RU-Net:基于遥感图像的太阳能板检测

Linyuan Li, Ethan Lau
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引用次数: 0

摘要

随着全球气候变化的影响越来越大,减少温室气体排放需要做出巨大努力。屋顶太阳能板的安装就是其中一种机制。本文重点研究了屋顶太阳能电池板的分布和部署程度,确定了在特定地理区域内太阳能电池板的位置和总表面积,以应对气候变化。一个关于屋顶太阳能板位置的综合数据库对于帮助分析人员和决策者确定进一步扩大太阳能的战略非常重要。利用航拍图像,采用深度学习方法对太阳能电池板的位置和表面进行检测。针对轻量图像分割和低分辨率图像分割的问题,提出了一种由分类器和分割分支组成的双分支太阳能电池板检测框架,并利用公开的遥感图像数据集进行训练。这项工作提供了一种高效且可扩展的方法来检测太阳能电池板,实现了0.97的曲线下面积(AUC)的分类和0.84的交叉超过联合(IOU)分数的分割性能。
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RU-Net: Solar Panel Detection From Remote Sensing Image
With increasing impact of global climate change, huge efforts are needed to reduce greenhouse gas emissions. The rooftop solar panels installation is one of the mechanism. In this paper, we focus on distribution and deployment degree of rooftop solar panels, and identify locations and total surface area of solar panels within a given geographic area in tackling the climate change. A comprehensive database of the location of solar panels on rooftops is important to assist analysts and policymakers in defining strategies for further expansion of solar energy. The deep learning method was used for the detection of solar panel location and their surface using the aerial imagery. While focusing on light weight image segmentation and low-resolution images, we proposed a two-branch solar panel detection framework consisting of classifier and segmentation branch, which was trained using the public data set of remote sensing images. This work provided an efficient and scalable method to detect solar panels, achieving an area under the curve (AUC) of 0.97 for classification and intersection over union (IOU) score of 0.84 for segmentation performance.
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