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Unsupervised 3D Perception with 2D Vision-Language Distillation for Autonomous Driving

Mahyar Najibi, Jingwei Ji, Yin Zhou, Charles R. Qi, Xinchen Yan, Scott Ettinger, Dragomir Anguelov

202324 citationsDOI

Abstract

Closed-set 3D perception models trained on only a predefined set of object categories can be inadequate for safety critical applications such as autonomous driving where new object types can be encountered after deployment. In this paper, we present a multi-modal auto labeling pipeline capable of generating amodal 3D bounding boxes and tracklets for training models on open-set categories without 3D human labels. Our pipeline exploits motion cues inherent in point cloud sequences in combination with the freely available 2D image-text pairs to identify and track all traffic participants. Compared to the recent studies in this domain, which can only provide class-agnostic auto labels limited to moving objects, our method can handle both static and moving objects in the unsupervised manner and is able to output open-vocabulary semantic labels thanks to the proposed vision-language knowledge distillation. Experiments on the Waymo Open Dataset show that our approach outperforms the prior work by significant margins on various unsupervised 3D perception tasks.

Topics & Concepts

Computer scienceArtificial intelligencePipeline (software)Set (abstract data type)Minimum bounding boxAmodal perceptionComputer visionObject detectionPerceptionDomain (mathematical analysis)Semantics (computer science)VocabularyObject (grammar)Unsupervised learningBounding overwatchMachine learningPattern recognition (psychology)Image (mathematics)Programming languageMathematical analysisNeuroscienceMathematicsPhilosophyLinguisticsBiologyAdvanced Neural Network ApplicationsMultimodal Machine Learning ApplicationsHuman Pose and Action Recognition