使用对焦-散焦双摄像头系统的视频解调。

IF 18.6
Xuan Dong, Xiangyuan Sun, Xia Wang, Jian Song, Ya Li, Weixin Li
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引用次数: 0

摘要

云纹图案,图像和视频中不需要的彩色伪影,产生于空间高频场景内容和数码相机的空间离散采样之间的干扰。现有的去除方法主要依赖于单摄像机图像/视频处理,这面临两个关键挑战:1)区分云纹图案与视觉上相似的真实纹理,2)在去除云纹伪影的同时保持色调一致性和时间一致性。为了解决这些问题,我们提出了一个双摄像头框架,可以捕获同一场景的同步视频:一个对焦(保留高质量的纹理,但可能会出现云纹图案),一个散焦(云纹图案明显减少,但纹理模糊)。我们使用散焦视频来帮助区分云纹图案和真实纹理,从而指导散焦视频的去噪。我们提出了一种基于帧的解耦管道,它从基于光流的对齐步骤开始,以解决聚焦和散焦帧之间的位移和遮挡的任何差异。然后,我们利用对齐的散焦帧来指导使用多尺度CNN和多维训练损失的散焦帧的去除。为了保持色调和时间的一致性,我们的最后一步涉及到一个联合双边滤波器,利用CNN的去噪结果作为向导,过滤输入聚焦帧以获得最终输出。实验结果表明,我们提出的框架在很大程度上优于最先进的图像和视频去噪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video Demoireing using Focused-Defocused Dual-Camera System.

Moire patterns, unwanted color artifacts in images and videos, arise from the interference between spatially high-frequency scene contents and the spatial discrete sampling of digital cameras. Existing demoireing methods primarily rely on single-camera image/video processing, which faces two critical challenges: 1) distinguishing moire patterns from visually similar real textures, and 2) preserving tonal consistency and temporal coherence while removing moire artifacts. To address these issues, we propose a dual-camera framework that captures synchronized videos of the same scene: one in focus (retaining high-quality textures but may exhibit moire patterns) and one defocused (with significantly reduced moire patterns but blurred textures). We use the defocused video to help distinguish moire patterns from real texture, so as to guide the demoireing of the focused video. We propose a frame-wise demoireing pipeline, which begins with an optical flow based alignment step to address any discrepancies in displacement and occlusion between the focused and defocused frames. Then, we leverage the aligned defocused frame to guide the demoireing of the focused frame using a multi-scale CNN and a multi-dimensional training loss. To maintain tonal and temporal consistency, our final step involves a joint bilateral filter to leverage the demoireing result from the CNN as the guide to filter the input focused frame to obtain the final output. Experimental results demonstrate that our proposed framework largely outperforms state-of-the-art image and video demoireing methods.

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