Modal logics have proved useful for many reasoning tasks in symbolic artificial intelligence (AI), such as belief revision, spatial reasoning, among others. On the other hand, mathematical morphology (MM) is a theory for non-linear analysis of structures, that was widely developed and applied in image analysis. Its mathematical bases rely on algebra, complete lattices, topology. Strong links have been established between MM and mathematical logics, mostly modal logics. In this paper, we propose to further develop and generalize this link between mathematical morphology and modal logic from a topos perspective, i.e. categorial structures generalizing space, and connecting logics, sets and topology. Furthermore, we rely on the internal language and logic of topos. We define structuring elements, dilations and erosions as morphisms. Then we introduce the notion of structuring neighborhoods, and show that the dilations and erosions based on them lead to a constructive modal logic, for which a sound and complete proof system is proposed. We then show that the modal logic thus defined (called morpho-logic here), is well adapted to define concrete and efficient operators for revision, merging, and abduction of new knowledge, or even spatial reasoning.
翻译:模型逻辑被证明对模拟人工智能(AI)中的许多推理任务有用,例如信仰修正、空间推理等。另一方面,数学形态学(MM)是非线性结构分析的理论,在图像分析中得到广泛开发和应用。其数学基础依赖于代数、完整的纬度、地形学。MM和数学逻辑(主要是模型逻辑)之间建立了牢固的联系。在本文中,我们提议进一步发展和概括数学形态学和模型逻辑之间的这种联系,从一个topos的角度,即将空间普遍化的分类结构,以及连接逻辑、数据集和地形学。此外,我们依赖图案的内部语言和逻辑。我们把结构要素、变形和侵蚀定义为变形学。然后我们引入了MMM和数学逻辑(主要是模型逻辑 ) 的构造概念, 并表明基于这些结构的变形和变形法导致一种建设性的模型逻辑, 并据此提出一个健全和完整的证据系统。我们随后表明, 如此定义的模型逻辑(所谓的制式和空间变形学的操作者) 和变形法是, 。</s>