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Cost-sensitive subspace learning for human age estimation

机译:成本敏感的子空间学习,用于人类年龄估算

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This paper presents a novel cost-sensitive subspace learning approach for human age estimation using face and gait signatures. Motivated by the fact that mis-estimating the age information of a person from a facial image or gait sequence could lead to different errors, we propose in this paper two new cost-sensitive subspace learning methods for human age estimation. Our approach incorporates a cost matrix, which specifies the different error associated with mis-estimating each sample, into two popular subspace learning algorithms and devise the corresponding cost-sensitive methods, namely, cost-sensitive principal component analysis (CSPCA), and cost-sensitive locality preserving projections (CSLPP), to project high-dimensional face and gait samples into the low-dimensional subspaces derived. To uncover the relation of the projected features and the ground-truth age values, we learn a multiple linear regression function with a quadratic model for age estimation. Experimental results on the MORPH face database and the USF gait database are presented to demonstrate the efficacy of our proposed methods.
机译:本文提出了一种新的成本敏感的子空间学习方法,用于使用面部和步态签名进行人类年龄估计。由于从面部图像或步态序列中错误估计一个人的年龄信息可能导致不同的错误,这一事实促使我们在本文中提出了两种新的成本敏感型子空间学习方法,用于人类年龄估计。我们的方法将成本矩阵(该矩阵指定了与错误估计每个样本相关的不同误差)合并到两种流行的子空间学习算法中,并设计了相应的成本敏感方法,即成本敏感主成分分析(CSPCA)和成本敏感敏感局部保留投影(CSLPP),将高维人脸和步态样本投影到导出的低维子空间中。为了揭示投影特征与地面真实年龄值之间的关系,我们学习了带有用于年龄估计的二次模型的多元线性回归函数。提出了在MORPH人脸数据库和USF步态数据库上的实验结果,以证明我们提出的方法的有效性。

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