摘要
本文提出了一种采用首先对人脸图像进行Gabor变换,然后由自组织稀疏RAM的N-tuple神经网络进行训练识别的方法,通过大量实验证明,该方法在较少训练样本下条件下,能够取得较高的识别率。
A face recognition approach based on Gabor transforms and the approximate type N-tuple neural network with self-organizing sparse RAM is presented. At first, the Gabor transforms of face image are used as its feature vectors. Then these feature vectors are input into the approximate type N-tuple neural network with self-organizing sparse RAM to classify these faces. Experimental results demonstrate that the performance of this face recognition method is good only with a few training samples.
出处
《电路与系统学报》
CSCD
2004年第1期115-118,共4页
Journal of Circuits and Systems