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Vehicle Detection and Classification using Vibration Sensor and Machine Learning

Road traffic censuses have been carried out manually for many years since measurements by machines were not widely spread due to the difficulty of installation. To solve installation difficulty, the size issues of the necessary equipment, and privacy issues of the existing traffic counter, we are co...

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Main Authors: Okuro, Tomoki, Nakayama, Yumiko, Takeshima, Yoshitada, Kondo, Yusuke, Tachimori, Nobuya, Yoshida, Makoto, Yoshihara, Hiromu, Suwa, Hirohiko, Yasumoto, Keiichi
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creator Okuro, Tomoki
Nakayama, Yumiko
Takeshima, Yoshitada
Kondo, Yusuke
Tachimori, Nobuya
Yoshida, Makoto
Yoshihara, Hiromu
Suwa, Hirohiko
Yasumoto, Keiichi
description Road traffic censuses have been carried out manually for many years since measurements by machines were not widely spread due to the difficulty of installation. To solve installation difficulty, the size issues of the necessary equipment, and privacy issues of the existing traffic counter, we are conducting research and development of portable traffic counters using a vibration sensor and machine learning. However, vehicle type classification was not realized in the previous work, hence it was not possible to survey traffic volume by vehicle types. In addition, to the best of our knowledge, there is no existing study that can detect and classify vehicles based on road vibrations with a single sensor. In this paper, we propose a method of vehicle type classification that is capable of binary classification of small and large vehicles by machine learning combined with Support Vector Machine and Random Forest for vibrations of passing vehicles. We evaluated the proposed method by conducting measurements for up to 12 hours at two actual road locations. We tested over 5 hours of data and confirmed that small vehicles classified with the F-measure of 0.96 and large vehicles with the F-measure of 0.83.
doi_str_mv 10.1109/IE54923.2022.9826783
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ispartof 2022 18th International Conference on Intelligent Environments (IE), 2022, p.1-8
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source IEEE Xplore All Conference Series
subjects machine learning
Privacy
Random forests
Research and development
Roads
Support vector machines
traffic census
Vehicle detection
vehicle type classification
vibration sensors
Vibrations
title Vehicle Detection and Classification using Vibration Sensor and Machine Learning
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