首页> 外文会议>12th IEEE International Conference on Automatic Face and Gesture Recognition >Unleash the Black Magic in Age: A Multi-Task Deep Neural Network Approach for Cross-Age Face Verification
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Unleash the Black Magic in Age: A Multi-Task Deep Neural Network Approach for Cross-Age Face Verification

机译:释放时代的黑魔法:跨年龄面部验证的多任务深度神经网络方法

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Facial aging is a complicated process which usually affects the facial appearance (e.g., wrinkles). Variations of facial appearance pose a big challenge to the automatic face recognition problem. How to eliminate the influence of aging factors to the verification performance is a very challenging problem. Multi-task learning has provided a principled framework for jointly learning multiple related tasks to improve generalization performance. In this paper, we leverage this powerful technique to improve the task of cross-age face verification. We present an end-to-end learning framework for cross-age face verification by designing a multi-task deep neural network architecture that exploits the intrinsic low-dimensional representation shared between the tasks of face verification and age estimation. We show that the algorithm effectively balances feature sharing and feature exclusion between the two given tasks. We evaluate the proposed framework on two standard benchmarks. Experimental results demonstrate that our algorithm has significant improvement over the state-of-theart (2.2% EER on MORPH and 7.8% EER on FG-NET, by more than 50.0% and 59.70% performance gain respectively).
机译:面部老化是一个复杂的过程,通常会影响面部外观(例如皱纹)。面部外观的变化对自动面部识别问题提出了很大的挑战。如何消除老化因素对验证性能的影响是一个非常具有挑战性的问题。多任务学习为联合学习多个相关任务提供了一个有原则的框架,以提高泛化性能。在本文中,我们利用这一强大的技术来改善跨年龄人脸验证的任务。我们通过设计多任务深度神经网络体系结构,提出了跨年龄面部验证的端到端学习框架,该体系结构利用了面部验证和年龄估计任务之间共享的固有低维表示。我们证明了该算法有效地平衡了两个给定任务之间的特征共享和特征排除。我们在两个标准基准上评估了提议的框架。实验结果表明,我们的算法与现有技术相比有显着改进(MORPH上的EER为2.2%,FG-NET上的EER为7.8%,性能分别提高了50.0%和59.70%)。

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