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Spectral-Geometric Neural Fields for Pose-Free LiDAR View Synthesis

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Neural Radiance Fields (NeRF) have shown remarkable success in image novel view synthesis (NVS), inspiring extensions to LiDAR NVS. However, most methods heavily rely on accurate camera poses for scene reconstruction. The sparsity and textureless nature of LiDAR data also present distinct challenges, leading to geometric holes and discontinuous surfaces. To address these issues, we propose SG-NLF, a pose-free LiDAR NeRF framework that integrates spectral information with geometric consistency. Specifically, we design a hybrid representation based on spectral priors to reconstruct smooth geometry. For pose optimization, we construct a confidence-aware graph based on feature compatibility to achieve global alignment. In addition, an adversarial learning strategy is introduced to enforce cross-frame consistency, thereby enhancing reconstruction quality. Comprehensive experiments demonstrate the effectiveness of our framework, especially in challenging low-frequency scenarios. Compared to previous state-of-the-art methods, SG-NLF improves reconstruction quality and pose accuracy by over 35.8% and 68.8%. Our work can provide a novel perspective for LiDAR view synthesis.

Yinuo Jiang, Jun Cheng, Yiran Wang, Cheng Cheng• 2026

Related benchmarks

TaskDatasetResultRank
Pose EstimationKITTI-360
RPE Translation (cm)2.003
29
Pose EstimationnuScenes
Translation Error (cm)4.096
17
Novel View SynthesisnuScenes low-frequency setting
RMSE0.0299
16
LiDAR Novel View Synthesis (Depth)KITTI-360 low-frequency setting (test)
RMSE2.9514
8
LiDAR Novel View Synthesis (Intensity)KITTI-360 low-frequency setting (test)
RMSE0.1089
8
Point Cloud ReconstructionnuScenes low-frequency setting
Chamfer Distance (CD)0.1545
8
Point Cloud ReconstructionKITTI-360 low-frequency setting (test)
Chamfer Distance (CD)0.1695
8
LiDAR Depth SynthesisKITTI-360 (standard-frequency setting)
RMSE1.8519
7
LiDAR Intensity SynthesisKITTI-360 (standard-frequency setting)
RMSE0.1054
7
Point Cloud ReconstructionKITTI-360 (standard-frequency setting)
CD0.0867
7
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