A Back Propagation Based Face Recognition Model, using 2D Symmetrical Gabor Features

B. Vinay Kumar, B. Shreyas, C.N.S. Ganesh Murthy
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引用次数: 4

Abstract

We present a system for recognizing human faces from a database consisting of multiple images per test subject, which spans the normal variations in a human face. The faces are represented based on a Gabor wavelet transform. The features are extracted as a vector of values using a carefully chosen symmetrical Gabor wavelet matrix. This feature extraction is biologically motivated and models systems based on human vision. The extracted features are fed into an artificial neural network, in dual phases. The training and testing phases of the neural network work on the features extracted by the same method. Excellent pattern-recognition-specific neural network like a multilayer perceptron with back propagation provides the necessary classification once the feature extraction is complete
基于反向传播的二维对称Gabor特征人脸识别模型
我们提出了一个从数据库中识别人脸的系统,该数据库由每个测试对象的多个图像组成,这些图像跨越了人脸的正常变化。人脸是基于Gabor小波变换表示的。使用精心选择的对称Gabor小波矩阵将特征提取为值的向量。这种特征提取是生物驱动的,并基于人类视觉对系统进行建模。提取的特征分两阶段输入到人工神经网络中。神经网络的训练和测试阶段对用相同方法提取的特征进行处理。优秀的模式识别专用神经网络,如具有反向传播的多层感知器,在特征提取完成后提供必要的分类
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