2023
DOI: 10.1109/jstars.2023.3257836
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Feature Consistency Constraints-Based CNN for Landsat Land Cover Mapping

Abstract: The cascade of convolution layers and the end-toend training process facilitate CNN feature extraction and transmission, and promote the success of CNN in image processing. However, the drawback of heavily relying on large-scale highquality training samples restricts its applications. To avoid costly and unrealistic manual annotations for large-scale remote sensing images, existing land cover maps are considered as an alternative to manual annotations, in which noisy labels are inevitable. To alleviate the imp… Show more

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References 55 publications
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