Efficient Remote Sensing Image Classification using the Novel STConvNeXt Convolutional Network

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Remote sensing image classification poses significant challenges due to complex spatial organization, high inter-class similarity, and large intra-class variance. To address these issues, we propose STConvNeXt, a novel pure convolutional neural network specifically tailored for efficient remote sensing image classification. STConvNeXt integrates a split-based mobile convolutional module, a tree structure, and a fast pyramid pooling module to achieve residual connectivity. Additionally, we introduce a threshold loss function to stabilize model training and improve classification accuracy. Comprehensive experiments on multiple remote sensing datasets demonstrate that STConvNeXt achieves a 56.49% reduction in parameters and a 49.89% decrease in computational load compared to ConvNeXt, while maintaining state-of-the-art classification accuracy. Our results highlight the effectiveness of STConvNeXt in extracting robust features from remote sensing images, advancing the frontiers of deep learning-based remote sensing analysis.

Article activity feed