Automated passenger counting (APC) technology is central to many aspects of the public transit experience. APC information informs public transit planners about utilization in a public transit system and operations about dynamic fluctuations in demand. Perhaps most importantly, APC information provides one metric to the rider experience - standing during a long ride because of a crowded vehicle is an unpleasant experience. Several technologies have been successfully used for APC including light beam sensing and video image analysis. However, these technologies are expensive and must be installed in buses. In this paper, we analyze a new source of data using statistical models: rider smartphone accelerometers. Smartphones are ubiquitous in society and accelerometers have been shown to accurately model user states such as walking and sitting. We extend these models to use accelerometers to detect if the rider is standing or sitting on a bus. Standing riders are a signal that the bus is crowded. This paper provides evidence that user smartphones are a valid source of participatory sensing and thus a new source of automated passenger counting data.
翻译:自动乘客计数(APC)技术是公共过境经验许多方面的核心。APC信息使公共过境规划人员了解公共过境系统的利用情况,并了解需求动态波动的情况。也许最重要的是,APC信息为骑车者提供了一种衡量标准----因为车拥挤而长期站立是令人不愉快的经历。一些技术已经成功地用于APC,包括光束扫描和视频图像分析。然而,这些技术费用昂贵,必须安装在公共汽车上。在本文中,我们利用统计模型分析新的数据来源:骑手智能手机加速计。智能手机在社会上非常普遍,而且加速计表已经显示精确的模型用户称行走和坐。我们将这些模型推广到用来检测骑车者是否站立或坐在公共汽车上的加速计数计数计数器。固定驾驶员是公共汽车拥挤的信号。本文提供证据表明,用户智能手机是参与性感测的有效来源,因此是自动计票数据的新来源。