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DASFNet: Dense-Attention–Similarity-Fusion Network for scene classification of dual-modal remote-sensing images

Jin Jianhui, Wujie Zhou, Lv Ye, Jingsheng Lei, Lu Yu, Xiaohong Qian, Ting Luo

2022International Journal of Applied Earth Observation and Geoinformation14 citationsDOIOpen Access PDF

Abstract

Although significant progress has been made in scene classification of high-resolution remote-sensing images (HRRSIs), dual-modal HRRSI scene classification is still an active and challenging issue. In this study, we introduce an end-to-end dense-attention–similarity-fusion network (DASFNet) for dual-modal HRRSIs. Specifically, we propose a dense-attention map module based on graph convolution, which adaptively captures long-range semantic cues and further directs shallow-attention cues to the deep level to guide the generation of high-level feature attention cues. At the encoder stage, DASFNet uses feature similarity to explore the correlation between dual-modal features; a similarity-fusion module extracts complementary information by fusing features from different modalities. A multiscale context-feature-aggregation module is used to strengthen the feature embedding of any two spatial scales; this solves the of scale change problem. A large number of experiments on two HRRSI benchmark datasets for scene classification indicate that the proposed DASFNet outperforms the outstanding scene classification approaches.

Topics & Concepts

Artificial intelligenceComputer scienceSimilarity (geometry)Pattern recognition (psychology)Feature (linguistics)ModalContext (archaeology)EncoderDual (grammatical number)Computer visionGeographyImage (mathematics)ChemistryLinguisticsLiteraturePolymer chemistryOperating systemArtPhilosophyArchaeologyRemote-Sensing Image ClassificationAdvanced Image and Video Retrieval TechniquesAdvanced Neural Network Applications
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