We address the problem of universal domain adaptation (UDA) in ordinal regression (OR), which attempts to solve classification problems in which labels are not independent, but follow a natural order. We show that the UDA techniques developed for classification and based on the clustering assumption, under-perform in OR settings. We propose a method that complements the OR classifier with an auxiliary task of order learning, which plays the double role of discriminating between common and private instances, and expanding class labels to the private target images via ranking. Combined with adversarial domain discrimination, our model is able to address the closed set, partial and open set configurations. We evaluate our method on three face age estimation datasets, and show that it outperforms the baseline methods.
翻译:在正反回归(OR)中,我们处理通用域适应(UDA)问题,试图解决标签不独立的分类问题,但遵循自然顺序。我们表明,UDA技术是为分类而开发的,并以分组假设为基础,在OR设置中表现不佳。我们提出一种方法,补充OR分类程序,辅助程序学习,发挥区分普通和私人情况的双重作用,通过排名将类标签扩大至私人目标图像。结合对抗领域歧视,我们的模型能够处理封闭的成套、部分和开放的组合配置。我们评估了三个面年龄估计数据集的方法,并显示它超过了基线方法。