LiSTAR: Ray-Centric World Models for 4D LiDAR Sequences in Autonomous Driving
Pei Liu, Songtao Wang, Lang Zhang, Xingyue Peng, Yuandong Lyu, Jiaxin Deng, Songxin Lu, Weiliang Ma, Xueyang Zhang, Yifei Zhan, XianPeng Lang, Jun Ma

TL;DR
LiSTAR is a novel generative model for high-fidelity, controllable 4D LiDAR data synthesis in autonomous driving, leveraging a sensor-native geometry and advanced attention mechanisms for superior scene reconstruction and prediction.
Contribution
It introduces a hybrid cylindrical-spherical representation and a ray-centric transformer to improve data fidelity and dynamic modeling in 4D LiDAR synthesis.
Findings
76% reduction in generation MMD
32% improvement in reconstruction IoU
50% reduction in prediction L1 Med
Abstract
Synthesizing high-fidelity and controllable 4D LiDAR data is crucial for creating scalable simulation environments for autonomous driving. This task is inherently challenging due to the sensor's unique spherical geometry, the temporal sparsity of point clouds, and the complexity of dynamic scenes. To address these challenges, we present LiSTAR, a novel generative world model that operates directly on the sensor's native geometry. LiSTAR introduces a Hybrid-Cylindrical-Spherical (HCS) representation to preserve data fidelity by mitigating quantization artifacts common in Cartesian grids. To capture complex dynamics from sparse temporal data, it utilizes a Spatio-Temporal Attention with Ray-Centric Transformer (START) that explicitly models feature evolution along individual sensor rays for robust temporal coherence. Furthermore, for controllable synthesis, we propose a novel 4D point…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Robotics and Sensor-Based Localization · 3D Shape Modeling and Analysis
