A Leading but Simple Classification Method for Remote Sensing Images

Huaxiang Song
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引用次数: 3

Abstract

Recently, researchers have proposed a lot of deep convolutional neural network (CNN) approaches with obvious flaws to tackle the difficult semantic classification (SC) task of remote sensing images (RSI). In this paper, the author proposes a simple method that aims to provide a leading but efficient solution by using a lightweight EfficientNet-B0. First, this paper concluded the drawbacks with an analysis of mathematical theory and then proposed a qualitative conclusion on the previous methods’ theoretical performance based on theoretical derivation and experiments. Following that, the paper designs a novel method named LS-EfficientNet, consisting only of a single CNN and a concise training algorithm called SC-CNN. Far different from previous complex and hardware-extensive ones, the proposed method mainly focuses on tackling the long-neglected problems, including overfitting, data distribution shift by DA, improper use of training tricks, and other incorrect operations on a pre-trained CNN. Compared to previous studies, the proposed method is easy to reproduce because all the models, training tricks, and hyperparameter settings are open-sourced. Extensive experiments on two benchmark datasets show that the proposed method can easily surpass all the previous state-of-the-art ones, with an outstanding accuracy lead of 0.5% to 1.2% and a remarkable parameter decrease of 78% if compared to the best prior one in 2022. In addition, ablation test results also prove that the proposed effective combination of training tricks, including OLS and CutMix, can clearly boost a CNN's performance for RSI-SC, with an increase in accuracy of 1.0%. All the results reveal that a single lightweight CNN can well tackle the routine task of classifying RSI.
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一种领先但简单的遥感图像分类方法
最近,研究人员提出了许多具有明显缺陷的深度卷积神经网络(CNN)方法来解决遥感图像的语义分类(SC)任务。在本文中,作者提出了一种简单的方法,旨在通过使用轻量级EfficientNet-B0提供领先但高效的解决方案。本文首先对数学理论进行了分析,总结了其不足之处,然后在理论推导和实验的基础上,对以往方法的理论性能提出了定性结论。在此基础上,本文设计了一种新的方法——LS EfficientNet,它只由一个CNN和一个简洁的训练算法SC-CNN组成。与以前的复杂和硬件广泛的方法不同,该方法主要致力于解决长期被忽视的问题,包括过拟合、DA的数据分布偏移、训练技巧的不当使用以及对预先训练的CNN的其他错误操作。与以前的研究相比,所提出的方法很容易重现,因为所有的模型、训练技巧和超参数设置都是开源的。在两个基准数据集上进行的大量实验表明,与2022年的最佳方法相比,所提出的方法可以轻松超越以往所有最先进的方法,准确率领先0.5%至1.2%,参数显著下降78%。此外,消融测试结果还证明,所提出的训练技巧的有效组合,包括OLS和CutMix,可以明显提高CNN对RSI-SC的性能,准确率提高1.0%。所有结果表明,单个轻量级CNN可以很好地完成RSI分类的常规任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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