| Home | KSAE | E-Submission | Sitemap | Contact Us |  
top_img
International Journal of Automotive Technology > Volume 22(1); 2021 > Article
International Journal of Automotive Technology 2021;22(1): 47-54.
doi: https://doi.org/10.1007/s12239-021-0006-6
ROAD TYPE IDENTIFICATION AHEAD OF THE TIRE USING D-CNN AND REFLECTED ULTRASONIC SIGNALS
Min-Hyun Kim1, Jongchan Park2, Seibum Choi1
1KAIST
2Lunit
PDF Links Corresponding Author.  Seibum Choi , Email. sbchoi@kaist.ac.kr
ABSTRACT
Every land moving object accelerates or decelerates based on the frictional coefficient of the road surface. It has been known that this coefficient on the road is determined by the type of road surface. In this work, we propose a simplistic, machine-learning based solution to estimate the road type using the reflected ultrasonic signals paired with ultrasonic transmitter and receiver. Since the reflected signal contains the material information of the surface due to the difference in the surface roughness and acoustic impedance, different characteristics can be observed for each frequency of the reflected signal. To exploit such characteristics, the signals are transformed into the frequency domain using short-time Fourier transform. In addition, a deep convolutional neural network is applied as the road identifier due to its well-known representational power. In order to verify the aforementioned ideas, the ample database consisting of eight types of road surfaces are obtained with the ultrasonic sensors. And then, the database is used to train the model, as well as to evaluate the accuracy of the trained model. It can be seen that the proposed method makes it easier and more accurate to identify the type of road surface than the conventional methods.
Key Words: Ultrasonic sensor; Road type identification; Friction coefficient; Short-time Fourier transform; Machinelearning; Deep convolutional neural network
TOOLS
Preview  Preview
Full text via DOI  Full text via DOI
Download Citation  Download Citation
  Print
Share:      
METRICS
12
Scopus
1,315
View
59
Download
Related article
IDENTIFICATION OF THE REAR DOOR OPENING NOISE IN A PASSENGER CAR  2021 February;22(1)
Editorial Office
21 Teheran-ro 52-gil, Gangnam-gu, Seoul 06212, Korea
TEL: +82-2-564-3971   FAX: +82-2-564-3973   E-mail: manage@ksae.org
About |  Browse Articles |  Current Issue |  For Authors and Reviewers
Copyright © The Korean Society of Automotive Engineers.                 Developed in M2PI
Close layer
prev next