International Journal of Physical Sciences | |
Learning with power l1-graph for single labeled image biometric recognition | |
Fei Zang1  | |
关键词: Power function; sparse reconstruction; label propagation; biometrics recognition.; | |
DOI : 10.5897/IJPS12.008 | |
学科分类:物理(综合) | |
来源: Academic Journals | |
【 摘 要 】
Single labeled biometric recognition is one of the main challenges to graph-based transductive classification learning. To enhance the recognition rate of single labeled problem, sparse representation provides a feasible strategy for representation learning. In this paper, we developed a powerl1-graph learning technique for semi-supervised learning, called label propagation by powerl1-graph (LPPG). Different from all existing graph-based methods, we assume that the similarity relationship in the label space is a power function in the sample space. What is important is that the determinated power value measured by sparseness is given. Our method characterizes the second sparse processing, and seeks to find a reasonable label propagation way. This characteristic makes our algorithm more intuitive and more powerful than those methods based on the originall1-graph. This proposed method is applied to biometrics recognition and the experiment results show that our algorithm consistently outperforms those originall1-graph-based methods. This demonstrates that our method is a good choice for real-world biometrics applications, especially when there is only one labeled image.
【 授权许可】
CC BY
【 预 览 】
Files | Size | Format | View |
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RO201902016000770ZK.pdf | 498KB | download |