Using Time-of-Flight Sensors for People Counting Applications

Michal Stec, Viktor Herrmann, B. Stabernack
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引用次数: 5

Abstract

Precisely detecting and counting people who are using public transportation is one of the key methods for predicting and planning an efficient use of buses, trams and trains. Providing an effective, well-planned public transportation service is not only important for economic reasons. It also helps to tackle a variety of environmental problems and contributes to a reduction of traffic congestion in urban areas. A couple of such systems had been developed in the past. Those were not sufficiently precise, however. In most cases, these systems rely on data processing generated by one particular type of a 2D image sensor. In this paper we present a robust people counting application, which runs on embedded systems with reasonable requirements as far as computational power is concerned and relies on the processing of 3D data generated by a Time-of-Flight (ToF) sensor. Processing of time-of-flight data requires a couple of preprocessing steps, which is crucial for the subsequent people detection, tracking and counting algorithms. The influence of these preprocessing steps and the effect on the developed detection algorithm are presented. Methods of avoiding misinterpretations by the detection algorithms are discussed. A detailed description of the core algorithms which were developed to process 3D data is provided. An overview will be given on how this method could be further enhanced for the purpose of detecting and differentiating vital and non-vital objects.
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使用飞行时间传感器计数应用
准确地检测和统计使用公共交通工具的人数是预测和规划有效使用公共汽车、电车和火车的关键方法之一。提供一个有效的,精心规划的公共交通服务不仅是经济原因的重要。它还有助于解决各种环境问题,并有助于减少城市地区的交通拥堵。过去已经开发了几个这样的系统。然而,这些还不够精确。在大多数情况下,这些系统依赖于由一种特定类型的2D图像传感器生成的数据处理。在本文中,我们提出了一个健壮的人员计数应用程序,该应用程序运行在具有合理计算能力要求的嵌入式系统上,并依赖于由飞行时间(ToF)传感器生成的三维数据的处理。飞行时间数据的处理需要几个预处理步骤,这对后续的人员检测、跟踪和计数算法至关重要。介绍了这些预处理步骤对所开发的检测算法的影响。讨论了利用检测算法避免误读的方法。详细描述了为处理三维数据而开发的核心算法。将概述如何进一步加强这种方法,以便检测和区分生命和非生命物体。
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