Domain Adaptive Knowledge Distillation for Driving Scene Semantic Segmentation

D. Kothandaraman, Athira M. Nambiar, Anurag Mittal
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引用次数: 17

Abstract

Practical autonomous driving systems face two crucial challenges: memory constraints and domain gap issues. In this paper, we present a novel approach to learn domain adaptive knowledge in models with limited memory, thus bestowing the model with the ability to deal with these issues in a comprehensive manner. We term this as “Domain Adaptive Knowledge Distillation ” and address the same in the context of unsupervised domain-adaptive semantic segmentation by proposing a multi-level distillation strategy to effectively distil knowledge at different levels. Further, we introduce a novel cross entropy loss that leverages pseudo labels from the teacher. These pseudo teacher labels play a multifaceted role towards: (i) knowledge distillation from the teacher network to the student network & (ii) serving as a proxy for the ground truth for target domain images, where the problem is completely unsupervised. We introduce four paradigms for distilling domain adaptive knowledge and carry out extensive experiments and ablation studies on real-to-real as well as synthetic-to-real scenarios. Our experiments demonstrate the profound success of our proposed method.
基于领域自适应知识蒸馏的驾驶场景语义分割
实际的自动驾驶系统面临着两个关键的挑战:内存约束和域间隙问题。在本文中,我们提出了一种在有限记忆模型中学习领域自适应知识的新方法,从而赋予模型全面处理这些问题的能力。我们将其称为“领域自适应知识蒸馏”,并通过提出一种多级蒸馏策略来有效地提取不同层次的知识,从而在无监督领域自适应语义分割的背景下解决相同的问题。此外,我们引入了一种新的交叉熵损失,它利用了来自教师的伪标签。这些伪教师标签在以下方面发挥着多方面的作用:(i)从教师网络到学生网络的知识蒸馏;(ii)作为目标域图像的基础真理的代理,其中问题完全没有监督。我们介绍了四种提取领域自适应知识的范式,并对真实到真实以及合成到真实的场景进行了广泛的实验和研究。我们的实验证明了我们所提出的方法的巨大成功。
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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