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Confidence Guided Stereo 3D Object Detection with Split Depth Estimation
Li Chengyao ; Ku Jason ; Waslander Steven L.

Abstract
Accurate and reliable 3D object detection is vital to safe autonomousdriving. Despite recent developments, the performance gap between stereo-basedmethods and LiDAR-based methods is still considerable. Accurate depthestimation is crucial to the performance of stereo-based 3D object detectionmethods, particularly for those pixels associated with objects in theforeground. Moreover, stereo-based methods suffer from high variance in thedepth estimation accuracy, which is often not considered in the objectdetection pipeline. To tackle these two issues, we propose CG-Stereo, aconfidence-guided stereo 3D object detection pipeline that uses separatedecoders for foreground and background pixels during depth estimation, andleverages the confidence estimation from the depth estimation network as a softattention mechanism in the 3D object detector. Our approach outperforms allstate-of-the-art stereo-based 3D detectors on the KITTI benchmark.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| 3d-object-detection-from-stereo-images-on-1 | CG-Stereo | AP75: 53.58 |
| 3d-object-detection-from-stereo-images-on-2 | CG-Stereo | AP50: 24.31 |
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