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Map Archive Mining: Visual-Analytical Approaches to Explore Large Historical Map Collections

机译:地图档案馆的挖掘:探索大型历史地图集的视觉分析方法

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摘要

Historical maps are unique sources of retrospective geographical information. Recently, several map archives containing map series covering large spatial and temporal extents have been systematically scanned and made available to the public. The geographical information contained in such data archives makes it possible to extend geospatial analysis retrospectively beyond the era of digital cartography. However, given the large data volumes of such archives (e.g., more than 200,000 map sheets in the United States Geological Survey topographic map archive) and the low graphical quality of older, manually-produced map sheets, the process to extract geographical information from these map archives needs to be automated to the highest degree possible. To understand the potential challenges (e.g., salient map characteristics and data quality variations) in automating large-scale information extraction tasks for map archives, it is useful to efficiently assess spatio-temporal coverage, approximate map content, and spatial accuracy of georeferenced map sheets at different map scales. Such preliminary analytical steps are often neglected or ignored in the map processing literature but represent critical phases that lay the foundation for any subsequent computational processes including recognition. Exemplified for the United States Geological Survey topographic map and the Sanborn fire insurance map archives, we demonstrate how such preliminary analyses can be systematically conducted using traditional analytical and cartographic techniques, as well as visual-analytical data mining tools originating from machine learning and data science.
机译:历史地图是追溯性地理信息的独特来源。近来,已经系统地扫描了包含涵盖大的空间和时间范围的地图系列的几个地图档案,并向公众提供。此类数据档案中包含的地理信息使追溯地理空间分析成为可能,超越了数字制图时代。但是,鉴于此类档案的数据量很大(例如,美国地质调查局地形图档案中的地图册超过200,000张),而较旧的手动生成的地图册的图形质量较低,因此从这些地图中提取地理信息的过程地图档案需要最大程度地自动化。为了了解在自动化地图档案的大规模信息提取任务中的潜在挑战(例如,突出的地图特征和数据质量变化),有效评估时空覆盖范围,近似地图内容以及地理参考地图图纸的空间准确性非常有用在不同的地图比例尺上。这种初步的分析步骤在地图处理文献中经常被忽略或忽略,但它们代表了关键阶段,这些关键阶段为包括识别在内的任何后续计算过程奠定了基础。以美国地质调查局地形图和Sanborn火灾保险地图档案库为例,我们演示了如何使用传统的分析和制图技术以及源自机器学习和数据科学的视觉分析数据挖掘工具来系统地进行此类初步分析。

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