纹理分割算法的评价

K. Chang, K. Bowyer, Munish Sivagurunath
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引用次数: 104

摘要

提出了一种评价无监督纹理分割算法的方法。纹理分割的控制方案被概念化为两个模块过程:(1)特征计算和(2)基于特征值的均匀区域分割。考虑了灰度共生矩阵、Laws纹理能量和Gabor多通道滤波三种特征提取方法。本文考虑了三种分割算法:模糊c均值聚类算法、平方误差聚类算法和分割合并算法。编制了一组35张具有手动指定地面真值的真实场景图像。性能使用基于区域和基于像素的性能指标来衡量真实图像的真实情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Texture Segmentation Algorithms
This paper presents a method of evaluating unsupervised texture segmentation algorithms. The control scheme of texture segmentation has been conceptualized as two modular processes: (1) feature computation and (2) segmentation of homogeneous regions based on the feature values. Three feature extraction methods are considered: gray level co-occurrence matrix, Laws' texture energy and Gabor multi-channel filtering. Three segmentation algorithms are considered: fuzzy c-means clustering, square-error clustering and split-and-merge. A set of 35 real scene images with manually-specified ground truth was compiled. Performance is measured against ground truth on real images using region-based and pixel-based performance metrics.
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