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Local Reasoning in Fuzzy Attribute Graphs for Optimizing Sequential Segmentation

机译:模糊属性图中的局部推理优化顺序分割

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摘要

Spatial relations play a crucial role in model-based image recognition and interpretation due to their stability compared to many other image appearance characteristics. Graphs are well adapted to represent such information. Sequential methods for knowledge-based recognition of structures require to define in which order the structures have to be recognized. We propose to address this problem of order definition by developing algorithms that automatically deduce sequential segmentation paths from fuzzy spatial attribute graphs. As an illustration, these algorithms are applied on brain image understanding.
机译:与许多其他图像外观特征相比,空间关系由于其稳定性而在基于模型的图像识别和解释中起着至关重要的作用。图形非常适合表示此类信息。用于基于知识的结构识别的顺序方法需要定义必须以哪种顺序识别结构。我们建议通过开发可从模糊空间属性图自动推断出顺序分割路径的算法来解决订单定义问题。作为说明,这些算法应用于脑图像理解。

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