论文标题
ELDA:使用边缘在基于语义细分的UDA上具有优势
ELDA: Using Edges to Have an Edge on Semantic Segmentation Based UDA
论文作者
论文摘要
已经提出了许多无监督的域适应性(UDA)方法,以利用域不变信息来弥合域间隙。大多数方法都选择了深度作为此类信息,并取得了杰出的成功。尽管它们有效,但在UDA任务中,将深度用作域不变信息可能会导致多个问题,例如过高的提取成本和实现可靠预测质量的困难。结果,我们介绍了基于边缘学习的域适应性(ELDA),该框架将边缘信息纳入其培训过程中,以作为一种域不变信息。在我们的实验中,我们进行定量和定性地证明,边缘信息的合并确实是有益且有效的,并且使Elda能够在两个通常采用的基于语义细分的UDA任务的常用基准上胜过当代的最新方法。此外,我们表明ELDA能够更好地将不同类别的功能分布分开。我们进一步提供消融分析,以证明我们的设计决策是合理的。
Many unsupervised domain adaptation (UDA) methods have been proposed to bridge the domain gap by utilizing domain invariant information. Most approaches have chosen depth as such information and achieved remarkable success. Despite their effectiveness, using depth as domain invariant information in UDA tasks may lead to multiple issues, such as excessively high extraction costs and difficulties in achieving a reliable prediction quality. As a result, we introduce Edge Learning based Domain Adaptation (ELDA), a framework which incorporates edge information into its training process to serve as a type of domain invariant information. In our experiments, we quantitatively and qualitatively demonstrate that the incorporation of edge information is indeed beneficial and effective and enables ELDA to outperform the contemporary state-of-the-art methods on two commonly adopted benchmarks for semantic segmentation based UDA tasks. In addition, we show that ELDA is able to better separate the feature distributions of different classes. We further provide an ablation analysis to justify our design decisions.