Classifying logistic vehicles in cities using Deep learning

S Benslimane, S Tamayo, A de La Fortelle - arXiv preprint arXiv …, 2019 - arxiv.org
arXiv preprint arXiv:1906.11895, 2019arxiv.org
Rapid growth in delivery and freight transportation is increasing in urban areas; as a result
the use of delivery trucks and light commercial vehicles is evolving. Major cities can use
traffic counting as a tool to monitor the presence of delivery vehicles in order to implement
intelligent city planning measures. Classical methods for counting vehicles use mechanical,
electromagnetic or pneumatic sensors, but these devices are costly, difficult to implement
and only detect the presence of vehicles without giving information about their category …
Rapid growth in delivery and freight transportation is increasing in urban areas; as a result the use of delivery trucks and light commercial vehicles is evolving. Major cities can use traffic counting as a tool to monitor the presence of delivery vehicles in order to implement intelligent city planning measures. Classical methods for counting vehicles use mechanical, electromagnetic or pneumatic sensors, but these devices are costly, difficult to implement and only detect the presence of vehicles without giving information about their category, model or trajectory. This paper proposes a Deep Learning tool for classifying vehicles in a given image while considering different categories of logistic vehicles, namely: light-duty, medium-duty and heavy-duty vehicles. The proposed approach yields two main contributions: first we developed an architecture to create an annotated and balanced database of logistic vehicles, reducing manual annotation efforts. Second, we built a classifier that accurately classifies the logistic vehicles passing through a given road. The results of this work are: first, a database of 72 000 images for 4 vehicles classes; and second two retrained convolutional neural networks (InceptionV3 and MobileNetV2) capable of classifying vehicles with accuracies over 90%.
arxiv.org
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