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Resource Efficient Framework for Remote Sensing Visual Recognition

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Author(s)
Fatima, UnseKhan, ZafranKim, YechanKim, JoonmoPedrycz, WitoldJeon, Moongu
Type
Article
Citation
IEEE Sensors Journal
Issued Date
2025-08
Abstract
In the rapidly evolving field of remote sensing (RS), the need for efficient and accurate scene classification is paramount. RS imagery comprising satellite and aerial imagery often faces challenges such as varying scales and diverse environmental conditions, which can significantly affect the discernibility of important features. To address these challenges, this article introduces a light-weight dual-branch network architecture that adequately handles scale variations and complex scene compositions. The first branch, Progressive Feature Processing Branch (PFPB), of the proposed framework is engineered to extract rich multiple scale features through collaborative parallel stages and intra and inter branch connectivity with optimized computational resources. The second branch, InXformer (IXB) enhances the system's capability to assimilate global context and long-range dependencies essential for comprehensive scene analysis utilizing involution-based transformer approach. Experimental validation in three challenging datasets sourced from diverse aerial platforms demonstrates the greater effectiveness of the proposed network. The proposed network achieves a weighted F1 of 97.15% in the AIDERSv2 dataset, surpassing other methods such as DecoupleNet by more than 2%, while maintaining high efficiency with 0.41M parameters, lower computational overhead with 0.96 GFLOPs and a higher processing speed of 4616 FPS. With regards to WHU-RS19 and UCM datasets, the devised network achieves 93.69% and 94.57% weighted-F1 score respectively. These results underscore the ability of the proposed network to efficiently handle diverse scene compositions by delivering state-of-the-art performance. © 2025 Elsevier B.V., All rights reserved.
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISSN
1530-437X
DOI
10.1109/JSEN.2025.3595936
URI
https://scholar.gist.ac.kr/handle/local/32018
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