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Riding patterns recognition for Powered two-wheelers users' behaviors analysis

In this paper, we develop a simple and efficient methodology for riding patterns recognition based on a machine learning framework. The riding pattern recognition problem is formulated as a classification problem aiming to identify the class of the riding situation by using data collected from three...

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Bibliographic Details
Main Authors: Attal, Ferhat, Boubezoul, Abderrahmane, Oukhellou, Latifa, Espie, Stephane
Format: Conference Proceeding
Language:English
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Summary:In this paper, we develop a simple and efficient methodology for riding patterns recognition based on a machine learning framework. The riding pattern recognition problem is formulated as a classification problem aiming to identify the class of the riding situation by using data collected from three-accelerometer and three-gyroscope sensors mounted on the motorcycle. These measurements constitute experimental database which is valuable to analyze Powered Two Wheelers (PTW) rider behavior. Five well known machine learning techniques are used: the Gaussian mixture models (GMMs), k-Nearest Neighbors (k-NN), Support Vector Machines (SVMs), Random Forests (RFs) and the Hidden Markov Models (HMMs) in both (discrete and continuous) cases. The HMMs are widely applied for studying time series data which is the case of our problem. The data preprocessing consists of filtering, normalizing and manual labeling in order to create the training and testing sets. The experimental study carried out on a real dataset shows the effectiveness of the proposed methodology and more particularly of the HMM approach to perform such riding pattern recognition. These encouraging results work in favor of developing such methodologies in the naturalistic riding studies (NRS).
ISSN:2153-0009
2153-0017
DOI:10.1109/ITSC.2013.6728528