Combining powerful local and global statistics for texture description

Yong Xu, Si-Bin Huang, Hui Ji, Cornelia Fermuller
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引用次数: 40

Abstract

A texture descriptor is proposed, which combines local highly discriminative features with the global statistics of fractal geometry to achieve high descriptive power, but also invariance to geometric and illumination transformations. As local measurements SIFT features are estimated densely at multiple window sizes and discretized. On each of the discretized measurements the fractal dimension is computed to obtain the so-called multifractal spectrum, which is invariant to geometric transformations and illumination changes. Finally to achieve robustness to scale changes, a multi-scale representation of the multifractal spectrum is developed using a framelet system, that is, a redundant tight wavelet frame system. Experiments on classification demonstrate that the descriptor outperforms existing methods on the UIUC as well as the UMD high-resolution dataset.
结合强大的局部和全局统计纹理描述
提出了一种纹理描述符,该描述符将局部高度判别特征与分形几何的全局统计特征相结合,具有较高的描述能力,同时对几何变换和光照变换具有不变性。作为局部测量,SIFT特征在多个窗口大小下被密集估计并离散化。在每一个离散的测量上计算分形维数,得到所谓的多重分形谱,该谱不受几何变换和光照变化的影响。最后,为了实现对尺度变化的鲁棒性,利用小波框架系统,即冗余紧密小波框架系统,建立了多重分形谱的多尺度表示。分类实验表明,该描述符在UIUC和UMD高分辨率数据集上优于现有方法。
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