基于改进神经网络的人脸识别算法

Chenyu Huang
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摘要

在复杂的环境下,传统的人脸识别算法的性能会大大下降。为了进一步提高现有人脸识别算法的识别精度,本文通过分析传统算法的缺陷,提出了两种基于改进卷积神经网络的人脸识别算法。最后,我们将建立一个新的人脸识别模型来验证两种新方法的有效性。第一种方法是通过融合卷积层和池化层提取人脸特征并进行分类,采用随机梯度下降法训练神经网络,采用Softmax分类器进行人脸识别,最后采用Dropout方法解决过拟合问题。第二种方法是利用双对称LetNet的网络链路结构和DCT-LBP联合处理方法对输入图像进行处理。这两种算法有一定的相似性,都能提高人脸识别的准确率。
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Face recognition algorithm based on improved neural network
In complex environment, the performance of traditional face recognition algorithm decreases greatly. In order to further improve the recognition accuracy of current face recognition algorithms, this paper proposes two face recognition algorithms based on improved convolutional neural networks through the analysis of the defects of traditional algorithms. Finally, we will build a new face recognition model to verify the effectiveness of the two new methods. The first method is to extract and classify face features by fusing convolution layer and pooling layer, train neural network by stochastic gradient descent method, recognize face by Softmax classifier, and finally solve the over-fitting problem by "Dropout" method. The second method is to use the network link structure of bisymmetric LetNet and DCT-LBP joint processing method to process the input image. The two algorithms have some similarities, and both can improve the accuracy of face recognition.
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