2023
DOI: 10.3390/rs15245704
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SDAT-Former++: A Foggy Scene Semantic Segmentation Method with Stronger Domain Adaption Teacher for Remote Sensing Images

Ziquan Wang,
Yongsheng Zhang,
Zhenchao Zhang
et al.

Abstract: Semantic segmentation based on optical images can provide comprehensive scene information for intelligent vehicle systems, thus aiding in scene perception and decision making. However, under adverse weather conditions (such as fog), the performance of methods can be compromised due to incomplete observations. Considering the success of domain adaptation in recent years, we believe it is reasonable to transfer knowledge from clear and existing annotated datasets to images with fog. Technically, we follow the ma… Show more

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“…[2]. In areas with frequent haze weather, a large amount of haze will seriously affect the imaging quality of images collected by cars, thus posing serious safety risks to autonomous vehicles [3].…”
Section: Mrd-net: Multi-scale Refinement Dehazing Network For Autonom...mentioning
confidence: 99%
“…[2]. In areas with frequent haze weather, a large amount of haze will seriously affect the imaging quality of images collected by cars, thus posing serious safety risks to autonomous vehicles [3].…”
Section: Mrd-net: Multi-scale Refinement Dehazing Network For Autonom...mentioning
confidence: 99%