Combining KAN with CNN: KonvNeXt’s Performance in Remote Sensing and Patent Insights

Authors
Cheon, MinjongMun, Changbae
Issue Date
2024-09
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Citation
Remote Sensing, v.16, no.18
Abstract
Rapid advancements in satellite technology have led to a significant increase in high-resolution remote sensing (RS) images, necessitating the use of advanced processing methods. Additionally, patent analysis revealed a substantial increase in deep learning and machine learning applications in remote sensing, highlighting the growing importance of these technologies. Therefore, this paper introduces the Kolmogorov-Arnold Network (KAN) model to remote sensing to enhance efficiency and performance in RS applications. We conducted several experiments to validate KAN's applicability, starting with the EuroSAT dataset, where we combined the KAN layer with multiple pre-trained CNN models. Optimal performance was achieved using ConvNeXt, leading to the development of the KonvNeXt model. KonvNeXt was evaluated on the Optimal-31, AID, and Merced datasets for validation and achieved accuracies of 90.59%, 94.1%, and 98.1%, respectively. The model also showed fast processing speed, with the Optimal-31 and Merced datasets completed in 107.63 s each, while the bigger and more complicated AID dataset took 545.91 s. This result is meaningful since it achieved faster speeds and comparable accuracy compared to the existing study, which utilized VIT and proved KonvNeXt's applicability for remote sensing classification tasks. Furthermore, we investigated the model's interpretability by utilizing Occlusion Sensitivity, and by displaying the influential regions, we validated its potential use in a variety of domains, including medical imaging and weather forecasting. This paper is meaningful in that it is the first to use KAN in remote sensing classification, proving its adaptability and efficiency.
Keywords
ConvNeXt; Kolmogorov-Arnold Network (KAN); KonvNeXt; occlusion sensitivity; remote sensing; satellite technology
URI
https://pubs.kist.re.kr/handle/201004/150784
DOI
10.3390/rs16183417
Appears in Collections:
KIST Article > 2024
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