Sim2Real domain adaptation (DA) research focuses on the constrained setting of adapting from a labeled synthetic source domain to an unlabeled or sparsely labeled real target domain. However, for high-stakes applications (e.g. autonomous driving), it is common to have a modest amount of human-labeled real data in addition to plentiful auto-labeled source data (e.g. from a driving simulator). We study this setting of supervised sim2real DA applied to 2D object detection. We propose Domain Translation via Conditional Alignment and Reweighting (CARE) a novel algorithm that systematically exploits target labels to explicitly close the sim2real appearance and content gaps. We present an analytical justification of our algorithm and demonstrate strong gains over competing methods on standard benchmarks.
翻译:Sim2Real域适应(DA)研究的重点是从标签合成源域改制到未贴标签或标签很少的真正目标域的制约设置,然而,对于高占用应用程序(如自主驾驶),通常的做法是,除了大量自动标签源数据(如驾驶模拟器)外,还拥有少量的人类标签真实数据。我们研究了用于2D对象探测的受监督的模拟DA的这一设置。我们建议通过条件一致和再加权(CARE)进行域翻译,系统地利用标定标签来明确缩小模拟外观和内容差距。我们对我们的算法进行了分析,并展示了在标准基准上相互竞争的方法所取得的巨大收益。