低级图像分割的模糊专家系统

M. Barni, S. Rossi, A. Mecocci
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引用次数: 6

摘要

本文提出了一种用于低级图像分割的通用模糊专家系统。通过基于模糊逻辑的近似推理,降低了专家系统正常工作所需的几个阈值和参数选择的临界性。更具体地说,证明了通过保持专家系统所包含的规则数量不变,模糊方法允许构建一个更通用的系统,能够为来自不同应用的大量图像提供满意的结果。通过将经典专家系统的有效性与相应的模糊专家系统的有效性进行比较,证明了该方法的有效性。通过对结果的分析,得出了模糊系统在鲁棒性和通用性方面的优越性。
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A fuzzy expert system for low level image segmentation
In this paper a general purpose fuzzy expert system is presented for low level image segmentation. By means of approximate reasoning based on fuzzy logic, the criticality of the choice of the several thresholds and parameters which usually must be tuned to make the expert system work properly is reduced. More specifically, it is proved that, by keeping constant the number of rules the expert system consists of, the fuzzy approach permits to build a more general system, capable of giving satisfactory results for a large number of images stemming from different applications. The validity of the approach is demonstrated by comparing the effectiveness of a classical expert system with that of its corresponding fuzzy version. Upon analysis of the results, the superiority of the fuzzy system in terms of robustness and generality comes out.
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