RGB颜色空间中基于秩变换和积排序的紧凑颜色纹理描述符

Antonio Fernández, David Lima, F. Bianconi, F. Smeraldi
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引用次数: 4

摘要

颜色信息通常被认为对纹理分析很有用。然而,一种重要的高效纹理描述符——即秩特征——对颜色空间没有明显的扩展,在颜色空间上没有定义规范的顺序。在这项工作中,我们探讨了偏序与秩特征的结合使用。引入了基于积排序的秩变换,通过对主导像素和不可比较像素的组合计数,将经典的秩变换推广到RGB空间。在9个异构标准数据库上的实验结果证实,我们的方法优于标准秩变换及其在字典和位混合总顺序上的扩展,以及基于到参考颜色的欧几里得距离的预定顺序。该变换的低计算复杂度和紧凑的码本尺寸使其适合于多尺度方法。
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Compact Color Texture Descriptor Based on Rank Transform and Product Ordering in the RGB Color Space
Color information is generally considered useful for texture analysis. However, an important category of highly effective texture descriptors - namely rank features - has no obvious extension to color spaces, on which no canonical order is defined. In this work, we explore the use of partial orders in conjunction with rank features. We introduce the rank transform based on product ordering, that generalizes the classic rank transform to RGB space by a combined tally of dominated and non-comparable pixels. Experimental results on nine heterogeneous standard databases confirm that our approach outperforms the standard rank transform and its extension to lexicographic and bit mixing total orders, as well as to the preorders based on the Euclidean distance to a reference color. The low computational complexity and compact codebook size of the transform make it suitable for multi-scale approaches.
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