基于小波图像融合的单样本人脸识别研究

Li Ke, Xiangmin Chen, Qiang Du
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引用次数: 2

摘要

人脸识别技术作为机器人和人机交互的重要组成部分,可以提高机器人的服务性和安全性。近年来,人脸识别技术有了很大的进步。目前研究人员主要关注多姿态、多样本的人脸识别,但很难找到获取这些图像的方法。然而,获得一个人的单面图像是很容易的。因此,研究单训练样本的人脸识别问题具有十分重要的意义。介绍了基于小波图像融合的单样本人脸识别研究。首先,利用小波变换和图像融合的方法获取配准图像的低频信息并存入库;然后将库中的低频信息与被测图像中的高频信息进行融合。通过计算两幅图像之间的欧氏距离,并将其作为神经网络的输入特征进行分类。利用BP神经网络构成人脸识别分类器,并在传统神经网络的基础上进行改进。将单张人脸图像设计与每张人脸相匹配,主动设计输入层、隐藏层和输出层神经细胞的激活函数和节点。最后通过FERET人脸库的人脸检测实验,结果表明本文设计的分类器可用于不同角度、装饰物和不同尺寸人脸的检测和识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Research of Single-Sample Face Recognition Based on Wavelet Image Fusion
As an important part of robot and human-computer interaction, face recognition technology can improve the service and security of robot. In recent years, face recognition technology has improved a lot. Now researchers mainly pay attention to study multi-pose and multi-sample face recognition, but it's difficult to get the method of obtaining these images. However, it is easy to get single face image of per person. So, it is very significant to study the face recognition with single training sample. This paper introduces the single-sample face recognition research based on wavelet image fusion. Firstly, it uses the methods of wavelet transformation and image fusion to obtain the low frequency information of registered image and deposit it to library. Then fusing the low frequency information in library and the high frequency information in tested images. By computing the Euclidean distances between these two images and take it as the input feature to the nerve network to classify. Also, it will use BP neural network to make up the classifier of face recognition and improve it based on traditional neural network. Single face image will be designed matched to every face, activation functions and nodes of nerve cells of the input layer, hidden layer and output layer are designed actively. Lastly through the experiments on the face detection of FERET base, the result is found that the classifier designed in this article is useful for the detection and recognition of human faces with perspective angles, ornaments and in different sizes.
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