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Facial Age Estimation With Age Difference

机译:具有年龄差异的面部年龄估计

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Age estimation based on the human face remains a significant problem in computer vision and pattern recognition. In order to estimate an accurate age or age group of a facial image, most of the existing algorithms require a huge face data set attached with age labels. This imposes a constraint on the utilization of the immensely unlabeled or weakly labeled training data, e.g., the huge amount of human photos in the social networks. These images may provide no age label, but it is easy to derive the age difference for an image pair of the same person. To improve the age estimation accuracy, we propose a novel learning scheme to take advantage of these weakly labeled data through the deep convolutional neural networks. For each image pair, Kullback–Leibler divergence is employed to embed the age difference information. The entropy loss and the cross entropy loss are adaptively applied on each image to make the distribution exhibit a single peak value. The combination of these losses is designed to drive the neural network to understand the age gradually from only the age difference information. We also contribute a data set, including more than 100 000 face images attached with their taken dates. Each image is both labeled with the timestamp and people identity. Experimental results on two aging face databases show the advantages of the proposed age difference learning system, and the state-of-the-art performance is gained.
机译:基于人脸的年龄估计仍然是计算机视觉和模式识别中的重要问题。为了估计面部图像的准确年龄或年龄组,大多数现有算法都需要庞大的面部数据集并附加年龄标签。这对使用巨大的,未标记的或标记较弱的训练数据(例如,社交网络中的大量人像)的使用施加了约束。这些图像可能没有提供年龄标签,但是很容易得出同一个人的图像对的年龄差异。为了提高年龄估计的准确性,我们提出了一种新颖的学习方案,以通过深度卷积神经网络利用这些弱标记的数据。对于每个图像对,采用Kullback-Leibler散度来嵌入年龄差异信息。熵损失和交叉熵损失被自适应地应用于每个图像,以使分布表现出单个峰值。这些损失的组合旨在驱动神经网络仅从年龄差异信息逐渐了解年龄。我们还提供了一个数据集,包括超过10万张带有拍摄日期的面部图像。每个图像都标记有时间戳和人物身份。在两个衰老面孔数据库上的实验结果表明了所提出的年龄差异学习系统的优势,并获得了最新的性能。

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