Rotation invariant features of wavelet transform for texture retrieval

Fatih Çaglar, B. Cavusoglu
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引用次数: 1

Abstract

Wavelet transform is both sensitive to translation and rotation. This feature of the transform diminishes the discriminative power of wavelet coefficients among different classes where rotated versions of textures are present. We analyze statistical behavior of wavelet coefficients and show that some features of wavelets are more robust than others against translation and rotation. We also show that using higher order moments increase the overall performance. A new parameter is also proposed to determine the discriminative features out of a possible feature set. This new parameter is derived based on statistics of wavelet transform and called as effective discriminative power (EP). Based on EP, reduced subband feature set is proposed and applied on the modified Brodatz database for texture retrieval and shown that the reduced feature set have superior performance compared to the one which just includes mean and standard deviations of all the subbands. The reduced feature set is also computationally less expensive since it eliminates rotation-variant features and results in less number of features with better performance.
小波变换旋转不变性特征的纹理检索
小波变换对平移和旋转都很敏感。变换的这一特征减弱了小波系数在存在旋转纹理的不同类别之间的判别能力。我们分析了小波系数的统计行为,并表明小波的一些特征对平移和旋转比其他特征更鲁棒。我们还表明,使用高阶矩可以提高整体性能。还提出了一个新的参数来从可能的特征集中确定判别特征。该参数是基于小波变换的统计量导出的,称为有效判别功率(EP)。在此基础上,提出了简化子带特征集,并将其应用于改进的Brodatz数据库中进行纹理检索,结果表明,简化后的子带特征集比仅包含所有子带均值和标准差的特征集具有更好的性能。减少的特征集在计算上也更便宜,因为它消除了旋转变化的特征,并产生了更少的特征数量和更好的性能。
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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