应用于土地覆盖分类问题的高分辨率多光谱数据集上细胞神经网络的性能比较

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-05-25 DOI:10.32620/reks.2023.2.09
Vladyslav Yaloveha, A. Podorozhniak, Heorhii Kuchuk, Nataliia Garashchuk
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引用次数: 1

摘要

卫星获取的多光谱图像已被用于许多领域,如农业、城市变化检测、寻找火灾危险林区和实时地表监测。遥感分析的核心问题是土地利用和土地覆盖分类。土地利用和土地覆盖分类(LULC)是根据遥感数据的光谱特征将其分类为有意义的类别的过程。由于地球表面的复杂性,土地利用和土地覆盖分类是一项具有挑战性的任务。使用深度学习方法解决问题的准确性取决于遥感数据的质量和分类算法的选择。定期获得高分辨率多光谱图像的能力可以极大地改进遥感解决方案。在这项研究中,我们提出了一种解决高分辨率遥感数据的土地覆盖和土地分类问题的方法,通过应用深度学习方法,使用Planet平台在2020-2022年获取的四个波段、每张图像像素分辨率为204x204的EuroPlanet地理参考高质量图像。该数据集由25911张图像组成,空间分辨率高达3.125米/像素,分为10个不同类别。在过去的十年里,人工神经网络在解决复杂的图像分类任务方面表现出了出色的性能。对于数据集评估,我们利用了最先进的预训练卷积神经网络模型ResNet50v2、EfficientNetV2、Xception、VGG-16和DenseNet201进行微调。已经证实,DenseNet201预训练的神经网络优于其他模型。测试数据的准确率为92.01%,F1度量为91.63%。此外,还对数据集进行了波段评估。DenseNet201模型的总体分类准确率为93.83%,F1评分为93.56%。该结果可用于区域验证、实时监测和表面变化检测。如今,由于俄罗斯的入侵和国家未来的复苏,这对乌克兰的领土非常有帮助。
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Performance comparison of CNNs on high-resolution multispectral dataset applied to land cover classification problem
Multispectral images acquired by satellites have been used in many fields such as agriculture, urban change detection, finding fire-hazardous forest areas, and real-time surface monitoring. The central issue in remote sensing analysis is land use and land cover classification. Land use and land cover classification (LULC) is the process of classification into meaningful classes based on the spectral characteristics of remote sensing data. Land use and land cover classification is a challenging task due to the complex nature of the Earth's surface. The accuracy of solving the issue using deep learning approaches depends on the quality of the remote sensing data, the choice of the classification algorithm. The ability to obtain high-resolution multispectral images periodically could dramatically improve remote sensing solutions. In this study, we propose a solution for the land cover and land classification problem of high-resolution remote sensing data by applying deep learning methods using EuroPlanet geo-referenced high-quality images with four bands and pixel resolution of 204x204 per image, and acquired by Planet platform in 2020-2022 years. The dataset consists of 25911 images with spatial resolution up to 3.125 meters per pixel and 10 different classes. In the past decade, artificial neural networks have shown great performance in solving complex image classification tasks. For the dataset evaluation, we have taken advantage of state-of-art pretrained convolutional neural network models ResNet50v2, EfficientNetV2, Xception, VGG-16, and DenseNet201 with fine tuning. It has been established that DenseNet201 pretrained neural network outperformed other models. The accuracy of the test data was 92.01 % and the F1 metric was 91.63 %. In addition, bands evaluation for the dataset was carried out. Overall classification accuracy of 93.83 % and F1 score of 93.56 % were achieved by DenseNet201 model. The results could be used for area verification, real-time monitoring, and surface change detection. Nowadays, this is very helpful for Ukrainian territory because of the Russian invasion and the country's recovery in the future.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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