The geodatabase (vectorized data) nowadays becomes a rather standard digital city infrastructure; however, updating geodatabase efficiently and economically remains a fundamental and practical issue in the geospatial industry. The cost of building a geodatabase is extremely high and labor intensive, and very often the maps we use have several months and even years of latency. One solution is to develop more automated methods for (vectorized) geospatial data generation, which has been proven a difficult task in the past decades. An alternative solution is to first detect the differences between the new data and the existing geospatial data, and then only update the area identified as changes. The second approach is becoming more favored due to its high practicality and flexibility. A highly relevant technique is change detection. This article aims to provide an overview the state-of-the-art change detection methods in the field of Remote Sensing and Geomatics to support the task of updating geodatabases. Data used for change detection are highly disparate, we therefore structure our review intuitively based on the dimension of the data, being 1) change detection with 2D data; 2) change detection with 3D data. Conclusions will be drawn based on the reviewed efforts in the field, and we will share our outlooks of the topic of updating geodatabases.
翻译:地理数据库(矢量数据)如今已成为相当标准的数字城市基础设施;然而,高效、经济地更新地理数据库仍然是地理空间工业中一个根本性和实用的问题。建设地理数据库的成本极高,劳动力密集,而且我们使用的地图往往有几个月甚至几年的悬浮期。一个解决办法是开发更自动化的地理空间数据生成方法(摄量化),这在过去几十年中已被证明是一项困难的任务。另一种解决办法是首先发现新数据和现有地理空间数据之间的差异,然后仅更新被确定为变化的区域。第二种办法由于高度实用性和灵活性而变得更为有利。一种高度相关的技术是变化探测。本文章的目的是提供遥感和地理数学领域最新变化探测方法的概览,以支持更新地理数据库的任务。用于变化探测的数据差异很大,因此,我们根据数据层面进行直观的审查,即1)用2D数据进行检测;2)用3D数据进行变化探测,并将根据我们实地工作所做的数据更新,根据3D数据格式进行数据更新。将根据我们数据库的实地工作来审查。