Open Access
Open access
volume 8 pages e941

How to get best predictions for road monitoring using machine learning techniques

Publication typeJournal Article
Publication date2022-04-12
scimago Q1
wos Q2
SJR0.719
CiteScore7.1
Impact factor2.5
ISSN23765992
PubMed ID:  35494874
General Computer Science
Abstract

Road condition monitoring is essential for improving traffic safety and reducing accidents. Machine learning methods have recently gained prominence in the practically important task of controlling road surface quality. Several systems have been proposed using sensors, especially accelerometers present in smartphones due to their availability and low cost. However, these methods require practitioners to specify an exact set of features from all the sensors to provide more accurate results, including the time, frequency, and wavelet-domain signal features. It is important to know the effect of these features change on machine learning model performance in handling road anomalies classification tasks. Thus, we address such a problem by conducting a sensitivity analysis of three machine learning models which are Support Vector Machine, Decision Tree, and Multi-Layer Perceptron to test the effectiveness of the model by selecting features. We built a feature vector from all three axes of the sensors that boosts classification performance. Our proposed approach achieved an overall accuracy of 94% on four types of road anomalies. To allow an objective analysis of different features, we used available accelerometer datasets. Our objective is to achieve a good classification performance of road anomalies by distinguishing between significant and relatively insignificant features. Our chosen baseline machine learning models are based on their comparative simplicity and powerful empirical performance. The extensive analysis results of our study provide practical advice for practitioners wishing to select features effectively in real-world settings for road anomalies detection.

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GOST Copy
Ferjani I., Ali Alsaif S. How to get best predictions for road monitoring using machine learning techniques // PeerJ Computer Science. 2022. Vol. 8. p. e941.
GOST all authors (up to 50) Copy
Ferjani I., Ali Alsaif S. How to get best predictions for road monitoring using machine learning techniques // PeerJ Computer Science. 2022. Vol. 8. p. e941.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.7717/peerj-cs.941
UR - https://doi.org/10.7717/peerj-cs.941
TI - How to get best predictions for road monitoring using machine learning techniques
T2 - PeerJ Computer Science
AU - Ferjani, Imen
AU - Ali Alsaif, Suleiman
PY - 2022
DA - 2022/04/12
PB - PeerJ
SP - e941
VL - 8
PMID - 35494874
SN - 2376-5992
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2022_Ferjani,
author = {Imen Ferjani and Suleiman Ali Alsaif},
title = {How to get best predictions for road monitoring using machine learning techniques},
journal = {PeerJ Computer Science},
year = {2022},
volume = {8},
publisher = {PeerJ},
month = {apr},
url = {https://doi.org/10.7717/peerj-cs.941},
pages = {e941},
doi = {10.7717/peerj-cs.941}
}