FogAdapt: Self-Supervised Domain Adaptation for Semantic Segmentation of Foggy Images
Javed Iqbal, Rehan Hafiz, Mohsen Ali

TL;DR
FogAdapt introduces a self-supervised domain adaptation method that effectively improves semantic segmentation accuracy in foggy scenes by leveraging self-entropy and multi-scale information, outperforming existing approaches.
Contribution
The paper proposes a novel self-supervised domain adaptation technique using self-entropy and scale-invariant pseudo-labels for foggy scene segmentation.
Findings
Significant performance improvements over state-of-the-art methods.
Effective handling of visibility and scale variations in foggy scenes.
Robust pseudo-label generation for domain adaptation.
Abstract
This paper presents FogAdapt, a novel approach for domain adaptation of semantic segmentation for dense foggy scenes. Although significant research has been directed to reduce the domain shift in semantic segmentation, adaptation to scenes with adverse weather conditions remains an open question. Large variations in the visibility of the scene due to weather conditions, such as fog, smog, and haze, exacerbate the domain shift, thus making unsupervised adaptation in such scenarios challenging. We propose a self-entropy and multi-scale information augmented self-supervised domain adaptation method (FogAdapt) to minimize the domain shift in foggy scenes segmentation. Supported by the empirical evidence that an increase in fog density results in high self-entropy for segmentation probabilities, we introduce a self-entropy based loss function to guide the adaptation method. Furthermore,…
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