmentation. We present numerous experimental results on real images, including a quantitative evaluation. Superior performance of our technique is depicted via comparison to the state-of-the-art algorithms in literature.

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基于Rigaut核的水平集函数卷积的图像分割。
图像分割是计算机视觉的一项基本任务,已有许多算法在各个领域得到了成功的应用。仍有许多挑战需要应对。在本文中,我们考虑了这样一个挑战,即在保持图像中存在的复杂和详细特征(无论是灰度还是纹理图像)的同时实现分割。我们提出了一种新的方法,它不利用任何关于被分割图像中物体的先验信息。在统计框架中,通过应用可导向Gabor滤波器组获得局部方向信息来实现分割。这些信息被用来构造一个空间变化的核,称为Rigaut核,然后与一个不断发展的轮廓(放置在图像中)的带符号距离函数卷积以实现分割。我们提出了大量的实验结果在真实的图像,包括定量评估。通过与文献中最先进的算法的比较,描述了我们技术的优越性能。
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