2021
DOI: 10.3390/app11199204
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Semantic Multigranularity Feature Learning for High-Resolution Remote Sensing Image Scene Classification

Abstract: High-resolution remote sensing image scene classification is a challenging visual task due to the large intravariance and small intervariance between the categories. To accurately recognize the scene categories, it is essential to learn discriminative features from both global and local critical regions. Recent efforts focus on how to encourage the network to learn multigranularity features with the destruction of the spatial information on the input image at different scales, which leads to meaningless edges … Show more

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