RAMP-CNN: A Novel Neural Network for Enhanced Automotive Radar Object Recognition
About
Millimeter-wave radars are being increasingly integrated into commercial vehicles to support new advanced driver-assistance systems by enabling robust and high-performance object detection, localization, as well as recognition - a key component of new environmental perception. In this paper, we propose a novel radar multiple-perspectives convolutional neural network (RAMP-CNN) that extracts the location and class of objects based on further processing of the range-velocity-angle (RVA) heatmap sequences. To bypass the complexity of 4D convolutional neural networks (NN), we propose to combine several lower-dimension NN models within our RAMP-CNN model that nonetheless approaches the performance upper-bound with lower complexity. The extensive experiments show that the proposed RAMP-CNN model achieves better average recall and average precision than prior works in all testing scenarios. Besides, the RAMP-CNN model is validated to work robustly under nighttime, which enables low-cost radars as a potential substitute for pure optical sensing under severe conditions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 2D Object Detection | RADDet Range-Azimuth map | AP@0.50.3972 | 7 | |
| 2D Object Detection | RADDet Range-Doppler map | AP@0.533.6 | 7 | |
| 3D Object Detection | RADDet (test) | AP@0.431.63 | 7 | |
| Radar Object Detection | ROD Parking Lot 2021 | mAP57.95 | 3 | |
| Radar Object Detection | ROD 2021 (Campus Road) | mAP35.1 | 3 | |
| Radar Object Detection | ROD City Street 2021 | mAP18.25 | 3 | |
| Radar Object Detection | ROD Highway 2021 | mAP0.309 | 3 | |
| Radar Object Detection | ROD 2021 | mAP0.315 | 3 |