论文标题

将滚动快门图像带入双重反转失真

Bringing Rolling Shutter Images Alive with Dual Reversed Distortion

论文作者

Zhong, Zhihang, Cao, Mingdeng, Sun, Xiao, Wu, Zhirong, Zhou, Zhongyi, Zheng, Yinqiang, Lin, Stephen, Sato, Imari

论文摘要

滚动快门(RS)失真可以解释为在RS摄像头曝光期间,随着时间的推移,从瞬时全局快门(GS)框架中挑选一排像素的结果。这意味着每个即时GS帧的信息部分,依次是嵌入到行依赖性失真中。受到这一事实的启发,我们解决了扭转这一过程的挑战性任务,即从患有RS失真的图像中提取未发生的GS框架。但是,由于RS失真与其他因素相结合,例如读数设置以及场景元素与相机的相对速度,因此仅利用临时相邻图像之间的几何相关性在处理数据中具有不同的通用性之间的几何相关性,而与摄像机运动和对象运动和对象运动”的处理数据和动态场景都具有不同的读数设置和动态场景。在本文中,我们建议使用双重RS摄像机捕获的一对图像,而RS方向则是这项极具挑战性的任务。基于双重反向失真的对称和互补性质,我们开发了一种新型的端到端模型,即IFED,通过在RS时间内对速度场的迭代学习来生成双重光流序列。广泛的实验结果表明,IFED优于天真的级联方案,以及利用相邻RS图像的最新技术。最重要的是,尽管它在合成数据集上进行了训练,但事实证明,IFED在从现实世界中的RS扭曲的动态场景图像中检索GS框架序列有效。代码可在https://github.com/zzh-tech/dual-versed-rs上找到。

Rolling shutter (RS) distortion can be interpreted as the result of picking a row of pixels from instant global shutter (GS) frames over time during the exposure of the RS camera. This means that the information of each instant GS frame is partially, yet sequentially, embedded into the row-dependent distortion. Inspired by this fact, we address the challenging task of reversing this process, i.e., extracting undistorted GS frames from images suffering from RS distortion. However, since RS distortion is coupled with other factors such as readout settings and the relative velocity of scene elements to the camera, models that only exploit the geometric correlation between temporally adjacent images suffer from poor generality in processing data with different readout settings and dynamic scenes with both camera motion and object motion. In this paper, instead of two consecutive frames, we propose to exploit a pair of images captured by dual RS cameras with reversed RS directions for this highly challenging task. Grounded on the symmetric and complementary nature of dual reversed distortion, we develop a novel end-to-end model, IFED, to generate dual optical flow sequence through iterative learning of the velocity field during the RS time. Extensive experimental results demonstrate that IFED is superior to naive cascade schemes, as well as the state-of-the-art which utilizes adjacent RS images. Most importantly, although it is trained on a synthetic dataset, IFED is shown to be effective at retrieving GS frame sequences from real-world RS distorted images of dynamic scenes. Code is available at https://github.com/zzh-tech/Dual-Reversed-RS.

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