TRDizin: Visual object detection for autonomous transport vehicles in smart factories
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Autonomous transport vehicles (ATVs) are one of the most substantial components of smart factories of
Industry 4.0. They are primarily considered to transfer the goods or perform some certain navigation tasks in the
factory with self driving. The recent developments on computer vision studies allow the vehicles to visually perceive the
environment and the objects in the environment. There are numerous applications especially for smart traffic networks
in outdoor environments but there is lack of application and databases for autonomous transport vehicles in indoor
industrial environments. There exist some essential safety and direction signs in smart factories and these signs have an
important place in safety issues. Therefore, the detection of these signs by ATVs is crucial. In this study, a visual dataset
which includes important indoor safety signs to simulate a factory environment is created. The dataset has been used
to train different fast-responding popular deep learning object detection methods: faster R-CNN, YOLOv3, YOLOv4,
SSD, and RetinaNet. These methods can be executed in real time to enhance the visual understanding of the ATV,
which, in turn, helps the agent to navigate in a safe and reliable state in smart factories. The trained network models
were compared in terms of accuracy on our created dataset, and YOLOv4 achieved the best performance among all the
tested methods.
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Yazici, A., Çevi̇kal, H., Eker, O., Yavuz, H., Gengeç, N. (2021). Visual object detection for autonomous transport vehicles in smart factories. Turkish Journal of Electrical Engineering and Computer Sciences, 29(4), 2101-2115
