MLP neural network using modified constructive training algorithm: Application to face recognition

Image Processing, Applications and Systems Conference(2014)

引用 7|浏览3
暂无评分
摘要
This paper focuses on the study of modified constructive training algorithm for Multi Layer Perceptron “MLP” which is applied to face recognition applications. In general, constructive learning begins with a minimal structure, and increases the network by adding hidden neurons until a satisfactory solution is found. The contribution of this paper is to increment the output neurons simultaneously with incrementing the input patterns. In fact, the proposed algorithm started with a small number of output neurons and a single hidden-layer using an initial number of neurons. During neural network training, the hidden neurons number is increased while the Mean Square Error “MSE” threshold of the Training Data “TD” is not reduced to a predefined parameter. The output neurons number is increased as the input patterns are incrementally trained until all patterns of Training Data “TD” are presented and learned. The proposed algorithm is applied in the classification stage in face recognition system. For the feature extraction stage, a biological vision-based facial description, namely Perceived Facial Images “PFI” is applied to extract features from human face images. The proposed approach is tested on the Cohn-Kanade Facial Expression Database. Compared to the fixed “MLP” architecture and the constructive training algorithm, experimental results clearly demonstrate the efficiency of the proposed algorithm.
更多
查看译文
关键词
face recognition,feature extraction,learning (artificial intelligence),mean square error methods,multilayer perceptrons,cohn-kanade facial expression database,mlp,mse threshold,pfi,biological vision-based facial description,classification stage,constructive learning,face recognition applications,feature extraction stage,hidden neurons,human face images,mean square error threshold,modified constructive training algorithm,multilayer perceptron,neural network training,output neurons number,perceived facial images,training data,backpropagation,constructive training algorithm,multi-layer perceptron,neural network,pca,perceived facial image,vectors,face
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要