融合皮质变换和基于强度的特征进行图像纹理分类

Md. Khayrul Bashar, N. Ohnishi
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引用次数: 3

摘要

本文提出了一种融合皮质变换和局部窗化处理得到的亮度特征的新方案。能量特征是通过在滑动窗口内应用流行的皮质变换技术而不是传统方法获得的,而我们定义了三个特征,即定向表面密度(DSD)、归一化清晰度指数(NSI)和归一化频率指数(NFI)作为像素亮度变化的度量。在特征空间中进行简单向量标记融合和相关融合,然后利用最小距离分类器对融合后的向量进行分类。有趣的是,虽然亮度特征在某些自然图像上较差,但在拼接图像中往往产生更平滑的纹理边界,而能量特征则表现出相反的行为。通过向量融合将这种对称逆特性结合起来,对来自Brodatz相册和VisTex数据库的多纹理图像进行鲁棒分类。混淆矩阵分析的分类结果显示了该方案的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusing cortex transform and intensity based features for image texture classification
This paper proposes a new scheme of fusing cortex transform and brightness based features obtained by local windowing operation. Energy features are obtained by applying popular cortex transform technique within a sliding window rather than the conventional way, while we define three features namely directional surface density (DSD), normalised sharpness index (NSI), and normalized frequency index (NFI) as measures for pixel brightness variation. Fusion by simply vector tagging as well as by correlation is performed in the feature space and then classification is done using minimum distance classifier on the fused vectors. It is interesting that the brightness features, though inferior on some natural images, often produces smoother texture boundary in mosaic images, whereas energy features show the opposite behavior. This symmetrically inverse property is combined through vector fusion for robust classification of multi-texture images obtained from Brodatz album and VisTex database. Classification outcome with confusion matrix analysis shows the robustness of the scheme.
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