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MVCTrack: Boosting 3D Point Cloud Tracking via Multimodal-Guided Virtual Cues

3 December 2024
Zhaofeng Hu
Sifan Zhou
Shibo Zhao
Zhihang Yuan
Ci-Jyun Liang
    3DPC
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Abstract

3D single object tracking is essential in autonomous driving and robotics. Existing methods often struggle with sparse and incomplete point cloud scenarios. To address these limitations, we propose a Multimodal-guided Virtual Cues Projection (MVCP) scheme that generates virtual cues to enrich sparse point clouds. Additionally, we introduce an enhanced tracker MVCTrack based on the generated virtual cues. Specifically, the MVCP scheme seamlessly integrates RGB sensors into LiDAR-based systems, leveraging a set of 2D detections to create dense 3D virtual cues that significantly improve the sparsity of point clouds. These virtual cues can naturally integrate with existing LiDAR-based 3D trackers, yielding substantial performance gains. Extensive experiments demonstrate that our method achieves competitive performance on the NuScenes dataset.

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@article{hu2025_2412.02734,
  title={ MVCTrack: Boosting 3D Point Cloud Tracking via Multimodal-Guided Virtual Cues },
  author={ Zhaofeng Hu and Sifan Zhou and Shibo Zhao and Zhihang Yuan and Ci-Jyun Liang },
  journal={arXiv preprint arXiv:2412.02734},
  year={ 2025 }
}
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