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[해외논문] Convolutional neural network with data augmentation for object classification in automotive ultrasonic sensing

The Journal of the Acoustical Society of America, v.153 no.4, 2023년, pp.2447 -   

Eisele, Jona (Corporate Research (CR), Robert Bosch GmbH 1 , Robert-Bosch-Campus 1, Renningen 71272, Germany) ,  Gerlach, André (Corporate Research (CR), Robert Bosch GmbH 1 , Robert-Bosch-Campus 1, Renningen 71272, Germany) ,  Maeder, Marcus (Chair of Vibroacoustics of Vehicles and Machines, Technical University of Munich 2 , Boltzmannstrasse 15, Garching near Munich 85748, Germany) ,  Marburg, Steffen (Chair of Vibroacoustics of Vehicles and Machines, Technical University of Munich 2 , Boltzmannstrasse 15, Garching near Munich 85748, Germany)

Abstract AI-Helper 아이콘AI-Helper

Today's low-cost automotive ultrasonic sensors perform distance measurements of obstacles within the close range of vehicles. For future parking assist systems and autonomous driving applications, the performance of the sensors should be further increased. This paper examines the processing of senso...

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