Combining Pre- and Post-Demosaicking Noise Removal for RAW Video

M. Sánchez-Beeckman;A. Buades;N. Brandonisio;B. Kanoun
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Abstract

Denoising is one of the fundamental steps of the processing pipeline that converts data captured by a camera sensor into a display-ready image or video. It is generally performed early in the pipeline, usually before demosaicking, although studies swapping their order or even conducting them jointly have been proposed. With the advent of deep learning, the quality of denoising algorithms has steadily increased. Even so, modern neural networks still have a hard time adapting to new noise levels and scenes, which is indispensable for real-world applications. With those in mind, we propose a self-similarity-based denoising scheme that weights both a pre- and a post-demosaicking denoiser for Bayer-patterned CFA video data. We show that a balance between the two leads to better image quality, and we empirically find that higher noise levels benefit from a higher influence pre-demosaicking. We also integrate temporal trajectory prefiltering steps before each denoiser, which further improve texture reconstruction. The proposed method only requires an estimation of the noise model at the sensor, accurately adapts to any noise level, and is competitive with the state of the art, making it suitable for real-world videography.
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结合Pre- and - post - demosaked Noise Removal for RAW视频
去噪是将相机传感器捕获的数据转换为可显示的图像或视频的处理管道的基本步骤之一。它通常在管道的早期进行,通常在去马赛克之前,尽管已经提出了交换它们的顺序甚至联合进行的研究。随着深度学习的出现,去噪算法的质量稳步提高。即便如此,现代神经网络仍然很难适应新的噪音水平和场景,这对于现实世界的应用来说是不可或缺的。考虑到这些,我们提出了一种基于自相似性的去噪方案,该方案对拜耳模式CFA视频数据的去噪前和去噪后进行加权。我们表明,两者之间的平衡导致更好的图像质量,我们经验地发现,更高的噪声水平受益于更高的影响预去马赛克。我们还在每个去噪之前整合了时间轨迹预滤波步骤,进一步改善了纹理重建。所提出的方法只需要对传感器的噪声模型进行估计,准确地适应任何噪声水平,并且与目前的技术水平相竞争,使其适用于现实世界的摄像。
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