Simulation of Urban Automotive Radar Measurements for Deep Learning Target Detection

2022 IEEE Intelligent Vehicles Symposium (IV)(2022)

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摘要
Frequency modulated continuous wave radars are an important component of modern driver assistance systems and enable safer automated driving. To achieve real time detection and classification of multiple road users in the range-Doppler map, the usage of neural target detection networks is proposed. Since the amount of labelled radar measurements available limits the training process, a new radar simulation framework is presented which generates arbitrary traffic scenarios with reflection models for pedestrians, bicyclists and vehicles. With an adaptive FMCW setup, sequences of dynamic urban multi-target radar measurements are simulated, maintaining minimum computational complexity. Solely trained on simulated measurement data, the neural network achieves an average precision above 87% on bicyclists and vehicles in real measurement data which is comparable to the performance of neural networks trained on real measurement datasets.
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关键词
bicyclists,vehicles,neural network,deep learning target detection,frequency modulated continuous wave radars,driver assistance systems,automated driving,real time detection,road user classification,multiple road users,range-Doppler map,radar simulation,arbitrary traffic scenario,neural target detection networ,urban automotive radar measurement,dynamic urban multitarget radar measurement,adaptive FMCW,pedestrians,reflection model
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