Towards Face Representation Learning Conditioned on the Soft Biometrics

JongWon Hwang, L. Tiong, A. Teoh
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Abstract

Abstract: In this paper, we present a method to leverage soft biometric as a means of conditioning biometrics for better face representation learning. By conditioning, we meant the soft biometric trait (age, gender, etc.) is used as an auxiliary biometric for training along with face modality while it is absent during the inference stage. We propose a two-stream deep neural network consisting of a multilayer perceptron network (MLP) and a convolutional neural network (CNN), which can learn a feature representation from soft biometric vectors and face images, respectively. The two-stream network can be optimized simultaneously and the information can be exploited from both biometrics. The learned conditioning soft biometric representation from the MLP serves as a center prototype of the feature learned from the face network, which is beneficial to contract the intra-class variation of the face feature representation. Due to the lacking of the face dataset that comes along with soft biometrics, we construct a database for evaluation purposes. Extensive experiments are performed on two face datasets that equip with soft biometrics and the results show the superiority of our method compared to the face modality alone.
基于软生物特征的人脸表征学习研究
摘要:在本文中,我们提出了一种利用软生物特征作为调节生物特征的手段来更好地学习人脸表征的方法。通过条件反射,我们的意思是软生物特征(年龄,性别等)与面部形态一起作为辅助生物特征进行训练,而在推理阶段则不存在。我们提出了一种由多层感知器网络(MLP)和卷积神经网络(CNN)组成的两流深度神经网络,可以分别从软生物特征向量和人脸图像中学习特征表示。双流网络可以同时优化,同时利用两种生物特征信息。从MLP中学习到的条件反射软生物特征表征作为从人脸网络中学习到的特征的中心原型,有利于收缩人脸特征表征的类内变化。由于软生物识别技术缺乏人脸数据集,我们构建了一个用于评估目的的数据库。在两个具有软生物特征的人脸数据集上进行了大量的实验,结果表明我们的方法与单独的人脸模态相比具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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