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Pattern-Aware Data Augmentation for LiDAR 3D Object Detection

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arxiv 2112.00050 v1 pith:P7CS3MQX submitted 2021-11-30 cs.CV

Pattern-Aware Data Augmentation for LiDAR 3D Object Detection

classification cs.CV
keywords dataobjectsaugmentationdistancesfartherobjectperformancepoint
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Autonomous driving datasets are often skewed and in particular, lack training data for objects at farther distances from the ego vehicle. The imbalance of data causes a performance degradation as the distance of the detected objects increases. In this paper, we propose pattern-aware ground truth sampling, a data augmentation technique that downsamples an object's point cloud based on the LiDAR's characteristics. Specifically, we mimic the natural diverging point pattern variation that occurs for objects at depth to simulate samples at farther distances. Thus, the network has more diverse training examples and can generalize to detecting farther objects more effectively. We evaluate against existing data augmentation techniques that use point removal or perturbation methods and find that our method outperforms all of them. Additionally, we propose using equal element AP bins to evaluate the performance of 3D object detectors across distance. We improve the performance of PV-RCNN on the car class by more than 0.7 percent on the KITTI validation split at distances greater than 25 m.

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