Deep learning approaches for vehicle type classification with 3-D magnetic sensor
Abstract
In the Intelligent Transportation Systems, it is crucial to determine the type of vehicles to improve traffic
management, increase human comfort, and enable future development of transport infrastructures. This paper
presents a deep learning-based vehicle type classification approach for intermediate road traffic. Specifically,
a low-cost, easy-to-install, battery-operated 3-D traffic sensor is designed and developed. In addition, a total of
376 vehicle samples are collected, and the vehicles are identified into three different classes according to their
structures: light, medium, and heavy. Firstly, an oversampling method is applied to increase the number of
samples in the training set. Then, the signals are converted into time series for LSTM and GRU and 2-D images
for transfer learning models. Finally, soft voting is proposed using the LSTM, GRU, and VGG16, which is the
best transfer learning method for vehicle type classification. The developed system is portable, power-limited,
battery-operated, and reliable. Comparative performance results show that the soft voting ensemble method
using a deep learning classifier improves the accuracy and f-measure performances by 92.92% and 93.42%,
respectively. Additionally, the battery lifetime of the developed magnetic sensor node can work for up to 2
years.