Empirical Generalization Study: Unsupervised Domain Adaptation vs. Domain Generalization Methods for Semantic Segmentation in the Wild

Fabrizio J. Piva, Daan de Geus, Gijs Dubbelman
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引用次数: 7

Abstract

For autonomous vehicles and mobile robots to safely operate in the real world, i.e., the wild, scene understanding models should perform well in the many different scenarios that can be encountered. In reality, these scenarios are not all represented in the model’s training data, leading to poor performance. To tackle this, current training strategies attempt to either exploit additional unlabeled data with unsupervised domain adaptation (UDA), or to reduce overfitting using the limited available labeled data with domain generalization (DG). However, it is not clear from current literature which of these methods allows for better generalization to unseen data from the wild. Therefore, in this work, we present an evaluation framework in which the generalization capabilities of state-of-the-art UDA and DG methods can be compared fairly. From this evaluation, we find that UDA methods, which leverage unlabeled data, outperform DG methods in terms of generalization, and can deliver similar performance on unseen data as fully-supervised training methods that require all data to be labeled. We show that semantic segmentation performance can be increased up to 30% for a priori unknown data without using any extra labeled data.
经验泛化研究:无监督领域自适应与领域泛化在野外语义分割中的应用
为了让自动驾驶汽车和移动机器人在现实世界(即野外)中安全运行,场景理解模型应该在可能遇到的许多不同场景中表现良好。在现实中,这些场景并没有全部表现在模型的训练数据中,导致性能不佳。为了解决这个问题,目前的训练策略要么尝试利用无监督域自适应(UDA)来利用额外的未标记数据,要么使用有限的可用标记数据来减少过拟合(DG)。然而,从目前的文献来看,尚不清楚这些方法中的哪一种能够更好地概括来自野外的未见数据。因此,在这项工作中,我们提出了一个评估框架,其中可以公平地比较最先进的UDA和DG方法的泛化能力。从这个评估中,我们发现利用未标记数据的UDA方法在泛化方面优于DG方法,并且可以在未见过的数据上提供与需要标记所有数据的完全监督训练方法相似的性能。我们表明,在不使用任何额外标记数据的情况下,对于先验未知数据,语义分割性能可以提高30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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