The detection of critical infrastructures in large territories represented by aerial and satellite images is of high importance in several fields such as in security, anomaly detection, land use planning and land use change detection. However, the detection of such infrastructures is complex as they have highly variable shapes and sizes, i.e., some infrastructures, such as electrical substations, are too small while others, such as airports, are too large. Besides, airports can have a surface area either small or too large with completely different shapes, which makes its correct detection challenging. As far as we know, these limitations have not been tackled yet in previous works. This paper presents (1) a smart Critical Infrastructure dataset, named CI-dataset, organised into two scales, small and large scales critical infrastructures and (2) a two-level resolution-independent critical infrastructure detection (DetDSCI) methodology that first determines the spatial resolution of the input image using a classification model, then analyses the image using the appropriate detector for that spatial resolution. The present study targets two representative classes, airports and electrical substations. Our experiments show that DetDSCI methodology achieves up to 37,53% F1 improvement with respect to Faster R-CNN, one of the most influential detection models.
翻译:在安全、异常探测、土地使用规划和土地使用变化探测等多个领域,探测大领土航空和卫星图像所代表的重要基础设施非常重要,但在安全、异常探测、土地使用规划、土地使用变化探测等多个领域,探测大型领土的关键基础设施非常重要,然而,探测这些基础设施十分复杂,因为这些基础设施的形状和大小差异很大,例如电力分站等一些基础设施太小,而机场等其他基础设施则太大;此外,机场可以有一个面积小或太大、形状完全不同的地面区域,这使其正确探测具有挑战性;据我们所知,这些限制在以前的工程中尚未解决;本文件提供了(1) 智能关键基础设施数据集,称为CI数据集,分为两个尺度,大小关键基础设施,以及(2) 两级分辨率独立的关键基础设施探测(DDDSCI)方法,该方法首先使用分类模型确定输入图像的空间分辨率,然后使用适当的探测器分析图像,该空间分辨率为两个具有代表性的类别,即机场和电子站。