Intelligent transport systems (ITS) are pivotal in the development of sustainable and green urban living. ITS is data-driven and enabled by the profusion of sensors ranging from pneumatic tubes to smart cameras. This work explores a novel data source based on optical fibre-based distributed acoustic sensors (DAS) for traffic analysis. Detecting the type of vehicle and estimating the occupancy of vehicles are prime concerns in ITS. The first is motivated by the need for tracking, controlling, and forecasting traffic flow. The second targets the regulation of high occupancy vehicle lanes in an attempt to reduce emissions and congestion. These tasks are often conducted by individuals inspecting vehicles or through the use of emerging computer vision technologies. The former is not scale-able nor efficient whereas the latter is intrusive to passengers' privacy. To this end, we propose a deep learning technique to analyse DAS signals to address this challenge through continuous sensing and without exposing personal information. We propose a deep learning method for processing DAS signals and achieve 92% vehicle classification accuracy and 92-97% in occupancy detection based on DAS data collected under controlled conditions.
翻译:智能运输系统(ITS)是发展可持续绿色城市生活的关键。ITS是数据驱动的,由从充气管到智能照相机等传感器的涌现促成。这项工作探索了基于光纤分布式声学传感器的新数据源,用于交通分析。检测车辆类型和估计车辆占用情况是ITS的主要问题。第一个原因是需要跟踪、控制和预测交通流量。第二个目标是对高占用车辆通道进行监管,以减少排放和拥堵。这些任务往往由检查车辆的个人或通过使用新兴计算机视觉技术来完成。前者无法规模化,效率也不高,而后者是侵犯乘客隐私。为此,我们提议采用深层学习技术,分析DAS信号,通过连续的感测和不暴露个人信息来应对这一挑战。我们提出了一种深层学习方法,用于处理DAS信号并实现92%的车辆分类准确度和根据在受控制条件下收集的DAS数据进行占用检测的92-97%。