Abstract

With the increasing number of vehicles, the usage of technology has also been increased in the transportation system. Although automobile companies are using advanced technologies to develop high performing transports, traffic safety still remains to be a concerning issue. Drivers’ driving behavior is considered as one of the key factors of the traffic safety, which could be monitored from their individual driving maneuvers. In this paper, we present a supervised learning model and a semi-supervised transfer learning model for the classification of driving maneuvers from the sensor fusion time series data. The semi-supervised model consists of an unsupervised long-short term memory (LSTM) autoencoder and a supervised LSTM classifier. The supervised model consists of a supervised LSTM model. Because of using LSTM, both of the models can analyze time-series data. In the semi-supervised model, the LSTM encoder learns from unlabeled data as a compressed low dimensional feature vector, which then transfers the learning to the supervised LSTM classifier to classify the driving maneuvers. With the proposed models, we use domain specific knowledge data of the driving environment, such as data changing rules of various driving maneuvers as well as the temporal features over time. We use class functions for seven driving maneuver types and convert those into binary feature vector to use with the LSTM models. We present a comparative analysis of the per class accuracy of the proposed semi-supervised and supervised models with and without using domain-specific knowledge, where the models with the domain specific knowledge outperform. Our proposed semi-supervised and supervised models are compared with the other existing approaches, where our models trained with the domain specific knowledge provided better performance. We also compared the per class accuracy for both the supervised and semi-supervised models, where all the maneuver class accuracy for supervised model was above 98% and semi-supervised model was above 95%. Although the supervised model outperforms the semi-supervised model, the semi-supervised model would be more beneficial in applications where the labeled driving maneuvers data are hard to capture or insufficient.

Highlights

  • Transportation system has greatly influenced by the industrial revolution

  • To address the research question 1, we develop an long-short term memory (LSTM) Network for classification of driving maneuvers from labeled dataset and compare the performance of the model trained with and without domain-specific knowledge of moving vehicle; To address the research question 2, we develop an LSTM Autoencoder for the latent representation of unlabeled dataset and transfer learning have been used in the proposed supervised model for classification

  • We propose an LSTM autoencoder to learn the compressed representation of the dataset so that latent encoded features learning can be transfer to train the proposed supervised LSTM model

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Summary

Introduction

With the expanding number of vehicles, the concern of traffic safety is growing concurrently. Massive endeavors have been taken over the decades to ensure road safety by adopting new technologies, the traffic safety remains to be a concerning issue [1]–[4]. Drivers’ driving behavior has a great impact on accidents. Recent studies have shown that the knowledge of predictive driving. The two general ways of collecting information regarding moving vehicle are Controller Area Network (CAN) [12] bus and Micro Electromechanical System (MEMS) [13]. Through CAN bus one vehicle can communicate to other vehicles using microcontrollers and other devices without a host computer and bear all the required information to recognize the state of the vehicle. CAN bus information can be access using On-Board Diagnostic (OBD) port. The capability of accessing the vehicle information through

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