Fast LiDAR Data Generation with Rectified Flows
- URL: http://arxiv.org/abs/2412.02241v1
- Date: Tue, 03 Dec 2024 08:10:53 GMT
- Title: Fast LiDAR Data Generation with Rectified Flows
- Authors: Kazuto Nakashima, Xiaowen Liu, Tomoya Miyawaki, Yumi Iwashita, Ryo Kurazume,
- Abstract summary: We present R2Flow, a fast and high-fidelity generative model for LiDAR data.<n>Our method is based on rectified flows that learn straight trajectories.<n>We also propose a efficient Transformer-based model architecture for processing the image representation of LiDAR range and reflectance measurements.
- Score: 3.297182592932918
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Building LiDAR generative models holds promise as powerful data priors for restoration, scene manipulation, and scalable simulation in autonomous mobile robots. In recent years, approaches using diffusion models have emerged, significantly improving training stability and generation quality. Despite the success of diffusion models, generating high-quality samples requires numerous iterations of running neural networks, and the increasing computational cost can pose a barrier to robotics applications. To address this challenge, this paper presents R2Flow, a fast and high-fidelity generative model for LiDAR data. Our method is based on rectified flows that learn straight trajectories, simulating data generation with much fewer sampling steps against diffusion models. We also propose a efficient Transformer-based model architecture for processing the image representation of LiDAR range and reflectance measurements. Our experiments on the unconditional generation of the KITTI-360 dataset demonstrate the effectiveness of our approach in terms of both efficiency and quality.
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