Generative Adversarial Networks have recently shown promise for video generation, building off of the success of image generation while also addressing a new challenge: time. Although time was analyzed in some early work, the literature has not adequately grown with temporal modeling developments. We propose studying the effects of Neural Differential Equations to model the temporal dynamics of video generation. The paradigm of Neural Differential Equations presents many theoretical strengths including the first continuous representation of time within video generation. In order to address the effects of Neural Differential Equations, we will investigate how changes in temporal models affect generated video quality.
翻译:创世的Adversarial Networks最近展示了对视频生成的希望,利用图像生成的成功经验,同时应对新的挑战:时间。虽然在一些早期工作中对时间进行了分析,但文献并没有随着时间模型的发展而充分增长。我们提议研究神经差异等量的影响,以模拟视频生成的时间动态。神经差异等量的范式提供了许多理论优势,包括在视频生成过程中首次连续展示时间。为了应对神经差异等量的影响,我们将研究时间模型的变化如何影响生成的视频质量。