Ghost-FWL: A Large-Scale Full-Waveform LiDAR Dataset for Ghost Detection and Removal
Kazuma Ikeda ⋅ Ryosei Hara ⋅ Rokuto Nagata ⋅ Ozora Sako ⋅ Zihao Ding ⋅ Takahiro Kado ⋅ Ibuki Fujioka ⋅ Taro Beppu ⋅ Mariko Isogawa ⋅ Kentaro Yoshioka
Abstract
LiDAR has become an essential sensing modality in autonomous driving, robotics, and smart-city applications. However, ghost points (or ghost), which are false reflections caused by multi-path laser returns from glass and reflective surfaces, severely degrade 3D mapping and localization accuracy. Prior ghost removal rely on geometric consistency in dense point clouds, failing on mobile LiDAR's sparse, dynamic data. We address this by exploiting full-waveform LiDAR (FWL), which captures complete temporal intensity profiles rather than just peak distances, providing crucial cues for distinguishing ghosts from genuine reflections in mobile scenarios. As this is a new task, we present Ghost-FWL, the first and largest annotated mobile FWL dataset for ghost detection and removal. Ghost-FWL comprises 24K frames across 10 diverse scenes with 7.5 billion peak-level annotations, which is 100$\times$ larger than existing annotated FWL datasets. Experiments show that our baseline outperforms existing methods in ghost removal accuracy, and our ghost removal further enhance downstream tasks such as LiDAR-based SLAM (66% trajectory error reduction) and 3D object detection (50$\times$ false positive reduction).
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