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Published April 10, 2014 | public
Journal Article

Histogram of visual words based on locally adaptive regression kernels descriptors for image feature extraction

Abstract

Image feature extraction is one of the most important problems for image recognition system. We tackle this by combing the locally adaptive regression kernel descriptors (LARK), bag-of-visual-words and sparse representation. Specifically, this paper makes two main contributions: (1) we introduce a novel method called histogram of visual words based on locally adaptive regression kernels descriptors (HWLD) for image feature extraction. LARK is used to describe the image local information and build the visual vocabulary. Each pixel of an image is assigned to the visual words and gets the corresponding weights. Image feature vector is obtained by subdividing the image and computing the accumulative weight histograms of visual words in these sub-blocks. (2) The K nearest neighbor based sparse representation (KNN-SR) is presented for assigning the visual words. Compared with nearest neighbors based method, KNN-SR has stronger discriminant power to identify different patches in the image. Experimental results on the AR face image set, the CMU-PIE face image set, the ETH80 object image set and the Nister image set demonstrate that our method is more effective than some state-of-the-art feature extraction methods.

Additional Information

© 2013 Elsevier B.V. Received 29 August 2012. Received in revised form 24 June 2013. Accepted 3 September 2013. Communicated by Xiaofei He. Available online 19 October 2013. The authors would like to thank the editor and the anonymous reviewers for their critical and constructive comments and suggestions. This work was partially supported by the National Science Fund for Distinguished Young Scholars under Grant Nos. 61125305, 61233011 and 61203243, the Key Project of Chinese Ministry of Education under Grant No. 313030.

Additional details

Created:
August 22, 2023
Modified:
October 26, 2023