RingMo-lite: A Remote Sensing Lightweight Network with CNN-Transformer Hybrid Framework

In recent years, remote sensing (RS) vision foundation models such as RingMo have emerged and achieved excellent performance in various downstream tasks. However, the high demand for computing resources limits the application of these models on edge devices. It is necessary to design a more lightwei...

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Veröffentlicht in:IEEE transactions on geoscience and remote sensing 2024-01, Vol.62, p.1-1
Hauptverfasser: Wang, Yuelei, Zhang, Ting, Zhao, Liangjin, Hu, Lin, Wang, Zhechao, Niu, Ziqing, Cheng, Peirui, Chen, Kaiqiang, Zeng, Xuan, Wang, Zhirui, Wang, Hongqi, Sun, Xian
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Sprache:eng
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Zusammenfassung:In recent years, remote sensing (RS) vision foundation models such as RingMo have emerged and achieved excellent performance in various downstream tasks. However, the high demand for computing resources limits the application of these models on edge devices. It is necessary to design a more lightweight foundation model to support on-orbit RS image interpretation. Existing methods face challenges in achieving lightweight solutions while retaining generalization in RS image interpretation. This is due to the complex high and low-frequency spectral components in RS images, which make traditional single CNN or Vision Transformer methods unsuitable for the task. Therefore, this paper proposes RingMo-lite, a RS lightweight network with a CNN-Transformer hybrid framework, which effectively exploits the frequency-domain properties of RS to optimize the interpretation process on several tasks like classification, object detection, semantic segmentation, and change detection. It is combined by the Transformer module as a low-pass filter to extract global features of RS images through a dual-branch structure, and the CNN module as a stacked high-pass filter to extract fine-grained details effectively. Furthermore, a novelty-designed frequency-domain masked image modeling (FD-MIM) is employed during the pretraining stage for self-supervised learning, which combines the high-frequency and low-frequency characteristics of each image patch. This approach effectively captures the latent feature representation in RS data. As shown in Fig. 1, compared with RingMo, the proposed RingMo-lite reduces the parameters over 60% in various RS image interpretation tasks, the average accuracy drops by less than 2% in most of the scenes and achieves SOTA performance compared to models of the similar size. In addition, our work will be integrated into the MindSpore computing platform in the near future.
ISSN:0196-2892
1558-0644
DOI:10.1109/TGRS.2024.3360447