Situation-Aware Adaptive Transmit Beamforming for Automotive Radars
E. Focante (TU Delft - Team Nitin Myers)
Nitin Myers (TU Delft - Team Nitin Myers)
Geethu Joseph (TU Delft - Signal Processing Systems)
Ashish Pandharipande (NXP Semiconductors)
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Abstract
Millimeter-wave radar is a common sensor modality used in automotive driving for target detection and perception. These radars can benefit from side information on the environment being sensed, such as lane topologies or data from other sensors. Existing radars do not leverage this information to adapt waveforms or perform prior-aware inference. In this paper, we model the side information as an occupancy map and design transmit beamformers that are customized to the map. Our method maximizes the probability of detection in regions with a higher uncertainty on the presence of a target. Simulation results on the nuScenes dataset show that the designed beamformer achieves substantially higher detection rates than a conventional omnidirectional beamformer for the same transmitted power.