OWL: Unsupervised 3D Object Detection by Occupancy Guided Warm-up and Large Model Priors Reasoning

Authors

  • Xusheng Guo Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Wanfa Zhang Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Shijia Zhao Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Qiming Xia Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Xiaolong Xie Tongji University, China
  • Mingming Wang Guangzhou Automobile Group Co. R&D Center, China
  • Hai Wu Pengcheng Laboratory, China
  • Chenglu Wen Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China

DOI:

https://doi.org/10.1609/aaai.v40i6.42445

Abstract

Unsupervised 3D object detection leverages heuristic algorithms to discover potential objects, offering a promising route to reduce annotation costs in autonomous driving. Existing approaches mainly generate pseudo labels and refine them through self-training iterations. However, these pseudo-labels are often incorrect at the beginning of training, resulting in misleading the optimization process. Moreover, effectively filtering and refining them remains a critical challenge. In this paper, we propose $\textbf{OWL}$ for unsupervised 3D object detection by occupancy guided warm-up and large-model priors reasoning. OWL first employs an Occupancy Guided Warm-up (OGW) strategy to initialize the backbone weight with spatial perception capabilities, mitigating the interference of incorrect pseudo-labels on network convergence. Furthermore, OWL introduces an Instance-Cued Reasoning (ICR) module that leverages the prior knowledge of large models to assess pseudo-label quality, enabling precise filtering and refinement. Finally, we design a WAS (Weight-adapted Self-training) strategy to dynamically re-weight pseudo-labels, improving the performance through self-training. Extensive experiments on Waymo Open Dataset (WOD) and KITTI demonstrate that OWL outperforms state-of-the-art unsupervised methods by over 15.0\% mAP, revealing the effectiveness of our method.

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Published

2026-03-14

How to Cite

Guo, X., Zhang, W., Zhao, S., Xia, Q., Xie, X., Wang, M., … Wen, C. (2026). OWL: Unsupervised 3D Object Detection by Occupancy Guided Warm-up and Large Model Priors Reasoning. Proceedings of the AAAI Conference on Artificial Intelligence, 40(6), 4467–4475. https://doi.org/10.1609/aaai.v40i6.42445

Issue

Section

AAAI Technical Track on Computer Vision III