CVGRApr 14, 2018

Physics-driven Fire Modeling from Multi-view Images

arXiv:1804.05261v11 citations
Originality Highly original
AI Analysis

This addresses the problem for computer graphics applications by enabling realistic fire effects without intensive parameter tuning or physical simplifications.

The paper tackles the challenge of modeling fire shape and appearance from multi-view images by reconstructing physically valid fire models, achieving plausible estimation of physical properties like temperature and density using RGB cameras.

Fire effects are widely used in various computer graphics applications such as visual effects and video games. Modeling the shape and appearance of fire phenomenon is challenging as the underlying effects are driven by complex laws of physics. State-of-the-art fire modeling techniques rely on sophisticated physical simulations which require intensive parameter tuning, or use simplifications which produce physically invalid results. In this paper, we present a novel method of reconstructing physically valid fire models from multi-view stereo images. Our method, for the first time, provides plausible estimation of physical properties (e.g., temperature, density) of a fire volume using RGB cameras. This allows for a number of novel phenomena such as global fire illumination effects. The effectiveness and usefulness of our method are tested by generating fire models from a variety of input data, and applying the reconstructed fire models for realistic illumination of virtual scenes.

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