Semantic image segmentation is a critical component in many computer vision systems, such as autonomous driving. In such applications, adverse conditions (heavy rain, night time, snow, extreme lighting) on the one hand pose specific challenges, yet are typically underrepresented in the available datasets. Generating more training data is cumbersome and expensive, and the process itself is error-prone due to the inherent aleatoric uncertainty. To address this challenging problem, we propose BTSeg, which exploits image-level correspondences as weak supervision signal to learn a segmentation model that is agnostic to adverse conditions. To this end, our approach uses the Barlow twins loss from the field of unsupervised learning and treats imag...
Unsupervised domain adaptation for semantic segmentation has been intensively studied due to the low...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
— Automotive scene understanding under adverse weather conditions raises a realistic and challengin...
Due to the scarcity of dense pixel-level semantic annotations for images recorded in adverse visual ...
Generalizing models trained on normal visual conditions to target domains under adverse conditions i...
Generalizing models trained on normal visual conditions to target domains under adverse conditions i...
Level 5 autonomy for self-driving cars requires a robust perception system that can parse input imag...
Recent semantic segmentation models perform well under standard weather conditions and sufficient il...
Level 5 autonomy for self-driving cars requires a robust visual perception system that can parse inp...
Unsupervised domain adaptation is a promising technique for computer vision tasks, especially when a...
This paper presents FogAdapt, a novel approach for domain adaptation of semantic segmentation for de...
Road scene understanding tasks have recently become crucial for self-driving vehicles. In particular...
Adapting semantic segmentation models to new domains is an important but challenging problem. Recent...
Modern machine learning, especially deep learning, which is used in a variety of applications, requi...
Automotive scene understanding and segmentation has become increasingly popular in recent years as i...
Unsupervised domain adaptation for semantic segmentation has been intensively studied due to the low...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
— Automotive scene understanding under adverse weather conditions raises a realistic and challengin...
Due to the scarcity of dense pixel-level semantic annotations for images recorded in adverse visual ...
Generalizing models trained on normal visual conditions to target domains under adverse conditions i...
Generalizing models trained on normal visual conditions to target domains under adverse conditions i...
Level 5 autonomy for self-driving cars requires a robust perception system that can parse input imag...
Recent semantic segmentation models perform well under standard weather conditions and sufficient il...
Level 5 autonomy for self-driving cars requires a robust visual perception system that can parse inp...
Unsupervised domain adaptation is a promising technique for computer vision tasks, especially when a...
This paper presents FogAdapt, a novel approach for domain adaptation of semantic segmentation for de...
Road scene understanding tasks have recently become crucial for self-driving vehicles. In particular...
Adapting semantic segmentation models to new domains is an important but challenging problem. Recent...
Modern machine learning, especially deep learning, which is used in a variety of applications, requi...
Automotive scene understanding and segmentation has become increasingly popular in recent years as i...
Unsupervised domain adaptation for semantic segmentation has been intensively studied due to the low...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
— Automotive scene understanding under adverse weather conditions raises a realistic and challengin...