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Efficient LiDAR Reflectance Compression via Scanning Serialization

14 May 2025
Jiahao Zhu
Kang-Soo You
Dandan Ding
Zhan Ma
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Abstract

Reflectance attributes in LiDAR point clouds provide essential information for downstream tasks but remain underexplored in neural compression methods. To address this, we introduce SerLiC, a serialization-based neural compression framework to fully exploit the intrinsic characteristics of LiDAR reflectance. SerLiC first transforms 3D LiDAR point clouds into 1D sequences via scan-order serialization, offering a device-centric perspective for reflectance analysis. Each point is then tokenized into a contextual representation comprising its sensor scanning index, radial distance, and prior reflectance, for effective dependencies exploration. For efficient sequential modeling, Mamba is incorporated with a dual parallelization scheme, enabling simultaneous autoregressive dependency capture and fast processing. Extensive experiments demonstrate that SerLiC attains over 2x volume reduction against the original reflectance data, outperforming the state-of-the-art method by up to 22% reduction of compressed bits while using only 2% of its parameters. Moreover, a lightweight version of SerLiC achieves > 10 fps (frames per second) with just 111K parameters, which is attractive for real-world applications.

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@article{zhu2025_2505.09433,
  title={ Efficient LiDAR Reflectance Compression via Scanning Serialization },
  author={ Jiahao Zhu and Kang You and Dandan Ding and Zhan Ma },
  journal={arXiv preprint arXiv:2505.09433},
  year={ 2025 }
}
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