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S-MAT: Semantic-Driven Masked Attention Transformer for Multi-Label Aerial Image Classification.

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  • 1Beijing Key Laboratory of Information Service Engineering, Beijing Union University, Beijing 100101, China.

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Summary
This summary is machine-generated.

This study introduces S-MAT, a novel Semantic-driven Masked Attention Transformer, to improve multi-label aerial scene image classification by effectively modeling label dependencies and filtering redundant information for enhanced accuracy.

Keywords:
aerial scene classificationlabel correlationmulti-label learningredundancy removingsemantic disentanglement

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Area of Science:

  • Remote Sensing
  • Computer Vision
  • Machine Learning

Background:

  • Multi-label aerial scene image classification is challenging due to co-existing land cover objects.
  • Existing methods struggle with modeling dependencies involving non-existent categories, leading to performance degradation.

Purpose of the Study:

  • To propose S-MAT, a Semantic-driven Masked Attention Transformer, for robust multi-label aerial scene image classification.
  • To enhance the modeling of label dependencies by filtering redundant information.

Main Methods:

  • S-MAT utilizes a Masked Attention Transformer (MAT) to capture correlations among label embeddings.
  • A Semantic Disentanglement Module (SDM) constructs label embeddings.
  • Masked attention mechanism filters redundant dependencies, improving model robustness.

Main Results:

  • Achieved CF1 scores of 89.21% (UC-Merced), 90.90% (AID), and 88.31% (MLRSNet).
  • Demonstrated effectiveness through extensive ablation studies and empirical analysis.

Conclusions:

  • S-MAT effectively captures label dependencies, outperforming previous methods.
  • The proposed masked attention mechanism enhances classification robustness and accuracy in aerial imagery.