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首页> 外文期刊>International Journal of Computational I >Face Detection Using Radial Basis Function Neural Networks with Fixed Spread Value
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Face Detection Using Radial Basis Function Neural Networks with Fixed Spread Value

机译:具有固定扩展值的径向基函数神经网络的人脸检测

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This paper presents a face detection system using Radial Basis Function Neural Networks with Fixed Spread Value. Face detection is the first step in face recognition system. The purpose is to localize and extract the face region from the background that will be fed into the face recognition system for identification. General preprocessing approach was used for normalizing the image and a Radial Basis Function (RBF) Neural Network was used to distinguish between face and non-face images. RBF Neural Networks offer several advantages compared to other neural network architecture such as they can be trained using fast two stages training algorithm and the network possesses the property of best approximation. The output of the network can be optimized by setting suitable values of the center and spread of the RBF. In this paper, a uniform fixed spread value will be used. The performance of the RBFNN face detection system will be based on the False Acceptance Rate (FAR) and the False Rejection Rate (FRR) criteria. In this research, the best setting for RBF face detection were summarized into one table where by using center 200 and spread 4 gives the highest detection rate and the lowest FAR as well as FRR. But for detecting many faces in a single image, center 200 and spread 5 is the best setting as the system can detect all faces in the image.
机译:本文提出了一种使用具有固定扩展值的径向基函数神经网络的人脸检测系统。人脸检测是人脸识别系统的第一步。目的是从背景中定位并提取面部区域,该面部区域将被输入到面部识别系统中进行识别。使用常规预处理方法对图像进行归一化,并使用径向基函数(RBF)神经网络来区分人脸图像和非人脸图像。与其他神经网络体系结构相比,RBF神经网络具有许多优势,例如可以使用快速的两阶段训练算法对其进行训练,并且该网络具有最佳近似性。可以通过设置RBF的中心和散布值来优化网络的输出。在本文中,将使用统一的固定利差值。 RBFNN面部检测系统的性能将基于错误接受率(FAR)和错误拒绝率(FRR)标准。在这项研究中,将RBF人脸检测的最佳设置汇总到一张表中,其中使用中心200和传播4可获得最高的检测率和最低的FAR以及FRR。但是对于检测单个图像中的许多面部,中心200和散布5是最佳设置,因为系统可以检测图像中的所有面部。

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