General Type-2 fuzzy edge detectors applied to face recognition systems

P. Melin, O. Castillo, Claudia I. González, J. R. Castro, O. Mendoza
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引用次数: 4

Abstract

Edge detection is an essential step used in image processing systems and can be applied to image sets before the training phase in pattern recognition systems to improve performance. An edge detector simplifies the analysis of the images; because, it reduces the data to be processed by highlighting the most important features. In this paper we show the advantage of using a fuzzy edge detector method in a face recognition system. In the proposed methodology, first the general type-2 fuzzy edge detector was applied over three image databases; secondly the recognition system was implemented using a monolithic neural network, and after that the mean recognition rate was obtained; finally the recognition rate is compared to other edge detectors, such as the Sobel operator, Type-1 and Interval Type-2 fuzzy edge detectors.
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二类模糊边缘检测器在人脸识别系统中的应用
边缘检测是图像处理系统中必不可少的一步,可以在模式识别系统的训练阶段之前应用于图像集,以提高性能。边缘检测器简化了图像的分析;因为,它通过突出显示最重要的特征来减少要处理的数据。本文展示了模糊边缘检测方法在人脸识别系统中的优越性。在提出的方法中,首先在三个图像数据库上应用一般的2型模糊边缘检测器;其次,采用单片神经网络实现识别系统,得到平均识别率;最后与Sobel算子、Type-1和Interval Type-2模糊边缘检测器等边缘检测器的识别率进行了比较。
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