论文标题

W细胞网络:细胞显微镜视频的多帧插值

W-Cell-Net: Multi-frame Interpolation of Cellular Microscopy Videos

论文作者

Saha, Rohit, Teklemariam, Abenezer, Hsu, Ian, Moses, Alan M.

论文摘要

深度神经网络越来越多地用于视频框架插值任务中,例如帧速率变化以及产生假脸部视频。我们的项目旨在应用深度视频插值的最新进展,以增加荧光显微镜延时电影的时间分辨率。据我们所知,没有以前使用卷积神经网络(CNN)在两个连续的显微镜图像之间生成框架的工作。我们提出了一个完全卷积的自动编码器网络,该网络以输入为两个图像,并最多生成七个中间图像。我们的架构有两个编码器,每个编码器都有与单个解码器的跳过连接。我们评估了网络体系结构和损耗函数不同的模型几种变体的性能。我们最好的模型超越艺术视频框架插值算法的状态。我们还与最先进的视频框架插值算法展示了定性和定量比较。我们认为,深视频插值代表了一种改善荧光显微镜时间分辨率的新方法。

Deep Neural Networks are increasingly used in video frame interpolation tasks such as frame rate changes as well as generating fake face videos. Our project aims to apply recent advances in Deep video interpolation to increase the temporal resolution of fluorescent microscopy time-lapse movies. To our knowledge, there is no previous work that uses Convolutional Neural Networks (CNN) to generate frames between two consecutive microscopy images. We propose a fully convolutional autoencoder network that takes as input two images and generates upto seven intermediate images. Our architecture has two encoders each with a skip connection to a single decoder. We evaluate the performance of several variants of our model that differ in network architecture and loss function. Our best model out-performs state of the art video frame interpolation algorithms. We also show qualitative and quantitative comparisons with state-of-the-art video frame interpolation algorithms. We believe deep video interpolation represents a new approach to improve the time-resolution of fluorescent microscopy.

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