2023
DOI: 10.3390/rs15102541
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DILRS: Domain-Incremental Learning for Semantic Segmentation in Multi-Source Remote Sensing Data

Abstract: With the exponential growth in the speed and volume of remote sensing data, deep learning models are expected to adapt and continually learn over time. Unfortunately, the domain shift between multi-source remote sensing data from various sensors and regions poses a significant challenge. Segmentation models face difficulty in adapting to incremental domains due to catastrophic forgetting, which can be addressed via incremental learning methods. However, current incremental learning methods mainly focus on clas… Show more

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Cited by 2 publications
(1 citation statement)
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“…In-orbit remote-sensing observation: Remote sensing satellites continuously provide a vast amount of time-series incremental data, such as land cover changes and meteorological observations. In this field, CSS can assist the inorbit system in monitoring and analyzing these data selfintelligently under constantly arriving data conditions [204], [205], [206], including atmospheric pollution, soil quality, forest health, etc. When new monitoring requirements or tasks emerge, the system can adjust its monitoring methods adaptively.…”
Section: Applications and Prospects 61 Applicationsmentioning
confidence: 99%
“…In-orbit remote-sensing observation: Remote sensing satellites continuously provide a vast amount of time-series incremental data, such as land cover changes and meteorological observations. In this field, CSS can assist the inorbit system in monitoring and analyzing these data selfintelligently under constantly arriving data conditions [204], [205], [206], including atmospheric pollution, soil quality, forest health, etc. When new monitoring requirements or tasks emerge, the system can adjust its monitoring methods adaptively.…”
Section: Applications and Prospects 61 Applicationsmentioning
confidence: 99%