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STRUCTURALLY ADAPTIVE MATHEMATICAL MORPHOLOGY BASED ON NONLINEAR SCALE-SPACE DECOMPOSITIONS

机译:基于非线性尺度空间分解的结构自适应数学形态学

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摘要

Standard formulation of morphological operators is translation invariant in the space and in the intensity: the same processing is considered for each point of the image. A current challenging topic in mathematical morphology is the construction of adaptive operators. In previous works, the adaptive operators are based either on spatially variable neighbourhoods according to the local regularity, or on size variable neighbourhoods according to the local intensity. This paper introduces a new framework: the structurally adaptive mathematical morphology. More precisely, the rationale behind the present approach is to work on a nonlinear multi-scale image decomposition, and then to adapt intrinsically the size of the operator to the local scale of the structures. The properties of the derived operators are investigated and their practical performances are compared with respect to standard morphological operators using natural image examples.
机译:形态算子的标准公式是空间和强度的平移不变:对图像的每个点都考虑相同的处理。数学形态学中当前具有挑战性的主题是自适应算子的构造。在以前的工作中,自适应算子要么根据局部规则性基于空间可变的邻域,要么根据局部强度基于大小可变的邻域。本文介绍了一个新的框架:结构自适应数学形态学。更精确地,本方法背后的原理是对非​​线性多尺度图像进行分解,然后使算子的大小本质上适应结构的局部尺度。研究了派生算子的性质,并使用自然图像示例将其实际性能与标准形态算子进行了比较。

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