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Robust regression with deep CNNs for facial age estimation: An empirical study

机译:深度CNN的稳健回归用于面部年龄估计:一项实证研究

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Recent works have shown that deep Convolutional Neural Networks (CNNs) can be very effective for image-based age estimation. However, the proposed approaches significantly vary, and there are still some open problems. Almost all deep regression networks for age estimation have exploited the Mean Square Error loss only. These deep networks have not considered the influence of aberrant and outlier observations on the final model. In this letter, we introduce the use of robust loss functions in order to learn deep regression networks for age estimation. More precisely, we explore the use of two robust regression functions: (i) the l(1) norm error, and (ii) the adaptive loss function that retains the advantages of the l(1) and l(2) norms. Experimental results obtained on four public databases demonstrate that learning a deep CNN with robust losses can improve the age estimation. (C) 2019 Elsevier Ltd. All rights reserved.
机译:最近的工作表明,深度卷积神经网络(CNN)对于基于图像的年龄估计可能非常有效。但是,建议的方法差异很大,仍然存在一些未解决的问题。几乎所有用于年龄估计的深度回归网络都仅利用均方误差损失。这些深层网络并未考虑异常和异常观测值对最终模型的影响。在这封信中,我们介绍了稳健损失函数的使用,以便学习用于年龄估计的深度回归网络。更准确地说,我们探索了两个稳健的回归函数的使用:(i)l(1)范数误差,和(ii)保留l(1)和l(2)范式优势的自适应损失函数。在四个公共数据库上获得的实验结果表明,学习具有强大损失的深层CNN可以改善年龄估算。 (C)2019 Elsevier Ltd.保留所有权利。

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