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Face recognition by sparse discriminant analysis via joint L_(2,1)-norm minimization

机译:通过联合L_(2,1)-范数最小化的稀疏判别分析进行人脸识别

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摘要

Recently, joint feature selection and subspace learning, which can perform feature selection and subspace learning simultaneously, is proposed and has encouraging ability on face recognition. In the literature, a framework of utilizing L_(2,1)-norm penalty term has also been presented, but some important algorithms cannot be covered, such as Fisher Linear Discriminant Analysis and Sparse Discriminant Analysis. Therefore, in this paper, we add L_(2,1)-norm penalty term on FLDA and propose a feasible solution by transforming its nonlinear model into linear regression type. In addition, we modify the optimization model of SDA by replacing elastic net with L_(2,1)-norm penalty term and present its optimization method. Experiments on three standard face databases illustrate FLDA and SDA via L_(2,1)-norm penalty term can significantly improve their recognition performance, and obtain inspiring results with low computation cost and for low-dimension feature.
机译:最近,提出了可以同时执行特征选择和子空间学习的联合特征选择和子空间学习,并且在面部识别方面具有令人鼓舞的能力。在文献中,还提出了利用L_(2,1)-范数惩罚项的框架,但是一些重要的算法无法涵盖,例如Fisher线性判别分析和稀疏判别分析。因此,在本文中,我们在FLDA上添加L_(2,1)-范数惩罚项,并通过将其非线性模型转换为线性回归类型来提出可行的解决方案。此外,我们通过用L_(2,1)-范数惩罚项代替弹性网来修改SDA的优化模型,并提出其优化方法。在三个标准人脸数据库上进行的实验表明,通过L_(2,1)-范数惩罚项的FLDA和SDA可以显着提高其识别性能,并以低计算成本和低维特征获得启发性结果。

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