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Opportunistic Collaborative Planning with Large Vision Model Guided Control and Joint Query-Service Optimization

25 April 2025
Jiayi Chen
Shuai Wang
Guoliang Li
Wei Xu
Guangxu Zhu
Derrick Wing Kwan Ng
Chengzhong Xu
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Abstract

Navigating autonomous vehicles in open scenarios is a challenge due to the difficulties in handling unseen objects. Existing solutions either rely on small models that struggle with generalization or large models that are resource-intensive. While collaboration between the two offers a promising solution, the key challenge is deciding when and how to engage the large model. To address this issue, this paper proposes opportunistic collaborative planning (OCP), which seamlessly integrates efficient local models with powerful cloud models through two key innovations. First, we propose large vision model guided model predictive control (LVM-MPC), which leverages the cloud for LVM perception and decision making. The cloud output serves as a global guidance for a local MPC, thereby forming a closed-loop perception-to-control system. Second, to determine the best timing for large model query and service, we propose collaboration timing optimization (CTO), including object detection confidence thresholding (ODCT) and cloud forward simulation (CFS), to decide when to seek cloud assistance and when to offer cloud service. Extensive experiments show that the proposed OCP outperforms existing methods in terms of both navigation time and success rate.

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@article{chen2025_2504.18057,
  title={ Opportunistic Collaborative Planning with Large Vision Model Guided Control and Joint Query-Service Optimization },
  author={ Jiayi Chen and Shuai Wang and Guoliang Li and Wei Xu and Guangxu Zhu and Derrick Wing Kwan Ng and Chengzhong Xu },
  journal={arXiv preprint arXiv:2504.18057},
  year={ 2025 }
}
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