通过探索高灵敏度相机噪声增强低光视频

Wei Wang, Xin Chen, Cheng Yang, Xiang Li, Xue-mei Hu, Tao Yue
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引用次数: 39

摘要

弱光视频的增强,包括去噪和亮度调整,是一个有趣但棘手的问题。在弱光条件下,由于高感光度相机的设置,通常可以忽略的噪声变得明显,严重影响了拍摄的视频。为了恢复高质量的视频,人们提出了大量的图像/视频去噪/增强算法,其中大多数算法都遵循一组关于摄像机噪声统计特征的简单假设,例如独立同分布(i.i.d)、白噪声、加性噪声、高斯噪声、泊松噪声或混合噪声。然而,在实际捕获的视频中,在高灵敏度设置下的实际噪声是复杂的,用这些假设来建模是不准确的。本文探讨了数码相机中实际高灵敏度噪声的物理来源,建立了高灵敏度噪声的数学模型,并提出了一种基于lstm的神经网络在噪声模型的基础上增强弱光视频的方法。具体来说,我们使用所提出的噪声模型生成训练数据,并以暗噪声视频为输入,明亮视频为输出训练网络。对合成和真实捕获的低光视频与最先进的方法进行了广泛的比较,以证明所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Low Light Videos by Exploring High Sensitivity Camera Noise
Enhancing low light videos, which consists of denoising and brightness adjustment, is an intriguing but knotty problem. Under low light condition, due to high sensitivity camera setting, commonly negligible noises become obvious and severely deteriorate the captured videos. To recover high quality videos, a mass of image/video denoising/enhancing algorithms are proposed, most of which follow a set of simple assumptions about the statistic characters of camera noise, e.g., independent and identically distributed(i.i.d.), white, additive, Gaussian, Poisson or mixture noises. However, the practical noise under high sensitivity setting in real captured videos is complex and inaccurate to model with these assumptions. In this paper, we explore the physical origins of the practical high sensitivity noise in digital cameras, model them mathematically, and propose to enhance the low light videos based on the noise model by using an LSTM-based neural network. Specifically, we generate the training data with the proposed noise model and train the network with the dark noisy video as input and clear-bright video as output. Extensive comparisons on both synthetic and real captured low light videos with the state-of-the-art methods are conducted to demonstrate the effectiveness of the proposed method.
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