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Learning to Detect Mobile Objects from LiDAR Scans Without Labels

About

Current 3D object detectors for autonomous driving are almost entirely trained on human-annotated data. Although of high quality, the generation of such data is laborious and costly, restricting them to a few specific locations and object types. This paper proposes an alternative approach entirely based on unlabeled data, which can be collected cheaply and in abundance almost everywhere on earth. Our approach leverages several simple common sense heuristics to create an initial set of approximate seed labels. For example, relevant traffic participants are generally not persistent across multiple traversals of the same route, do not fly, and are never under ground. We demonstrate that these seed labels are highly effective to bootstrap a surprisingly accurate detector through repeated self-training without a single human annotated label.

Yurong You, Katie Z Luo, Cheng Perng Phoo, Wei-Lun Chao, Wen Sun, Bharath Hariharan, Mark Campbell, Kilian Q. Weinberger• 2022

Related benchmarks

TaskDatasetResultRank
3D Object DetectionnuScenes v1.0 (val)--
190
3D Object DetectionnuScenes v1.0-trainval (val)--
87
3D Object DetectionKITTI (val)--
85
3D DetectionSTCrowd (val)
AP@0.250.01
13
3D Object DetectionLyft
mAP IoU@0.5 (0-30m)56.7
10
Object DetectionLyft (test)
mAP IoU 0.25 (0-30m)73.6
9
3D Object DetectionIthaca365
mAP (0-30m)27.5
9
3D Object DetectionLyft Level 5 mobile objects (test)
AP BEV (0-30m)76.4
7
3D Object DetectionLyft v1.0 (val)
AP BEV (0-30m)61.1
7
3D Object DetectionWOD (val)
3D AP (Vehicle, IoU=0.7)6.13
7
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