scholarly journals An Incremental Sparse Linear Regression Classification Algorithm for Face Recognition

Author(s):  
Guang-chao WU ◽  
Jiao LIU ◽  
Sen-tao CHEN
2014 ◽  
Vol 556-562 ◽  
pp. 2628-2632 ◽  
Author(s):  
Li Sheng Zhang ◽  
Hua Yong Liu ◽  
Da Jiang Lei

In order to solve the problem of high time complexity of Linear Regression Classification algorithm,we propose a Mapreduce-based parallel linear regression classification algorithm. The map task uses the test image vector and the vector subspace to predict the response vector for one class, then calculates the distance measure between the predicted response vectory and the original response vector. The reduce task processes the data which are generated by the mappers, the test image is assigned to the nearest class. The experiments shows that the MapReduce-based parallel linear regression classifier can significantly improve the efficiency of Face Recognition.


2014 ◽  
Vol 62 (4) ◽  
pp. 288-295 ◽  
Author(s):  
Qingxiang Feng ◽  
Qi Zhu ◽  
Lin-Lin Tang ◽  
Jeng-Shyang Pan

2021 ◽  
Author(s):  
Wei-Jong Yang ◽  
Cheng-Yu Lo ◽  
Pau-Choo Chung ◽  
Jar Ferr Yang

Face images with partially-occluded areas create huge deteriorated problems for face recognition systems. Linear regression classification (LRC) is a simple and powerful approach for face recognition, of course, it cannot perform well under occlusion situations as well. By segmenting the face image into small subfaces, called modules, the LRC system could achieve some improvements by selecting the best non-occluded module for face classification. However, the recognition performance will be deteriorated due to the usage of the module, a small portion of the face image. We could further enhance the performance if we can properly identify the occluded modules and utilize all the non-occluded modules as many as possible. In this chapter, we first analyze the texture histogram (TH) of the module and then use the HT difference to measure its occlusion tendency. Thus, based on TH difference, we suggest a general concept of the weighted module face recognition to solve the occlusion problem. Thus, the weighted module linear regression classification method, called WMLRC-TH, is proposed for partially-occluded fact recognition. To evaluate the performances, the proposed WMLRC-TH method, which is tested on AR and FRGC2.0 face databases with several synthesized occlusions, is compared to the well-known face recognition methods and other robust face recognition methods. Experimental results show that the proposed method achieves the best performance for recognize occluded faces. Due to its simplicity in both training and testing phases, a face recognition system based on the WMLRC-TH method is realized on Android phones for fast recognition of occluded faces.


2014 ◽  
Vol 2014 ◽  
pp. 1-10 ◽  
Author(s):  
Zheng Zhang ◽  
Zhengming Li ◽  
Binglei Xie ◽  
Long Wang ◽  
Yan Chen

The representation based classification method (RBCM) has shown huge potential for face recognition since it first emerged. Linear regression classification (LRC) method and collaborative representation classification (CRC) method are two well-known RBCMs. LRC and CRC exploit training samples of each class and all the training samples to represent the testing sample, respectively, and subsequently conduct classification on the basis of the representation residual. LRC method can be viewed as a “locality representation” method because it just uses the training samples of each class to represent the testing sample and it cannot embody the effectiveness of the “globality representation.” On the contrary, it seems that CRC method cannot own the benefit of locality of the general RBCM. Thus we propose to integrate CRC and LRC to perform more robust representation based classification. The experimental results on benchmark face databases substantially demonstrate that the proposed method achieves high classification accuracy.


2018 ◽  
Vol 10 (9) ◽  
pp. 2229-2243 ◽  
Author(s):  
Yali Peng ◽  
Jingcheng Ke ◽  
Shigang Liu ◽  
Jun Li ◽  
Tao Lei

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