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A new approach to feature extraction for wavelet-based texture classification

机译:基于小波的纹理分类的特征提取新方法

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A new class of features for wavelet-based texture classification is introduced using a new feature-weighting scheme adapted to non-Euclidean similarity measures. The feature extraction is based on the histogram of the local second moment estimates of the wavelet transform. It is shown that the bins' centers of such histograms should be scaled logarithmically rather than linearly. The distance between two texture features is measured using the x2 similarity measure, weighted according to the feature's degree of dispersion within the training dataset. Classification experiments of the proposed approach using an orthonormal wavelet transform show improved classification results compared to presently available methods.
机译:使用适用于非欧几里得相似性度量的新特征加权方案,引入了基于小波的纹理分类的一类新特征。特征提取基于小波变换的局部第二矩估计的直方图。结果表明,这种直方图的bins中心应该对数而不是线性缩放。两个纹理特征之间的距离使用x 2 相似性度量进行测量,并根据特征在训练数据集中的分散程度进行加权。与目前可用的方法相比,使用正交小波变换的拟议方法的分类实验显示出改进的分类结果。

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