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Towards the Crowdsourcing of Massive Smartphone Assisted-GPS Sensor Ground Observations for the Production of Digital Terrain Models

机译:面向大规模智能手机辅助GPS传感器地面观测的众包以生产数字地形模型

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摘要

Digital Terrain Models (DTMs) used for the representation of the bare earth are produced from elevation data obtained using high-end mapping platforms and technologies. These require the handling of complex post-processing performed by authoritative and commercial mapping agencies. In this research, we aim to exploit user-generated data to produce DTMs by handling massive volumes of position and elevation data collected using ubiquitous smartphone devices equipped with Assisted-GPS sensors. As massive position and elevation data are collected passively and straightforwardly by pedestrians, cyclists, and drivers, it can be transformed into valuable topographic information. Specifically, in dense and concealed built and vegetated areas, where other technologies fail, handheld devices have an advantage. Still, Assisted-GPS measurements are not as accurate as high-end technologies, requiring pre- and post-processing of observations. We propose the development and implementation of a 2D Kalman filter and smoothing on the acquired crowdsourced observations for topographic representation production. When compared to an authoritative DTM, results obtained are very promising in producing good elevation values. Today, open-source mapping infrastructures, such as OpenStreetMap, rely primarily on the global authoritative SRTM (Shuttle Radar Topography Mission), which shows similar accuracy but inferior resolution when compared to the results obtained in this research. Accordingly, our crowdsourced methodology has the capacity for reliable topographic representation production that is based on ubiquitous volunteered user-generated data.
机译:用于表示地球的数字地形模型(DTM)是通过使用高端制图平台和技术获得的高程数据生成的。这些要求处理由权威和商业制图机构执行的复杂后处理。在这项研究中,我们的目标是通过处理使用配备有辅助GPS传感器的无处不在的智能手机设备收集的大量位置和海拔数据,来利用用户生成的数据来生成DTM。由于行人,骑自行车的人和驾驶员被动且直接地收集了大量的位置和高程数据,因此可以将其转换为有价值的地形信息。具体而言,在其他技术无法发挥作用的密集且隐蔽的建筑物和植被中,手持设备具有优势。尽管如此,辅助GPS测量仍不如高端技术准确,因此需要对观测数据进行预处理和后期处理。我们提出了二维卡尔曼滤波器的开发和实现,并针对用于地形表达的采集众包观测值进行了平滑处理。与权威的DTM相比,获得的结果很有希望产生良好的高程值。如今,诸如OpenStreetMap之类的开源地图基础设施主要依赖于全球权威的SRTM(航天飞机雷达地形任务),与本研究获得的结果相比,它具有相似的准确性,但分辨率较差。因此,我们的众包方法论具有基于无所不在的用户自愿生成的数据进行可靠地形表示的能力。

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