CVOct 15, 2024

Simultaneous Diffusion Sampling for Conditional LiDAR Generation

arXiv:2410.11628v1h-index: 8DICTA
Originality Incremental advance
AI Analysis

This work addresses the need for geometrically consistent LiDAR enhancement in autonomous systems, representing an incremental advance in conditional LiDAR generation.

The paper tackles the problem of enhancing sparse, occluded, or limited-range LiDAR scans by generating point clouds conditioned on multi-view scene geometry, achieving significant performance improvements over existing methods across various benchmarks.

By enabling capturing of 3D point clouds that reflect the geometry of the immediate environment, LiDAR has emerged as a primary sensor for autonomous systems. If a LiDAR scan is too sparse, occluded by obstacles, or too small in range, enhancing the point cloud scan by while respecting the geometry of the scene is useful for downstream tasks. Motivated by the explosive growth of interest in generative methods in vision, conditional LiDAR generation is starting to take off. This paper proposes a novel simultaneous diffusion sampling methodology to generate point clouds conditioned on the 3D structure of the scene as seen from multiple views. The key idea is to impose multi-view geometric constraints on the generation process, exploiting mutual information for enhanced results. Our method begins by recasting the input scan to multiple new viewpoints around the scan, thus creating multiple synthetic LiDAR scans. Then, the synthetic and input LiDAR scans simultaneously undergo conditional generation according to our methodology. Results show that our method can produce accurate and geometrically consistent enhancements to point cloud scans, allowing it to outperform existing methods by a large margin in a variety of benchmarks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes