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TSR-TVD: Temporal Super-Resolution for Time-Varying Data Analysis and Visualization

机译:TSR-TVD:时变数据分析和可视化的时间超分辨率

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We present TSR-TVD, a novel deep learning framework that generates temporal super-resolution (TSR) of time-varying data (TVD) using adversarial learning. TSR-TVD is the first work that applies the recurrent generative network (RGN), a combination of the recurrent neural network (RNN) and generative adversarial network (GAN), to generate temporal high-resolution volume sequences from low-resolution ones. The design of TSR-TVD includes a generator and a discriminator. The generator takes a pair of volumes as input and outputs the synthesized intermediate volume sequence through forward and backward predictions. The discriminator takes the synthesized intermediate volumes as input and produces a score indicating the realness of the volumes. Our method handles multivariate data as well where the trained network from one variable is applied to generate TSR for another variable. To demonstrate the effectiveness of TSR-TVD, we show quantitative and qualitative results with several time-varying multivariate data sets and compare our method against standard linear interpolation and solutions solely based on RNN or CNN.
机译:我们介绍了TSR-TVD,这是一种新颖的深度学习框架,可使用对抗性学习来生成时变数据(TVD)的时间超分辨率(TSR)。 TSR-TVD是应用递归生成网络(RGN)(递归神经网络(RNN)和生成对抗网络(GAN)的组合)从低分辨率序列生成时间高分辨率体积序列的第一项工作。 TSR-TVD的设计包括一个发生器和一个鉴别器。生成器将一对体积作为输入,并通过前向和后向预测输出合成的中间体积序列。鉴别器将合成的中间体积作为输入,并产生指示体积真实性的分数。我们的方法还可以处理多变量数据,其中将来自一个变量的经过训练的网络应用于为另一个变量生成TSR。为了证明TSR-TVD的有效性,我们使用多个时变多元数据集显示了定量和定性的结果,并将我们的方法与标准线性插值和仅基于RNN或CNN的解决方案进行了比较。

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