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Learning Physical Parameters and Detail Enhancement for Gaseous Scene Design Based on Data Guidance

机译:基于数据指导的气态场景设计学习物理参数和细节增强

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This article articulates a novel learning framework for both parameter estimation and detail enhancement for Eulerian gas based on data guidance. The key motivation of this article is to devise a new hybrid, grid-based simulation that could inherit modeling and simulation advantages from both physically-correct simulation methods and powerful data-driven methods, while combating existing difficulties exhibited in both approaches. We first employ a convolutional neural network (CNN) to estimate the physical parameters of gaseous phenomena in Eulerian settings, then we can use the just-learnt parameters to re-simulate (with or without artists' guidance) for specific scenes with flexible coupling effects. Next, a second CNN is adopted to reconstruct the high-resolution velocity field to guide a fast re-simulation on the finer grid, achieving richer and more realistic details with little extra computational expense. From the perspective of physics-based simulation, our trained networks respect temporal coherence and physical constraints. From the perspective of the data-driven machine-learning approaches, our network design aims at extracting a meaningful parameters and reconstructing visually realistic details. Additionally, our implementation based on parallel acceleration could significantly enhance the computational performance of every involved module. Our comprehensive experiments confirm the controllability, effectiveness, and accuracy of our novel approach when producing various gaseous scenes with rich details for widespread graphics applications.
机译:本文根据数据指导,对欧拉天然气的参数估计和细节增强进行了新的学习框架。本文的关键动机是设计一种新的混合,基于网格的仿真,可以从物理上校正模拟方法和强大的数据驱动方法继承建模和仿真优势,同时打击两种方法中展出的现有困难。我们首先使用卷积神经网络(CNN)来估计欧拉方案中气态现象的物理参数,然后我们可以使用刚知的参数重新模拟(有或没有艺术家的指导),具体耦合效果的特定场景。接下来,采用第二个CNN来重建高分辨率速度场,以指导更精细的网格上的快速重新模拟,以额外的计算费用实现更丰富和更现实的细节。从基于物理的模拟的角度来看,我们训练有素的网络尊重时间一致性和物理限制。从数据驱动的机器学习方法的角度来看,我们的网络设计旨在提取有意义的参数并重建视觉上的现实细节。此外,我们基于并行加速的实现可以显着提高每个涉及模块的计算性能。我们的综合实验证实了我们新颖的方法的可控性,有效性和准确性,当生产具有丰富的图形应用的丰富细节的各种气态场景时。

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