The performance of multi-layer neural network on face recognition system

M. J. Yashaswini, V. S. Vishnu, B N Annapuma, Tanik R Prasad
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引用次数: 1

Abstract

Biometrics and Pattern Recognition have various applications that are found and brought into real-time application use. Face recognition consist mainly of three stages namely: Pre-processing, Feature Extraction and Classification. Neural Networks basically deals with adaptation, classification and rendering noisy values to optimal solution. In this work we illustrate performance and accuracy of the above approaches. Subspace is a plane embedded in a higher dimensional vector space, PCA is a standout amongst the best systems that have been utilized in image recognition and compression while KPCA is utilized in ascertaining PCA conversion in a mapping space by a nonlinear mapping function. FFNN is used for pattern recognition, FNN frequently have at least one hidden layers of sigmoid neurons followed by a yield layer of linear neurons. Multiple layers of neurons with nonlinear transfer function permits the system to learn connections amongst information and yield vectors. LVQ learn to characterize input vectors into target classes picked by the user.
多层神经网络在人脸识别系统中的性能
生物识别和模式识别有各种各样的应用,被发现并引入实时应用。人脸识别主要包括预处理、特征提取和分类三个阶段。神经网络主要处理自适应、分类和呈现噪声值的最优解。在这项工作中,我们说明了上述方法的性能和准确性。子空间是嵌入在高维向量空间中的一个平面,PCA是在图像识别和压缩中使用的最好的系统之一,而KPCA用于通过非线性映射函数确定映射空间中的PCA转换。FFNN用于模式识别,FNN通常至少有一个隐藏层的s形神经元,后面是一个屈服层的线性神经元。具有非线性传递函数的多层神经元允许系统学习信息和屈服向量之间的联系。LVQ学习将输入向量特征化为用户选择的目标类。
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