Facial age estimation is an important yet very challenging problem in computer vision. To improve the performance of facial age estimation, we first formulate a simple standard baseline and build a much strong one by collecting the tricks in pre-training, data augmentation, model architecture, and so on. Compared with the standard baseline, the proposed one significantly decreases the estimation errors. Moreover, long-tailed recognition has been an important topic in facial age datasets, where the samples often lack on the elderly and children. To train a balanced age estimator, we propose a two-stage training method named Long-tailed Age Estimation (LAE), which decouples the learning procedure into representation learning and classification. The effectiveness of our approach has been demonstrated on the dataset provided by organizers of Guess The Age Contest 2021.
翻译:急性年龄估计是计算机视觉中一个重要的但非常具有挑战性的问题。 为了改善面部年龄估计的绩效,我们首先制定简单的标准基线,并通过收集培训前、数据扩增、模型架构等方面的技巧来构建一个非常强大的基准。 与标准基线相比,拟议的基准大大降低了估计错误。 此外,长期认识一直是面部年龄数据集的一个重要主题,那里的样本往往缺乏老年人和儿童。 为了培训一个平衡的年龄估计员,我们提出了名为 " 长尾年龄估计(LAE) " 的两阶段培训方法,该方法将学习程序与代表性学习和分类区分开来。 我们的方法的有效性已经在Guess The Age Contest 2021组织者提供的数据集上得到了证明。