2021
DOI: 10.5194/isprs-archives-xliv-m-3-2021-63-2021
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Feature Fusion for Cross-Modal Scene Classification of Remote Sensing Image

Abstract: Abstract. Scene classification plays an important role in remote sensing field. Traditional approaches use high-resolution remote sensing images as data source to extract powerful features. Although these kind of methods are common, the model performance is severely affected by the image quality of the dataset, and the single modal (source) of images tend to cause the mission of some scene semantic information, which eventually degrade the classification accuracy. Nowadays, multi-modal remote sensing data beco… Show more

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Cited by 2 publications
(1 citation statement)
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“…Multi-modal networks are, by design, relatively complicated. Despite the advancements of various foundational multi-modal networks, it is hard to find a pre-trained multi-modal backbone specific to airborne image and point cloud input pair [41]. This slightly disincentivizes the potential advantages of performing point cloud image fusion in practice.…”
Section: Harnessing Multi-modalitymentioning
confidence: 99%
“…Multi-modal networks are, by design, relatively complicated. Despite the advancements of various foundational multi-modal networks, it is hard to find a pre-trained multi-modal backbone specific to airborne image and point cloud input pair [41]. This slightly disincentivizes the potential advantages of performing point cloud image fusion in practice.…”
Section: Harnessing Multi-modalitymentioning
confidence: 99%