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Micro-tasking as a method for human assessment and quality control in a geospatial data import

机译:微任务处理是地理空间数据导入中人类评估和质量控制的一种方法

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摘要

Crowd-sourced geospatial data can often be enriched by importing open governmental datasets as long as they are up-to date and of good quality. Unfortunately, merging datasets is not straight forward. In the context of geospatial data, spatial overlaps pose a particular problem, as existing data may be overwritten when a naive, automated import strategy is employed. For example: OpenStreetMap has imported over 100 open geospatial datasets, but the requirement for human assessment makes this a time-consuming process which requires experienced volunteers or training. In this paper, we propose a hybrid import workflow that combines algorithmic filtering with human assessment using the micro-tasking method. This enables human assessment without the need for complex tools or prior experience. Using an online experiment, we investigated how import speed and accuracy is affected by volunteer experience and partitioning of the micro-task. We conclude that micro-tasking is a viable method for massive quality assessment that does not require volunteers to have prior experience working with geospatial data.
机译:只要导入公开的政府数据集,只要它们是最新的且质量优良,通常可以通过导入公开的地理空间数据来加以充实。不幸的是,合并数据集并非一帆风顺。在地理空间数据的情况下,空间重叠会带来一个特殊的问题,因为当采用幼稚的自动导入策略时,现有数据可能会被覆盖。例如:OpenStreetMap已导入了100多个开放的地理空间数据集,但是由于需要进行人工评估,因此这是一个耗时的过程,需要经验丰富的志愿者或进行培训。在本文中,我们提出了一种混合导入工作流,该工作流使用微任务方法将算法过滤与人工评估相结合。这样就可以进行人工评估,而无需复杂的工具或先前的经验。通过在线实验,我们调查了志愿者的经验和微任务的划分如何影响导入速度和准确性。我们得出的结论是,微任务处理是一种进行大规模质量评估的可行方法,不需要志愿者具有处理地理空间数据的先前经验。

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