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Papers/V2VNet: Vehicle-to-Vehicle Communication for Joint Percept...

V2VNet: Vehicle-to-Vehicle Communication for Joint Perception and Prediction

Tsun-Hsuan Wang, Sivabalan Manivasagam, Ming Liang, Bin Yang, Wenyuan Zeng, James Tu, Raquel Urtasun

2020-08-17ECCV 2020 8Motion Forecasting3D Object Detection
PaperPDFCodeCodeCode

Abstract

In this paper, we explore the use of vehicle-to-vehicle (V2V) communication to improve the perception and motion forecasting performance of self-driving vehicles. By intelligently aggregating the information received from multiple nearby vehicles, we can observe the same scene from different viewpoints. This allows us to see through occlusions and detect actors at long range, where the observations are very sparse or non-existent. We also show that our approach of sending compressed deep feature map activations achieves high accuracy while satisfying communication bandwidth requirements.

Results

TaskDatasetMetricValueModel
Object DetectionOPV2VAP@0.7@CulverCity0.734V2VNet (PointPillar backbone)
Object DetectionOPV2VAP@0.7@Default0.822V2VNet (PointPillar backbone)
Object DetectionV2XSetAP0.5 (Noisy)0.791V2VNet
Object DetectionV2XSetAP0.5 (Perfect)0.845V2VNet
Object DetectionV2XSetAP0.7 (Noisy)0.493V2VNet
Object DetectionV2XSetAP0.7 (Perfect)0.677V2VNet
Object DetectionV2X-SIMmAOE0.349V2VNet
Object DetectionV2X-SIMmAP21.4V2VNet
Object DetectionV2X-SIMmASE0.255V2VNet
Object DetectionV2X-SIMmATE0.768V2VNet
3DOPV2VAP@0.7@CulverCity0.734V2VNet (PointPillar backbone)
3DOPV2VAP@0.7@Default0.822V2VNet (PointPillar backbone)
3DV2XSetAP0.5 (Noisy)0.791V2VNet
3DV2XSetAP0.5 (Perfect)0.845V2VNet
3DV2XSetAP0.7 (Noisy)0.493V2VNet
3DV2XSetAP0.7 (Perfect)0.677V2VNet
3DV2X-SIMmAOE0.349V2VNet
3DV2X-SIMmAP21.4V2VNet
3DV2X-SIMmASE0.255V2VNet
3DV2X-SIMmATE0.768V2VNet
3D Object DetectionOPV2VAP@0.7@CulverCity0.734V2VNet (PointPillar backbone)
3D Object DetectionOPV2VAP@0.7@Default0.822V2VNet (PointPillar backbone)
3D Object DetectionV2XSetAP0.5 (Noisy)0.791V2VNet
3D Object DetectionV2XSetAP0.5 (Perfect)0.845V2VNet
3D Object DetectionV2XSetAP0.7 (Noisy)0.493V2VNet
3D Object DetectionV2XSetAP0.7 (Perfect)0.677V2VNet
3D Object DetectionV2X-SIMmAOE0.349V2VNet
3D Object DetectionV2X-SIMmAP21.4V2VNet
3D Object DetectionV2X-SIMmASE0.255V2VNet
3D Object DetectionV2X-SIMmATE0.768V2VNet
2D ClassificationOPV2VAP@0.7@CulverCity0.734V2VNet (PointPillar backbone)
2D ClassificationOPV2VAP@0.7@Default0.822V2VNet (PointPillar backbone)
2D ClassificationV2XSetAP0.5 (Noisy)0.791V2VNet
2D ClassificationV2XSetAP0.5 (Perfect)0.845V2VNet
2D ClassificationV2XSetAP0.7 (Noisy)0.493V2VNet
2D ClassificationV2XSetAP0.7 (Perfect)0.677V2VNet
2D ClassificationV2X-SIMmAOE0.349V2VNet
2D ClassificationV2X-SIMmAP21.4V2VNet
2D ClassificationV2X-SIMmASE0.255V2VNet
2D ClassificationV2X-SIMmATE0.768V2VNet
2D Object DetectionOPV2VAP@0.7@CulverCity0.734V2VNet (PointPillar backbone)
2D Object DetectionOPV2VAP@0.7@Default0.822V2VNet (PointPillar backbone)
2D Object DetectionV2XSetAP0.5 (Noisy)0.791V2VNet
2D Object DetectionV2XSetAP0.5 (Perfect)0.845V2VNet
2D Object DetectionV2XSetAP0.7 (Noisy)0.493V2VNet
2D Object DetectionV2XSetAP0.7 (Perfect)0.677V2VNet
2D Object DetectionV2X-SIMmAOE0.349V2VNet
2D Object DetectionV2X-SIMmAP21.4V2VNet
2D Object DetectionV2X-SIMmASE0.255V2VNet
2D Object DetectionV2X-SIMmATE0.768V2VNet
16kOPV2VAP@0.7@CulverCity0.734V2VNet (PointPillar backbone)
16kOPV2VAP@0.7@Default0.822V2VNet (PointPillar backbone)
16kV2XSetAP0.5 (Noisy)0.791V2VNet
16kV2XSetAP0.5 (Perfect)0.845V2VNet
16kV2XSetAP0.7 (Noisy)0.493V2VNet
16kV2XSetAP0.7 (Perfect)0.677V2VNet
16kV2X-SIMmAOE0.349V2VNet
16kV2X-SIMmAP21.4V2VNet
16kV2X-SIMmASE0.255V2VNet
16kV2X-SIMmATE0.768V2VNet

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