Abstract

High-resolution remote sensing image scene classification has attracted widespread attention as a basic earth observation task. Remote sensing scene classification aims to assign specific semantic labels to remote sensing scene images to serve specified applications. Convolutional neural networks are widely used for remote sensing image classification due to their powerful feature extraction capabilities. However, the existing methods have not overcome the difficulties of large-scene remote sensing images of large intraclass diversity and high interclass similarity, resulting in low performance. Therefore, we propose a new remote sensing scene classification method that combines lightweight channel attention and multiscale feature fusion discrimination, called LmNet. First, ResNeXt is used as the backbone; second, a new lightweight channel attention mechanism is constructed to quickly and adaptively learn the salient features of important channels. Furthermore, we designed a multiscale feature fusion discrimination framework, which fully integrates shallow edge feature information and deep semantic information to enhance feature representation capabilities and uses multiscale features for joint discrimination. Finally, a cross-entropy loss function based on label smoothing is built to reduce the influence of interclass similarity on feature representation. In particular, our lightweight channel attention and multiscale feature fusion mechanism can be flexibly embedded in any advanced backbone as a functional module. The experimental results on three large-scale remote sensing scene classification datasets show that compared with the existing advanced methods, our proposed high-efficiency end-to-end scene classification method has reached state-of-the-art. Moreover, our method has a weaker dependence on labeled data and provided better generalization performance.

Highlights

  • With the rapid improvement of remote sensing and intelligent information processing technology, a large number of remote sensing images have been accumulated

  • We propose a remote sensing scene classification model that combines lightweight channel attention and multiscale feature fusion discrimination to improve remote sensing scene classification performance

  • 3) Cross-entropy loss function based on label smoothing: To solve the problem of high similarity between classes in remote sensing scene image classification tasks, we introduce the label smoothing cross-entropy loss function to reduce the influence of the similarity between remote sensing images on the feature representation and to guide the network to learn significant features with class differences

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Summary

Introduction

With the rapid improvement of remote sensing and intelligent information processing technology, a large number of remote sensing images have been accumulated. Remote sensing scene classification is an very important research direction for the intelligent interpretation of remote sensing images [15], [18]. Remote sensing scene classification extract semantic information by model and classify it into a set of meaningful specific labels. In the past few decades, the practical application of remote sensing scene classification has been extensively studied, such as urban planning[21], [24], natural disaster detection[25], [26], [28], environmental monitoring[29], [30], and vegetation mapping[31], [32]. Many methods have been proposed for remote sensing scene classification. These methods for remote sensing scene classification have made

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