Using Deep Learning Approach for Land-Use and Land-Cover Classification based on Satellite images

Rashi Agarwal, Silky Goel, Rahul Nijhawan
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Abstract

The land cover is the apparent (bio)physical cover, and land use alludes to how the actual land type is being utilized. This research is fundamental to survey the degree to which social, monetary, and natural factors influence urbanization. This will likewise assist with urban planning. As laborious process of handcrafted feature extraction has not helped obtain high accuracies, this paper proposes use of Deep Learning approach that explores different Image Recognition Models using various ML classifiers on remote sensing images classifying the images from large Landsat satellite dataset into 9 different classes. It was observed that the highest accuracy of 97.4% was achieved by the Logistic Regression algorithm coupled with Inceptionv3 model. The proposed model shows the capability of increasing the accuracy of existing state-of-art-algorithms low resolution land classification maps. Thus, the improved results will contribute to better land maps helping with the growing demand of LULC information concerning climate change and sustainable development.
基于卫星图像的土地利用和土地覆盖分类的深度学习方法
土地覆盖是表观(生物)物理覆盖,土地利用指的是如何利用实际的土地类型。这项研究是调查社会、货币和自然因素对城市化影响程度的基础。这也将有助于城市规划。由于手工特征提取的费力过程无助于获得高精度,本文提出使用深度学习方法,探索不同的图像识别模型,使用各种ML分类器对遥感图像进行分类,将来自大型Landsat卫星数据集的图像分为9个不同的类别。结果表明,Logistic回归算法与Inceptionv3模型相结合,准确率最高,达到97.4%。该模型显示了提高现有低分辨率土地分类地图精度的能力。因此,改进后的结果将有助于制作更好的土地地图,帮助满足对气候变化和可持续发展方面LULC信息日益增长的需求。
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