TY - GEN
T1 - AllWeather-Net: unified image enhancement for autonomous driving under adverse weather and low-light conditions
AU - Qian, Chenghao
AU - Rezaei, Mahdi
AU - Anwar, Saeed
AU - Li, Wenjing
AU - Hussain, Tanveer
AU - Azarmi, Mohsen
AU - Wang, Wei
PY - 2024/12/3
Y1 - 2024/12/3
N2 - Adverse conditions like snow, rain, nighttime, and fog, pose challenges for autonomous driving perception systems. Existing methods have limited effectiveness in improving essential computer vision tasks, such as semantic segmentation, and often focus on only one specific condition, such as removing rain or translating nighttime images into daytime ones. To address these limitations, we propose a method to improve the visual quality and clarity degraded by such adverse conditions. Our method, AllWeather-Net, utilizes a novel hierarchical architecture to enhance images across all adverse conditions. This architecture incorporates information at three semantic levels: scene, object, and texture, by discriminating patches at each level. Furthermore, we introduce a Scaled Illumination-aware Attention Mechanism (SIAM) that guides the learning towards road elements critical for autonomous driving perception. SIAM exhibits robustness, remaining unaffected by changes in weather conditions or environmental scenes. AllWeather-Net effectively transforms images into normal weather and daytime scenes, demonstrating superior image enhancement results and subsequently enhancing the performance of semantic segmentation, with up to a 5.3% improvement in mIoU in the trained domain. We also show our model’s generalization ability by applying it to unseen domains without re-training, achieving up to 3.9 % mIoU improvement. Code can be accessed at: https://github.com/Jumponthemoon/AllWeatherNet.
AB - Adverse conditions like snow, rain, nighttime, and fog, pose challenges for autonomous driving perception systems. Existing methods have limited effectiveness in improving essential computer vision tasks, such as semantic segmentation, and often focus on only one specific condition, such as removing rain or translating nighttime images into daytime ones. To address these limitations, we propose a method to improve the visual quality and clarity degraded by such adverse conditions. Our method, AllWeather-Net, utilizes a novel hierarchical architecture to enhance images across all adverse conditions. This architecture incorporates information at three semantic levels: scene, object, and texture, by discriminating patches at each level. Furthermore, we introduce a Scaled Illumination-aware Attention Mechanism (SIAM) that guides the learning towards road elements critical for autonomous driving perception. SIAM exhibits robustness, remaining unaffected by changes in weather conditions or environmental scenes. AllWeather-Net effectively transforms images into normal weather and daytime scenes, demonstrating superior image enhancement results and subsequently enhancing the performance of semantic segmentation, with up to a 5.3% improvement in mIoU in the trained domain. We also show our model’s generalization ability by applying it to unseen domains without re-training, achieving up to 3.9 % mIoU improvement. Code can be accessed at: https://github.com/Jumponthemoon/AllWeatherNet.
U2 - 10.1007/978-3-031-78113-1_11
DO - 10.1007/978-3-031-78113-1_11
M3 - Conference contribution
SN - 9783031781124
T3 - Lecture Notes in Computer Science
SP - 151
EP - 166
BT - Pattern Recognition: 27th International Conference, ICPR 2024: Proceedings
A2 - Antonacopoulos, Apostolos
A2 - Chaudhuri, Subhasis
A2 - Chellappa, Rama
A2 - Liu, Cheng-Lin
A2 - Bhattacharya, Saumik
A2 - Pal, Umapada
PB - Springer Cham
ER -