首页> 外文会议>ICMLA 2012;International Conference on Machine Learning and Applications >Obtaining Full Regularization Paths for Robust Sparse Coding with Applications to Face Recognition
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Obtaining Full Regularization Paths for Robust Sparse Coding with Applications to Face Recognition

机译:获得用于鲁棒稀疏编码的完整正则化路径及其在人脸识别中的应用

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The problem of robust sparse coding is considered. It is defined as finding linear reconstruction coefficients that minimize the sum of absolute values of the errors, instead of the more typically used sum of squares of the errors. This change lowers the influence of large errors and enhances the robustness of the solution to noise in the data. Sparsity is enforced by limiting the sum of absolute values of the coefficients. We present an algorithm that finds the path traced by the coefficients when the sparsity-inducing constraint is varied. The optimality conditions are derived and included in the algorithm to speed its execution. The proposed method is validated on the problem of robust face recognition.
机译:考虑了鲁棒的稀疏编码的问题。它的定义是找到使误差的绝对值之和最小的线性重构系数,而不是更常用的误差平方和。此更改降低了大错误的影响,并增强了解决数据中噪声的解决方案的鲁棒性。稀疏性是通过限制系数的绝对值之和来实现的。我们提出了一种算法,当稀疏诱导约束发生变化时,找到由系数跟踪的路径。推导最佳条件并将其包括在算法中以加快其执行速度。在鲁棒性人脸识别问题上验证了该方法的有效性。

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