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이미지기반 도로 노면 평탄성 예측을 위한 머신러닝 모델 개발A Computer-vision-based classification of road surface roughness grade using Machine Learning Techniques

Other Titles
A Computer-vision-based classification of road surface roughness grade using Machine Learning Techniques
Authors
이영재전성일김은주
Issue Date
Aug-2021
Publisher
한국도로학회
Keywords
IRI; machine learning; MNIST model; road surface roughness; SVM; vision-based road assessment
Citation
한국도로학회논문집, v.23, no.4, pp.75 - 81
Indexed
KCI
Journal Title
한국도로학회논문집
Volume
23
Number
4
Start Page
75
End Page
81
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/141403
DOI
10.7855/IJHE.2021.23.4.075
ISSN
1738-7159
Abstract
PURPOSES : This study aims to develop and evaluate computer vision-based algorithms that classify the road roughness index (IRI) of road specimens with known IRIs. The presented study develops and compares classifier-based and deep learning-based models that can effectively determine pavement roughness grades. METHODS : A set road specimen was developed for various IRIs by generating road profiles with matching standard deviations. In addition, five distinct features from road images, including mean, peak-to-peak, standard variation, and mean absolute deviation, were extracted to develop a classifier-based model. From parametric studies, a support vector machine (SVM) was selected. To further demonstrate that the model is more applicable to real-world problems, with a non-integer road grade, a deep-learning model was developed. The algorithm was proposed by modifying the MNIST database, and the model input parameters were determined to achieve higher precision. RESULTS : The results of the proposed algorithms indicated the potential of using computer vision-based models for classifying road surface roughness. When SVM was adopted, near 100% precision was achieved for the training data, and 98% for the test data. Although the model indicated accurate results, the model was classified based on integer IRIs, which is less practical. Alternatively, a deep-learning model, which can be applied to a non-integer road grade, indicated an accuracy of over 85%. CONCLUSIONS : In this study, both the classifier-based, and deep-learning-based models indicated high precision for estimating road surface roughness grades. However, because the proposed algorithm has only been verified against the road model with fixed integers, optimization and verification of the proposed algorithm need to be performed for a real road condition.
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