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An innovative hybrid approach to construct fuzzy-neural network for 3D face recognition system

机译:一种用于3D人脸识别系统的模糊神经网络构建的创新混合方法

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The 2D face recognition systems encounter difficulties in recognizing faces with illumination variations. The depth map of the 3D face data has the potential to handle the variation in illumination of face images. For feature matching an efficient fuzzy-neural technique is proposed. This paper presents a new approach in which the depth maps of the 3D face images, containing the depth information of the face image are used. Since the input images contain the depth information the input to the fuzzy neural network is illumination invariant. Using the normalized depth map and fuzzy-neural network, a fully automatic 3D face recognition system is developed. The system is evaluated on the 3D face databases; the CASIA database. The proposed system efficiently handles the varying lighting effects and provides significant recognition accuracy.
机译:2D人脸识别系统在识别具有光照变化的人脸时遇到困难。 3D人脸数据的深度图具有处理人脸图像照度变化的潜力。为了进行特征匹配,提出了一种有效的模糊神经技术。本文提出了一种新方法,其中使用包含面部图像的深度信息的3D面部图像的深度图。由于输入图像包含深度信息,因此模糊神经网络的输入是照度不变的。使用归一化深度图和模糊神经网络,开发了一种全自动3D人脸识别系统。该系统在3D人脸数据库上进行评估; CASIA数据库。所提出的系统有效地处理了变化的照明效果,并提供了显着的识别精度。

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