论文标题
基于超分辨率的蛇模型 - 一种使用空中激光雷达数据和光学图像的大规模建筑提取的无监督方法
Super-Resolution-based Snake Model -- An Unsupervised Method for Large-Scale Building Extraction using Airborne LiDAR Data and Optical Image
论文作者
论文摘要
在城市和住宅场景中自动提取建筑物已成为对摄影测量和遥感领域越来越感兴趣的主题,尤其是自1990年代中期以来。已经研究了活跃的轮廓模型(通俗地称为蛇模型),以从天线和卫星图像中提取建筑物。但是,由于建筑物尺寸,形状及其周围环境的复杂性,此任务仍然非常具有挑战性。这种复杂性导致了进行可靠的大规模建筑提取的主要障碍,因为涉及的先前信息和关于建筑物(例如形状,尺寸和颜色)的假设不能在大面积上推广。本文提出了一个有效的蛇模型来克服这种挑战,称为基于超分辨率的蛇模型(SRSM)。 SRSM在基于高分辨率激光痛的高程图像(称为Z图像)上运行,该图像由应用于LiDAR数据的超分辨率过程生成。所涉及的气球力模型也得到了改善,可以自适应地缩小或充气,而不是连续膨胀蛇。该方法适用于大规模的城市规模,甚至更大,同时具有很高的自动化水平,并且不需要任何先验知识或培训数据(因此无人看管)。在各种数据集上进行测试时,它可以达到高度准确性。例如,拟议的SRSM在ISPRS Vaihingen基准数据集上产生的平均基于面积的质量为86.57%,基于对象的质量为81.60%。与使用此基准数据集的其他方法相比,即使是监督方法,这种准确性也是非常可取的。在整个魁北克市(总面积为656 km2)上执行拟议的SRSM时,也获得了类似的理想结果,产生了62.37%的基于面积的质量,基于对象的质量为63.21%。
Automatic extraction of buildings in urban and residential scenes has become a subject of growing interest in the domain of photogrammetry and remote sensing, particularly since mid-1990s. Active contour model, colloquially known as snake model, has been studied to extract buildings from aerial and satellite imagery. However, this task is still very challenging due to the complexity of building size, shape, and its surrounding environment. This complexity leads to a major obstacle for carrying out a reliable large-scale building extraction, since the involved prior information and assumptions on building such as shape, size, and color cannot be generalized over large areas. This paper presents an efficient snake model to overcome such challenge, called Super-Resolution-based Snake Model (SRSM). The SRSM operates on high-resolution LiDAR-based elevation images -- called z-images -- generated by a super-resolution process applied to LiDAR data. The involved balloon force model is also improved to shrink or inflate adaptively, instead of inflating the snake continuously. This method is applicable for a large scale such as city scale and even larger, while having a high level of automation and not requiring any prior knowledge nor training data from the urban scenes (hence unsupervised). It achieves high overall accuracy when tested on various datasets. For instance, the proposed SRSM yields an average area-based Quality of 86.57% and object-based Quality of 81.60% on the ISPRS Vaihingen benchmark datasets. Compared to other methods using this benchmark dataset, this level of accuracy is highly desirable even for a supervised method. Similarly desirable outcomes are obtained when carrying out the proposed SRSM on the whole City of Quebec (total area of 656 km2), yielding an area-based Quality of 62.37% and an object-based Quality of 63.21%.