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A Learning Framework for Age Rank Estimation Based on Face Images With Scattering Transform

机译:基于人脸图像散射变换的年龄等级估计学习框架

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This paper presents a cost-sensitive ordinal hyperplanes ranking algorithm for human age estimation based on face images. The proposed approach exploits relative-order information among the age labels for rank prediction. In our approach, the age rank is obtained by aggregating a series of binary classification results, where cost sensitivities among the labels are introduced to improve the aggregating performance. In addition, we give a theoretical analysis on designing the cost of individual binary classifier so that the misranking cost can be bounded by the total misclassification costs. An efficient descriptor, scattering transform, which scatters the Gabor coefficients and pooled with Gaussian smoothing in multiple layers, is evaluated for facial feature extraction. We show that this descriptor is a generalization of conventional bioinspired features and is more effective for face-based age inference. Experimental results demonstrate that our method outperforms the state-of-the-art age estimation approaches.
机译:本文提出了一种基于人脸图像的成本敏感的有序超平面排序算法,用于人类年龄估计。所提出的方法利用年龄标签之间的相对顺序信息进行排名预测。在我们的方法中,年龄等级是通过汇总一系列二进制分类结果而获得的,其中引入标签之间的成本敏感性以提高汇总性能。此外,我们对设计单个二元分类器的成本进行了理论分析,以使错位成本可以受到总误分类成本的限制。为面部特征提取,评估了一种有效的描述符,即散射变换,该变换将Gabor系数散射并在多层中与高斯平滑合并在一起,用于面部特征提取。我们显示此描述符是常规生物启发功能的概括,对于基于面部的年龄推断更有效。实验结果表明,我们的方法优于最新的年龄估算方法。

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