论文标题
监测空间可持续发展:对卫星和空中图像的半自动分析,以进行能源过渡和可持续性指标
Monitoring Spatial Sustainable Development: semi-automated analysis of Satellite and Aerial Images for Energy Transition and Sustainability Indicators
论文作者
论文摘要
本报告介绍了DeepSolaris项目的结果,该项目是在ESS行动“合并成员国的地统计学和地理空间信息”下进行的。在项目中,评估了几种深度学习算法,以检测遥感数据中的太阳能电池板。该项目的目的是评估是否可以开发深度学习模型,这些模型在欧盟的不同成员国之间起作用。考虑了两个遥感数据源:一方面的空中图像,另一方面是卫星图像。评估了深度学习模型的两种口味:分类模型和对象检测模型。为了评估深度学习模型,我们使用了跨站点评估方法:在一个地理区域中训练的深度学习模型,然后在算法以前未见的不同地理区域进行评估。进一步进行了两次跨站点评估:对荷兰训练的深度学习模型对德国进行了评估,反之亦然。尽管深度学习模型能够成功检测太阳能电池板,但错误检测仍然是一个问题。此外,当以跨境方式评估时,模型性能会大大降低。因此,培训欧盟不同国家可靠地表现的模型是一项艰巨的任务。话虽如此,这些模型检测到当前太阳能电池板登记册中不存在的太阳能电池板,因此已经可以用来帮助减少体力劳动来检查这些寄存器。
This report presents the results of the DeepSolaris project that was carried out under the ESS action 'Merging Geostatistics and Geospatial Information in Member States'. During the project several deep learning algorithms were evaluated to detect solar panels in remote sensing data. The aim of the project was to evaluate whether deep learning models could be developed, that worked across different member states in the European Union. Two remote sensing data sources were considered: aerial images on the one hand, and satellite images on the other. Two flavours of deep learning models were evaluated: classification models and object detection models. For the evaluation of the deep learning models we used a cross-site evaluation approach: the deep learning models where trained in one geographical area and then evaluated on a different geographical area, previously unseen by the algorithm. The cross-site evaluation was furthermore carried out twice: deep learning models trained on he Netherlands were evaluated on Germany and vice versa. While the deep learning models were able to detect solar panels successfully, false detection remained a problem. Moreover, model performance decreased dramatically when evaluated in a cross-border fashion. Hence, training a model that performs reliably across different countries in the European Union is a challenging task. That being said, the models detected quite a share of solar panels not present in current solar panel registers and therefore can already be used as-is to help reduced manual labor in checking these registers.