论文标题
在延时序列中解散随机和循环效应
Disentangling Random and Cyclic Effects in Time-Lapse Sequences
论文作者
论文摘要
延时图像序列提供了对动态过程的视觉吸引人的见解,这些过程太慢而无法实时观察。但是,作为视频的长时间播放序列通常会导致由于天气等随机效应以及循环效应(例如昼夜周期)而分散注意力的闪烁。我们以一种允许单独控制整体趋势,环状效应和图像中随机效应的方式介绍了解散延时序列的问题,并根据数据驱动的生成模型来描述一种实现此目标的技术。这使我们能够以仅输入图像不可能的方式“重新渲染”序列。例如,在可选的,一致的天气下,我们可以稳定长序列,以重点关注植物生长。 我们的方法基于生成对抗网络(GAN),该网络以延时序列的时间坐标为条件。我们设计了我们的架构和培训程序,以便网络学会为随机变化(例如天气,使用GAN的潜在空间)建模,并通过使用具有特定频率的傅立叶特征将调理时间标签馈送到模型中,从而消除整体趋势和周期性变化。 我们表明,我们的模型对于训练数据中的缺陷是可靠的,使我们能够修改捕获长时间序列的一些实际困难,例如临时遮挡,不均匀的框架间距和缺失的框架。
Time-lapse image sequences offer visually compelling insights into dynamic processes that are too slow to observe in real time. However, playing a long time-lapse sequence back as a video often results in distracting flicker due to random effects, such as weather, as well as cyclic effects, such as the day-night cycle. We introduce the problem of disentangling time-lapse sequences in a way that allows separate, after-the-fact control of overall trends, cyclic effects, and random effects in the images, and describe a technique based on data-driven generative models that achieves this goal. This enables us to "re-render" the sequences in ways that would not be possible with the input images alone. For example, we can stabilize a long sequence to focus on plant growth over many months, under selectable, consistent weather. Our approach is based on Generative Adversarial Networks (GAN) that are conditioned with the time coordinate of the time-lapse sequence. Our architecture and training procedure are designed so that the networks learn to model random variations, such as weather, using the GAN's latent space, and to disentangle overall trends and cyclic variations by feeding the conditioning time label to the model using Fourier features with specific frequencies. We show that our models are robust to defects in the training data, enabling us to amend some of the practical difficulties in capturing long time-lapse sequences, such as temporary occlusions, uneven frame spacing, and missing frames.