Abstract
Currently, vehicle classification in roadway-based techniques depends mainly on photos/videos collected by an over-roadway camera or on the magnetic characteristics of vehicles. However, camera-based techniques are criticized for potentially violating the privacy of vehicle occupants and exposing their identity, and vehicles can evade detection when they are obscured by larger vehicles. Here, we evaluate methods of identifying and classifying vehicles on the basis of seismic data. Vehicle identification from seismic signals is considered a difficult task because of interference by various noise. By analogy with techniques used in speech recognition, we used different artificial intelligence techniques to extract features of three, different-sized vehicles (buses, cars, motorcycles) and seismic noise. We investigated the application of a deep neural network (DNN), a convolutional neural network (CNN), and a recurrent neural network (RNN) to classify vehicles on the basis of vertical-component seismic data recorded by geophones. The neural networks were trained on 5580 unprocessed seismic records and achieved excellent training accuracy (99%). They were also tested on large datasets representing periods as long as 1 month to check their stability. We found that CNN was the most satisfactory approach, reaching 96% accuracy and detecting multiple vehicle classes at the same time at a low computational cost. Our findings show that seismic methods can be used for traffic monitoring and security purposes without violating the privacy of vehicle occupants, offering greater efficiency and lower costs than current methods. A similar approach may be useful for other types of transportation, such as vessels and airplanes.
Highlights
Many countries invest heavily in traffic monitoring systems [1], which collect and analyze traffic data to derive statistical information, such as the numbers of vehicles on the road and their temporal patterns
Many traffic monitoring systems rely on vision-based vehicle classification techniques, usually based on cameras, that deliver high classification accuracy ranged between 90%~99% [4], covering large areas compared with emerging alternatives
To ensure a fair comparison of the three neural network models we evaluated in this study, we adopted the rectified linear unit (ReLU) [33] as an activation function after all layers
Summary
Many countries invest heavily in traffic monitoring systems [1], which collect and analyze traffic data to derive statistical information, such as the numbers of vehicles on the road and their temporal patterns. Governments use these statistics to forecast transportation needs, improve transportation safety, and schedule pavement maintenance work. The system requires huge investments in infrastructures to perform a complete coverage of the road network Another important problem is the privacy concerns of vehicle occupants, as many people do not feel comfortable being exposed to cameras. The loop detector system is the most widely adopted in-roadway-based vehicle classification technique, it might not be the most suitable system for easy and low-cost implementation, as it requires coil installation under the roadway surface
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