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Facial Metrical and Caricature-Pattern-Based Learning in Neural Network System for Face Recognition

机译:基于面部韵律和漫画模式的人体网络系统

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Face recognition technology has been an increasingly important module in security systems. A challenging problem is how to extract features tolerant to the appearance variables such as changes in shape, illumination, and occlusion. Extracted metrical features of facial caricatures that are combined with their facial photographs in the training set are examined. The facial caricature is a personal representative amplifying perceptually significant information of individuals. Unlike Eigenfaces, Fisherfaces, and Laplacianfaces, the twenty-nine metrical features that used in this study do not depend upon illumination and occlusion variables. Our results show that facial caricature-trained neural networks outperform significantly of those only facial photograph-trained neural networks.
机译:面部识别技术一直是安全系统中越来越重要的模块。具有挑战性的问题是如何提取容忍外观变量的特征,例如形状,照明和遮挡的变化。检查了与训练集中的面部照片结合的面部漫画的测量特征。面部漫画是个人代表放大个人的显着大量信息。与特征缺陷,渔业和拉普拉斯植物不同,本研究中使用的二十九个韵律特征不依赖于照明和遮挡变量。我们的研究结果表明,面部漫画训练有素的神经网络显着优于只有面部照片训练的神经网络。

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