2022
DOI: 10.3390/app12178705
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Exploiting Hierarchical Label Information in an Attention-Embedding, Multi-Task, Multi-Grained, Network for Scene Classification of Remote Sensing Imagery

Abstract: Remote sensing scene classification aims to automatically assign proper labels to remote sensing images. Most of the existing deep learning based methods usually consider the interclass and intraclass relationships of the image content for classification. However, these methods rarely consider the hierarchical information of scene labels, as a scene label may belong to hierarchically multi-grained levels. For example, multi-grained level labels may indicate that a remote sensing scene image may belong to the c… Show more

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Cited by 2 publications
(1 citation statement)
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“…This approach efficiently addresses the long-tail problem of labels, significantly improving the classification performance of each label. Zeng et al [15] proposed a multi-task multi-granularity attention network. By combining coarse-grained classifiers and fine-grained classifiers, data with category intersections are effectively learned.…”
Section: Text Classification Methods Using Attention Mechanism and Jo...mentioning
confidence: 99%
“…This approach efficiently addresses the long-tail problem of labels, significantly improving the classification performance of each label. Zeng et al [15] proposed a multi-task multi-granularity attention network. By combining coarse-grained classifiers and fine-grained classifiers, data with category intersections are effectively learned.…”
Section: Text Classification Methods Using Attention Mechanism and Jo...mentioning
confidence: 99%