基于生成网络的流体模拟频率感知重构

Simon Biland, V. C. Azevedo, Byungsoo Kim, B. Solenthaler
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引用次数: 16

摘要

卷积神经网络最近被用于从一组简化参数中完全重建流体模拟数据。然而,由于传统上用监督l1损失函数训练的(反)卷积不能区分数据中的低频和高频,因此对于更高的频带,误差不能有效地最小化。这与感知结果的质量直接相关,因为缺少高频细节很容易引起注意。在本文中,我们分析了生成网络的重建质量,并提出了一个频率感知损失函数,该函数能够在训练期间专注于数据集的特定波段。我们表明,我们的方法提高了中频波段流体模拟数据的重建质量,在需要相当训练时间的情况下,产生了更好的感知结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequency-Aware Reconstruction of Fluid Simulations with Generative Networks
Convolutional neural networks were recently employed to fully reconstruct fluid simulation data from a set of reduced parameters. However, since (de-)convolutions traditionally trained with supervised L1-loss functions do not discriminate between low and high frequencies in the data, the error is not minimized efficiently for higher bands. This directly correlates with the quality of the perceived results, since missing high frequency details are easily noticeable. In this paper, we analyze the reconstruction quality of generative networks and present a frequency-aware loss function that is able to focus on specific bands of the dataset during training time. We show that our approach improves reconstruction quality of fluid simulation data in mid-frequency bands, yielding perceptually better results while requiring comparable training time.
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