摘要
Collaborative representation-based classification(CRC) is a distance based method, and it obtains the original contributions from all samples to solve the sparse representation coefficient. We find out that it helps to enhance the discrimination in classification by integrating other distance based features and/or adding signal preprocessing to the original samples. In this paper, we propose an improved version of the CRC method which uses the Gabor wavelet transformation to preprocess the samples and also adapts the nearest neighbor(NN)features, and hence we call it GNN-CRC. Firstly, Gabor wavelet transformation is applied to minimize the effects from the background in face images and build Gabor features into the input data. Secondly, the distances solved by NN and CRC are fused together to obtain a more discriminative classification. Extensive experiments are conducted to evaluate the proposed method for face recognition with different instantiations. The experimental results illustrate that our method outperforms the naive CRC as well as some other state-of-the-art algorithms.
Collaborative representation-based classification (CRC) is a distance based method, and it obtains the original contributions from all samples to solve the sparse representation coefficient. We find out that it helps to enhance the discrimination in classification by integrating other distance based features and/or adding signal preprocessing to the original samples. In this paper, we propose an improved version of the CRC method which uses the Gabor wavelet transformation to preprocess the samples and also adapts the nearest neighbor (NN) features, and hence we call it GNN-CRC. Firstly, Gabor wavelet transformation is applied to minimize the effects from the background in face images and build Gabor features into the input data. Secondly, the distances solved by NN and CRC are fused together to obtain a more discriminative classification. Extensive experiments are conducted to evaluate the proposed method for face recognition with different instantiations. The experimental results illustrate that our method outperforms the naive CRC as well as some other state-of-the-art algorithms.
作者
ZHANG Yanghao
ZENG Shaoning
ZENG Wei
GOU Jianping
张洋豪;曾少宁;曾威;苟建平(School of Information Science and Technology,Huizhou University,Huizhou 516007,Guangdong,China;College of Computer Science and Communication Engineering,Jiangsu University,Zhenjiang 212013,Jiangsu,China)
基金
the National Natural Science Foundation of China(No.61502208)
the Natural Science Foundation of Jiangsu Province of China(No.BK20150522)
the Scientific and Technical Program of City of Huizhou(Nos.2016X0422037 and 2017C0405021)
the Natural Science Foundation of Huizhou University(Nos.hzux1201606 and hzu201701)