Smart-phone based Spatio-temporal Sensing for Annotated Transit Map Generation

Rohit Verma, Surjya Ghosh, Niloy Ganguly, Bivas Mitra, Sandip Chakraborty
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引用次数: 11

Abstract

City transit maps are one of the important resources for public navigation in today's digital world. However, the availability of transit maps for many developing countries is very limited, primarily due to the various socio-economic factors that drive the private operated and partially regulated transport services. Public transports at these cities are marred with many factors such as uncoordinated waiting time at bus stoppages, crowding in the bus, sporadic road conditions etc., which also need to be annotated so that commuters can take informed decision. Interestingly, many of these factors are spatio-temporal in nature. In this paper, we develop CityMap, a system to automatically extract transit routes along with their eccentricities from spatio-temporal crowdsensed data collected via commuters' smart-phones. We apply a learning based methodology coupled with a feature selection mechanism to filter out the necessary information from raw smart-phone sensor data with minimal user engagement and drain of battery power. A thorough evaluation of CityMap, conducted for more than two years over 11 different routes in 3 different cities in India, show that the system effectively annotates bus routes along with other route and road features with more than 90% of accuracy.
基于智能手机的时空感知标注交通地图生成
城市交通地图是当今数字世界中公共导航的重要资源之一。然而,许多发展中国家的过境地图非常有限,主要是由于各种社会经济因素推动了私营和部分管制的运输服务。这些城市的公共交通受到许多因素的影响,比如在公交车站等待时间不协调、公交车拥挤、道路状况不稳定等,这些因素也需要标注,以便通勤者做出明智的决定。有趣的是,这些因素中的许多都是时空性质的。在本文中,我们开发了CityMap系统,该系统可以从通勤者的智能手机收集的时空众感数据中自动提取交通路线及其偏心率。我们将基于学习的方法与特征选择机制相结合,以最小的用户参与度和电池电量消耗从原始智能手机传感器数据中过滤出必要的信息。对CityMap进行了两年多的全面评估,对印度3个不同城市的11条不同路线进行了评估,结果表明,该系统有效地标注了公交路线以及其他路线和道路特征,准确率超过90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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