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RANK TRANSFORMATION AND MANIFOLD LEARNING FOR MULTIVARIATE MATHEMATICAL MORPHOLOGY

机译:对多变量数学形态学进行排名转变和歧管学习

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摘要

The extension of lattice based operators to multivariate images is still a challenging theme in mathematical morphology. In this paper, we propose to explicitly construct complete lattices and replace each element of a multivariate image by its rank, creating a rank image suitable for classical morphological processing. Manifold learning is considered as the basis for the construction of a complete lattice after reducing a multivariate image to its main data by Vector Quantization. A quantitative comparison between usual ordering criteria is performed and experimental results illustrate the abilities of our proposal.
机译:基于格式的运算符到多变量图像的延伸仍然是数学形态学的挑战性主题。在本文中,我们建议通过其等级明确构建完整的格子并替换多变量图像的每个元素,从而创建适合于经典形态处理的秩图像。歧管学习被认为是通过矢量量化将多变量图像减少到其主要数据之后构建完整格子的基础。进行通常订购标准之间的定量比较,实验结果说明了我们提案的能力。

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