On learning texture edge detectors

Stefan Will, L. Hermes, J. Buhmann, J. Puzicha
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引用次数: 25

Abstract

Texture is an inherently non-local image property. All common texture descriptors, therefore, have a significant spatial support which renders classical edge detection schemes inadequate for the detection of texture boundaries. In this paper we propose a novel scheme to learn filters for texture edge detection. Textures are defined by the statistical distribution of Gabor filter responses. Optimality criteria for detection reliability and localization accuracy are suggested in the spirit of Canny's edge detector. Texture edges are determined as zero crossings of the difference of the two a posteriori class distributions. An optimization algorithm is designed to determine the best filter kernel according to the underlying quality measure. The effectiveness of the approach is demonstrated on texture mondrians composed from the Brodatz album and a series of synthetic aperture radar (SAR) imagery. Moreover, we indicate how the proposed scheme can be combined with snake-type algorithms for prior-knowledge driven boundary refinement and interactive annotation.
学习纹理边缘检测器
纹理是一种固有的非局部图像属性。因此,所有常见的纹理描述符都具有显著的空间支持,这使得经典的边缘检测方案不足以检测纹理边界。本文提出了一种新的纹理边缘检测滤波器学习方法。纹理由Gabor滤波器响应的统计分布来定义。在Canny边缘检测器的基础上,提出了检测可靠性和定位精度的最优准则。纹理边缘被确定为两个后验类分布之差的零交叉点。设计了一种优化算法,根据潜在的质量度量来确定最佳的滤波核。在Brodatz相册和一系列合成孔径雷达(SAR)图像上验证了该方法的有效性。此外,我们还指出了该方案如何与蛇形算法相结合,用于先验知识驱动的边界细化和交互式标注。
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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