SS-SFDA : Self-Supervised Source-Free Domain Adaptation for Road Segmentation in Hazardous Environments

D. Kothandaraman, Rohan Chandra, Dinesh Manocha
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引用次数: 21

Abstract

We present a novel approach for unsupervised road segmentation in adverse weather conditions such as rain or fog. This includes a new algorithm for source-free domain adaptation (SFDA) using self-supervised learning. More-over, our approach uses several techniques to address various challenges in SFDA and improve performance, including online generation of pseudo-labels and self-attention as well as use of curriculum learning, entropy minimization and model distillation. We have evaluated the performance on 6 datasets corresponding to real and synthetic adverse weather conditions. Our method outperforms all prior works on unsupervised road segmentation and SFDA by at least 10.26%, and improves the training time by 18−180×. Moreover, our self-supervised algorithm exhibits similar accuracy performance in terms of mIOU score as compared to prior supervised methods.
SS-SFDA:危险环境下道路分割的自监督无源域自适应
我们提出了一种在恶劣天气条件下(如雨或雾)进行无监督道路分割的新方法。这包括一种使用自监督学习的无源域适应(SFDA)新算法。此外,我们的方法使用了几种技术来解决SFDA中的各种挑战并提高性能,包括在线生成伪标签和自我关注,以及使用课程学习,熵最小化和模型蒸馏。我们在6个对应于真实和合成不利天气条件的数据集上评估了性能。我们的方法比之前所有的无监督道路分割和SFDA的工作至少提高了10.26%,并将训练时间提高了18 ~ 180倍。此外,与先前的监督方法相比,我们的自监督算法在mIOU得分方面表现出相似的准确性。
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