模糊推理在目标识别中的应用

E. Walker
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引用次数: 2

摘要

物体识别领域作为计算机视觉的一个分支领域有着悠久的历史,大多数系统使用概率或启发式方法来推理感知图像中固有的不确定性。本文重点介绍了将模糊集理论应用于目标识别的两个主要过程:分组和匹配的最新工作。模糊集是分组和匹配的自然模型,使用隶属度值表示图像特征组满足分组关系的程度,以及一组图像特征与对象模型的匹配程度。这种方法也可以扩展到分层分组和匹配。最后,我们描述了模糊推理如何增强现有的复杂目标识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy reasoning for decision making in object recognition
The area of object recognition has a long history as a subarea of computer vision, with most systems using either probabilistic or heuristic methods for reasoning about the uncertainty inherent in sensed images. The paper highlights recent work in applying fuzzy set theory to the two main processes in object recognition: grouping and matching. Fuzzy sets are a natural model for both grouping and matching, using membership values to represent the degree to which groups of image features satisfy a grouping relationship, as well as the degree to which a group of image features matches an object model. This methodology can be extended to hierarchical grouping and matching as well. Finally, we describe how fuzzy reasoning can enhance an existing sophisticated object recognition system.
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