4.7 Article

Converging Channel Attention Mechanisms with Multilayer Perceptron Parallel Networks for Land Cover Classification

Journal

REMOTE SENSING
Volume 15, Issue 16, Pages -

Publisher

MDPI
DOI: 10.3390/rs15163924

Keywords

CAMP-Net; land use; channel attention; multilayer perceptron; parallel networks

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This paper proposes a network structure called CAMP-Net to address the issue of poor differentiation of feature representations in different categories caused by traditional deep learning algorithms' inability to handle pixel information of different bands and classification overfitting. CAMP-Net is a parallel network that enhances the interaction of local band information by grouping spectral nesting and introduces a parallel processing model.
This paper proposes a network structure called CAMP-Net, which considers the problem that traditional deep learning algorithms are unable to manage the pixel information of different bands, resulting in poor differentiation of feature representations of different categories and causing classification overfitting. CAMP-Net is a parallel network that, firstly, enhances the interaction of local information of bands by grouping the spectral nesting of the band information and then proposes a parallel processing model. One branch is responsible for inputting the features, normalized difference vegetation index (NDVI) and normalized difference water index (NDWI) band information generated by grouped nesting into the ViT framework, and enhancing the interaction and information flow between different channels in the feature map by adding the channel attention mechanism to realize the expressive capability of the feature map. The other branch assists the network's ability to enhance the extraction of different feature channels by designing a multi-layer perceptron network based on the utilization of the feature channels. Finally, the classification results are obtained by fusing the features obtained by the channel attention mechanism with those obtained by the MLP to achieve pixel-level multispectral image classification. In this study, the application of the algorithm was carried out in the feature distribution of South County, Yiyang City, Hunan Province, and the experiments were conducted based on 10 m Sentinel-2 multispectral RS images. The experimental results show that the overall accuracy of the algorithm proposed in this paper is 99.00% and the transformer (ViT) is 95.81%, while the performance of the algorithm in the Sentinel-2 dataset was greatly improved for the transformer. The transformer shows a huge improvement, which provides research value for developing a land cover classification algorithm for remote sensing images.

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