| Literature DB >> 27386281 |
Lin Zhai1, Shujun Fu1, Caiming Zhang2, Yunxian Liu1, Lu Wang3, Guohua Liu4, Mingqiang Yang5.
Abstract
As an important application in optical imaging, palmprint recognition is interfered by many unfavorable factors. An effective fusion of blockwise bi-directional two-dimensional principal component analysis and grouping sparse classification is presented. The dimension reduction and normalizing are implemented by the blockwise bi-directional two-dimensional principal component analysis for palmprint images to extract feature matrixes, which are assembled into an overcomplete dictionary in sparse classification. A subspace orthogonal matching pursuit algorithm is designed to solve the grouping sparse representation. Finally, the classification result is gained by comparing the residual between testing and reconstructed images. Experiments are carried out on a palmprint database, and the results show that this method has better robustness against position and illumination changes of palmprint images, and can get higher rate of palmprint recognition.Entities:
Keywords: Image classification; Palmprint recognition; Principal component analysis; Sparse representation; Subspace optimization
Year: 2016 PMID: 27386281 PMCID: PMC4917515 DOI: 10.1186/s40064-016-2511-z
Source DB: PubMed Journal: Springerplus ISSN: 2193-1801
Fig. 1Formation of subimage sets for blockwise PCA with blocking number
Fig. 2Part of palmprint data from Beijing Jiaotong University: original images (top) and their regions of interest (bottom)
Fig. 3Recognition rates () using SOMP classification with different dimension reduction methods
Optimal recognition rates (%) and corresponding feature dimensions with different dimension reduction methods
| Dimension reduction method | Feature dimension | Optimal recognition rate |
|---|---|---|
| Random projection | 225 | 94.8 |
| PCA | 100 | 95.6 |
|
| 196 | 96.4 |
|
| 49 | 97.2 |
Fig. 4Recognition rates (%) using different classification methods
Fig. 5Recognition rates (%) using SOMP classification with different blocking numbers