论文标题
使用注意卷积网络从面部图像中的年龄和性别预测
Age and Gender Prediction From Face Images Using Attentional Convolutional Network
论文作者
论文摘要
最近,对面部图像的年龄和性别的自动预测最近引起了很多关注,因为它在各种面部分析问题中广泛应用。但是,由于面部图像的阶层内变化很大(例如照明,姿势,比例,遮挡的变化),现有模型仍然落后于所需的精度级别,这对于在现实世界应用中使用这些模型是必不可少的。在这项工作中,我们基于注意力和残留卷积网络的整体提出了一个深度学习框架,以预测具有高精度率的性别和年龄段。使用注意机制使我们的模型能够专注于面部的重要部分和信息丰富的部分,这可以帮助它做出更准确的预测。我们以多任务学习方式训练我们的模型,并以预测的性别增强年龄分类者的功能嵌入,并表明这样做可以进一步提高年龄预测的准确性。我们的模型接受了流行的面孔年龄和性别数据集的培训,并取得了令人鼓舞的结果。通过可视化火车模型的注意图,我们表明我们的模型已经学会了对面部正确区域的敏感。
Automatic prediction of age and gender from face images has drawn a lot of attention recently, due it is wide applications in various facial analysis problems. However, due to the large intra-class variation of face images (such as variation in lighting, pose, scale, occlusion), the existing models are still behind the desired accuracy level, which is necessary for the use of these models in real-world applications. In this work, we propose a deep learning framework, based on the ensemble of attentional and residual convolutional networks, to predict gender and age group of facial images with high accuracy rate. Using attention mechanism enables our model to focus on the important and informative parts of the face, which can help it to make a more accurate prediction. We train our model in a multi-task learning fashion, and augment the feature embedding of the age classifier, with the predicted gender, and show that doing so can further increase the accuracy of age prediction. Our model is trained on a popular face age and gender dataset, and achieved promising results. Through visualization of the attention maps of the train model, we show that our model has learned to become sensitive to the right regions of the face.