A machine learning joint lidar and radar classification system in urban automotive scenarios

This work presents an approach to classify road users as pedestrians, cyclists or cars using a lidar sensor and a radar sensor. The lidar is used to detect moving road users in the surroundings of the car. A 2-dimensional range-Doppler window, a so called region of interest, of the radar power spect...

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Veröffentlicht in:Advances in radio science 2019-09, Vol.17, p.129-136
Hauptverfasser: Perez, Rodrigo, Schubert, Falk, Rasshofer, Ralph, Biebl, Erwin
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Sprache:eng
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Zusammenfassung:This work presents an approach to classify road users as pedestrians, cyclists or cars using a lidar sensor and a radar sensor. The lidar is used to detect moving road users in the surroundings of the car. A 2-dimensional range-Doppler window, a so called region of interest, of the radar power spectrum centered at the object's position is cut out and fed into a convolutional neural network to be classified. With this approach it is possible to classify multiple moving objects within a single radar measurement frame. The convolutional neural network is trained using data gathered with a test vehicle in real urban scenarios. An overall classification accuracy as high as 0.91 is achieved with this approach. The accuracy can be improved to 0.94 after applying a discrete Bayes filter on top of the classifier.
ISSN:1684-9973
1684-9965
1684-9973
DOI:10.5194/ars-17-129-2019