Range-Edit: Semantic Mask Guided Outdoor LiDAR Scene Editing
Suchetan G. Uppur, Hemant Kumar, Vaibhav Kumar

TL;DR
Range-Edit introduces a novel semantic mask-guided diffusion method for editing real-world LiDAR scans to generate diverse, realistic synthetic point clouds, enhancing data diversity for autonomous driving.
Contribution
It presents a new approach combining semantic masks and diffusion models to edit LiDAR point clouds, capturing complex scenes more efficiently than traditional virtual environment simulation.
Findings
High-quality LiDAR point cloud generation demonstrated on KITTI-360 dataset
Able to produce complex edge cases and dynamic scenes
Offers a scalable, cost-effective data augmentation method
Abstract
Training autonomous driving and navigation systems requires large and diverse point cloud datasets that capture complex edge case scenarios from various dynamic urban settings. Acquiring such diverse scenarios from real-world point cloud data, especially for critical edge cases, is challenging, which restricts system generalization and robustness. Current methods rely on simulating point cloud data within handcrafted 3D virtual environments, which is time-consuming, computationally expensive, and often fails to fully capture the complexity of real-world scenes. To address some of these issues, this research proposes a novel approach that addresses the problem discussed by editing real-world LiDAR scans using semantic mask-based guidance to generate novel synthetic LiDAR point clouds. We incorporate range image projection and semantic mask conditioning to achieve diffusion-based…
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Taxonomy
Topics3D Shape Modeling and Analysis · Robotics and Sensor-Based Localization · Remote Sensing and LiDAR Applications
