在非车道道路交通中基于嵌入式CNN的车辆分类和计数

M. Chauhan, Arshdeep Singh, Mansi Khemka, Arneish Prateek, Rijurekha Sen
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引用次数: 42

摘要

道路交通车辆分类与统计在交通运输工程领域有着广泛的应用。然而,发展中地区道路上行驶的车辆种类繁多(两轮车、三轮车、汽车、公共汽车、卡车等),没有任何车道规则,使得车辆分类和计数成为一个很难实现自动化的问题。在本文中,我们使用最先进的基于卷积神经网络(CNN)的目标检测模型,并使用来自德里道路的数据训练它们用于多个车辆类别。我们使用来自四个不同位置的5562个视频帧,在80-20火车测试分割中获得高达75%的MAP。由于在发展中地区,从道路到云服务器的连续视频传输缺乏强大的网络连接,因此我们还评估了基于CNN模型的嵌入式实现的延迟、能源和硬件成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embedded CNN based vehicle classification and counting in non-laned road traffic
Classifying and counting vehicles in road traffic has numerous applications in the transportation engineering domain. However, the wide variety of vehicles (two-wheelers, three-wheelers, cars, buses, trucks etc.) plying on roads of developing regions without any lane discipline, makes vehicle classification and counting a hard problem to automate. In this paper, we use state of the art Convolutional Neural Network (CNN) based object detection models and train them for multiple vehicle classes using data from Delhi roads. We get upto 75% MAP on an 80-20 train-test split using 5562 video frames from four different locations. As robust network connectivity is scarce in developing regions for continuous video transmissions from the road to cloud servers, we also evaluate the latency, energy and hardware cost of embedded implementations of our CNN model based inferences.
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