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Multi-modal bike sensing for automatic geo-annotation geo-annotation of road/terrain type by participatory bike-sensing

机译:通过参与式自行车感应对道路/地形类型进行自动地理标注的多模式自行车感应

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This paper presents a novel road/terrain classification system based on the analysis of volunteered geographic information gathered by bikers. By ubiquitous collection of multi-sensor bike data, consisting of visual images, accelerometer information and GPS coordinates of the bikers' smartphone, the proposed system is able to distinguish between 6 different road/terrain types. In order to perform this classification task, the system employs a random decision forest (RDF), fed with a set of discriminative image and accelerometer features. For every instance of road (5 seconds), we extract these features and map the RDF result onto the GPS data of the users' smartphone. Finally, based on all the collected instances, we can annotate geographic maps with the road/terrain types and create a visualization of the route. The accuracy of the novel multi-modal bike sensing system for the 6-class road/terrain classification task is 92%. This result outperforms both the visual and accelerometer only classification, showing that the combination of both sensors is a win-win. For the 2-class on-road/off-road classification an accuracy of 97% is achieved, almost six percent above the state-of-the-art in this domain. Since these are the individual scores (measured on a single user/bike segment), the collaborative accuracy is expected to even further improve these results.
机译:本文基于对骑车人收集的自愿地理信息的分析,提出了一种新颖的道路/地形分类系统。通过无处不在地收集多传感器自行车数据,包括视觉图像,加速度计信息和骑车人智能手机的GPS坐标,所提出的系统能够区分6种不同的道路/地形类型。为了执行此分类任务,系统采用了随机决策森林(RDF),并提供了一组具有区别性的图像和加速度计功能。对于每个道路实例(5秒),我们提取这些功能并将RDF结果映射到用户智能手机的GPS数据上。最后,根据收集到的所有实例,我们可以使用道路/地形类型注释地理地图,并创建路线的可视化图像。用于6级道路/地形分类任务的新型多模式自行车传感系统的准确性为92%。该结果优于仅视觉和加速度计的分类,表明两种传感器的组合是双赢的。对于2级道路/越野分类,可达到97%的准确度,几乎比该领域的最新水平高出6%。由于这些是个人分数(在单个用户/自行车细分上衡量),因此协作准确性有望进一步改善这些结果。

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