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- Title
Multiscale attention for few‐shot image classification.
- Authors
Zhou, Tong; Dong, Changyin; Song, Junshu; Zhang, Zhiqiang; Wang, Zhen; Chang, Bo; Chen, Dechun
- Abstract
In recent years, the application of traditional deep learning methods in the agricultural field using remote sensing techniques, such as crop area and growth monitoring, crop classification, and agricultural disaster monitoring, has been greatly facilitated by advancements in deep learning. The accuracy of image classification plays a crucial role in these applications. Although traditional deep learning methods have achieved significant success in remote sensing image classification, they often involve convolutional neural networks with a large number of parameters that require extensive optimization using numerous remote sensing images for training purposes. To address these challenges, we propose a novel approach called multiscale attention network (MAN) for sample‐based remote sensing image classification. This method consists primarily of feature extractors and attention modules to effectively utilize different scale features through multiscale feature training during the training phase. We evaluate our proposed method on three datasets comprising agricultural remote sensing images and observe superior performance compared to existing approaches. Furthermore, we validate its generalizability by testing it on an oil well indicator diagram specifically designed for classification tasks.
- Subjects
IMAGE recognition (Computer vision); AGRICULTURAL remote sensing; REMOTE sensing; CONVOLUTIONAL neural networks; DEEP learning; OPTICAL remote sensing
- Publication
Computational Intelligence, 2024, Vol 40, Issue 2, p1
- ISSN
0824-7935
- Publication type
Article
- DOI
10.1111/coin.12639