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Crash course learning: an automated approach to simulation-driven LiDAR-based training of neural networks for obstacle avoidance in mobile robotics (CROSBI ID 273661)

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Kružić, Stanko ; Musić, Josip ; Bonković, Mirjana ; Duchoň, František Crash course learning: an automated approach to simulation-driven LiDAR-based training of neural networks for obstacle avoidance in mobile robotics // Turkish Journal of Electrical Engineering and Computer Sciences, 28 (2020), 2; 1107-1120. doi: 10.3906/elk-1907-112

Podaci o odgovornosti

Kružić, Stanko ; Musić, Josip ; Bonković, Mirjana ; Duchoň, František

engleski

Crash course learning: an automated approach to simulation-driven LiDAR-based training of neural networks for obstacle avoidance in mobile robotics

The paper proposes and implements a self- supervised simulation-driven approach to data collection used for training of perception- based shallow neural networks for mobile robot obstacle avoidance. In the approach, a 2D LiDAR sensor was used as an information source for training neural networks. The paper analyses neural network performance in terms of numbers of layers and neurons, as well as the amount of data needed for reliable robot operation. Once the best architecture is identified, it is trained using only data obtained in simulation, and implemented and tested on a real robot (Turtlebot 2) in several simulation and real- world scenarios. Based on obtained results it is shown that this fast and simple approach is very powerful with good results in a variety of challenging environments, with both static and dynamic obstacles.

autonomous mobile robots, obstacle avoidance, neural networks, simulation-based learning

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Podaci o izdanju

28 (2)

2020.

1107-1120

objavljeno

1300-0632

1303-6203

10.3906/elk-1907-112

Povezanost rada

Elektrotehnika, Računarstvo

Poveznice
Indeksiranost