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Model-Based Image Interpretation under Uncertainty and Fuzziness

机译:基于模型的不确定性和模糊性的图像解释

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Structural models such as ontologies and graphs can encode generic knowledge about a scene observed in an image. Their use in spatial reasoning schemes allows driving segmentation and recognition of objects and structures in images. The developed methods include finding a best segmentation path in a graph, global solving of a constraint satisfaction problem, integrating prior knowledge in deformable models, and exploring images in a progressive fashion. Conversely, these models can be specified based on individual information resulting from the segmentation and recognition process. In particular models relying on spatial relations between structures are relevant and more flexible than shape models to be adapted to potential variations, multiple occurrences, or pathological cases. The problem of semantic gap is addressed by generating spatial representations (in the image space) of relations initially expressed in linguistic or symbolic form, within a fuzzy set formalism. This allows coping with uncertainty and fuzziness, which are inherent both to generic knowledge and to image information. Applications in medical imaging and remote sensing imaging illustrate the proposed paradigm.
机译:诸如本体和图形的结构模型可以编码关于在图像中观察到的场景的通用知识。它们在空间推理方案中的使用允许在图像中驱动分割和识别物体和结构。开发的方法包括在图中找到最佳分割路径,全局解决约束满足问题,整合可变模型中的先验知识,并以渐进方式探索图像。相反,这些模型可以基于分割和识别过程产生的各个信息来指定。特别是依赖结构之间的空间关系的模型是相关的,并且比形状模型更柔韧,以适应潜在的变化,多次出现或病理情况。通过在模糊设定的形式主义内产生最初以语言形式的关系的空间表示(在图像空间中)的空间表示(在图像空间中)来解决语义差距问题。这允许应对不确定性和模糊性,这是固有的,它既是通用知识和图像信息。医学成像和遥感成像中的应用说明了所提出的范式。

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