An Empirical Assessment of Machine Learning Classifiers for Road Environment Recognition
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Keywords

Classifiers
feature extraction
mobile-based laser scanning
object location estimation.

How to Cite

[1]
R. Naidoo and K. M. Ali, “An Empirical Assessment of Machine Learning Classifiers for Road Environment Recognition”, J. Comput. Eng., vol. 11, no. 3, Mar. 2022, Accessed: Apr. 13, 2026. [Online]. Available: https://journalofcomputerengineering.com/index.php/jce/article/view/1436

Abstract

—The road environment information is needed accurately for applications such as road maintenance and virtual 3D city modeling. Mobile laser scanning (MLS) produces dense point clouds from huge areas efficiently from which the road and its environment can be modeled in detail. Objects such as buildings, cars and trees are an important part of road environments. Different methods have been developed for detection of above such objects, but still there is a lack of accuracy due to the problems of illumination, environmental changes, and multiple objects with same features. In this work the comparison between different classifiers such as Multiclass SVM, kNN and Multiclass LDA for the road environment detection is analyzed. Finally the classification accuracy for kNN with LBP feature improved the classification accuracy as 93.3% than the other classifiers
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Copyright (c) 2022 Rukmini Naidoo, Kaid Mohamed Ali (Author)