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Long-SCOPE: Fully Sparse Long-Range Cooperative 3D Perception

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Cooperative 3D perception via Vehicle-to-Everything communication is a promising paradigm for enhancing autonomous driving, offering extended sensing horizons and occlusion resolution. However, the practical deployment of existing methods is hindered at long distances by two critical bottlenecks: the quadratic computational scaling of dense BEV representations and the fragility of feature association mechanisms under significant observation and alignment errors. To overcome these limitations, we introduce Long-SCOPE, a fully sparse framework designed for robust long-distance cooperative 3D perception. Our method features two novel components: a Geometry-guided Query Generation module to accurately detect small, distant objects, and a learnable Context-Aware Association module that robustly matches cooperative queries despite severe positional noise. Experiments on the V2X-Seq and Griffin datasets validate that Long-SCOPE achieves state-of-the-art performance, particularly in challenging 100-150 m long-range settings, while maintaining highly competitive computation and communication costs.

Jiahao Wang, Zikun Xu, Yuner Zhang, Zhongwei Jiang, Chenyang Lu, Shuocheng Yang, Yuxuan Wang, Jiaru Zhong, Chuang Zhang, Shaobing Xu, Jianqiang Wang• 2026

Related benchmarks

TaskDatasetResultRank
3D Object DetectionV2X-Seq
AP (0-150m)39.9
9
3D Object DetectionGriffin 25m
AP (Overall, 0-100m)35.4
9
3D Object TrackingV2X-Seq
AMOTA (0-150m Overall)44.4
9
Multi-Object TrackingGriffin 25m
AMOTA (0-100 m Overall)32.7
9
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