GRCVMar 19, 2025

ClimateGS: Real-Time Climate Simulation with 3D Gaussian Style Transfer

arXiv:2503.14845v1h-index: 3
AI Analysis

This work addresses the need for efficient real-time climate simulation for autonomous systems testing, representing an incremental improvement over existing NeRF-based methods.

The paper tackled the problem of slow rendering speeds in climate simulation for autonomous systems by developing ClimateGS, a framework that integrates 3D Gaussian representations with physical simulation, achieving real-time rendering with comparable or superior visual quality to state-of-the-art methods.

Adverse climate conditions pose significant challenges for autonomous systems, demanding reliable perception and decision-making across diverse environments. To better simulate these conditions, physically-based NeRF rendering methods have been explored for their ability to generate realistic scene representations. However, these methods suffer from slow rendering speeds and long preprocessing times, making them impractical for real-time testing and user interaction. This paper presents ClimateGS, a novel framework integrating 3D Gaussian representations with physical simulation to enable real-time climate effects rendering. The novelty of this work is threefold: 1) developing a linear transformation for 3D Gaussian photorealistic style transfer, enabling direct modification of spherical harmonics across bands for efficient and consistent style adaptation; 2) developing a joint training strategy for 3D style transfer, combining supervised and self-supervised learning to accelerate convergence while preserving original scene details; 3) developing a real-time rendering method for climate simulation, integrating physics-based effects with 3D Gaussian to achieve efficient and realistic rendering. We evaluate ClimateGS on MipNeRF360 and Tanks and Temples, demonstrating real-time rendering with comparable or superior visual quality to SOTA 2D/3D methods, making it suitable for interactive applications.

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