合肥工业大学学报(自然科学版)
閤肥工業大學學報(自然科學版)
합비공업대학학보(자연과학판)
JOURNAL OF HEFEI UNIVERSITY OF TECHNOLOGY(NATURAL SCIENCE)
2015年
6期
759-763
,共5页
人脸识别%主成分分析%Softmax回归模型%神经网络
人臉識彆%主成分分析%Softmax迴歸模型%神經網絡
인검식별%주성분분석%Softmax회귀모형%신경망락
face recognition%principal component analysis (PCA )%Softmax regression model%neural network
文章介绍一种基于主成分分析(principal component analysis ,PCA )和Softmax回归模型相结合的人脸识别方法,该方法通过PCA对整幅图像提取特征,然后将提取的特征经过非线性变换输入到Softmax回归模型中。将主成分提取特征看成是单层神经网络,将它与Softmax回归模型构成的级联结构看作是2层神经网络,在神经网络的训练过程中,主成分的特征向量可以微调。在不同人脸数据库上的实验表明,相比于传统的只用PC A降维的方法,本文方法可达到较高的识别率。
文章介紹一種基于主成分分析(principal component analysis ,PCA )和Softmax迴歸模型相結閤的人臉識彆方法,該方法通過PCA對整幅圖像提取特徵,然後將提取的特徵經過非線性變換輸入到Softmax迴歸模型中。將主成分提取特徵看成是單層神經網絡,將它與Softmax迴歸模型構成的級聯結構看作是2層神經網絡,在神經網絡的訓練過程中,主成分的特徵嚮量可以微調。在不同人臉數據庫上的實驗錶明,相比于傳統的隻用PC A降維的方法,本文方法可達到較高的識彆率。
문장개소일충기우주성분분석(principal component analysis ,PCA )화Softmax회귀모형상결합적인검식별방법,해방법통과PCA대정폭도상제취특정,연후장제취적특정경과비선성변환수입도Softmax회귀모형중。장주성분제취특정간성시단층신경망락,장타여Softmax회귀모형구성적급련결구간작시2층신경망락,재신경망락적훈련과정중,주성분적특정향량가이미조。재불동인검수거고상적실험표명,상비우전통적지용PC A강유적방법,본문방법가체도교고적식별솔。
In this paper ,a face recognition method based on the combination of principal component analysis (PCA) and Softmax regression model is introduced .In the method ,the image feature is first extracted by PCA ,and then the extracted feature is input into the Softmax regression model via nonlinear transform .The PCA is considered as a single‐layer neural network ,so the combination of PCA and Softmax regression model can be thought as a two‐layer neural network .In the training process of neural networks ,the feature vectors of the principal component can be fine‐tuned .The results of the experiments on the different face databases indicate that the proposed method has good recognition performance and achieves a higher recognition rate than traditional method of PCA dimension reduction .