人工智能
计算机科学
脱模
增采样
计算机视觉
降噪
彩色滤光片阵列
特征提取
视频去噪
特征(语言学)
卷积神经网络
模式识别(心理学)
图像处理
彩色图像
图像(数学)
视频处理
彩色凝胶
化学
视频跟踪
图层(电子)
有机化学
哲学
薄膜晶体管
语言学
多视点视频编码
作者
Shi Guo,Zhetong Liang,Lei Zhang
标识
DOI:10.1109/tip.2021.3100312
摘要
Denoising and demosaicking are essential yet correlated steps to reconstruct a full color image from the raw color filter array (CFA) data. By learning a deep convolutional neural network (CNN), significant progress has been achieved to perform denoising and demosaicking jointly. However, most existing CNN-based joint denoising and demosaicking (JDD) methods work on a single image while assuming additive white Gaussian noise, which limits their performance on real-world applications. In this work, we study the JDD problem for real-world burst images, namely JDD-B. Considering the fact that the green channel has twice the sampling rate and better quality than the red and blue channels in CFA raw data, we propose to use this green channel prior (GCP) to build a GCP-Net for the JDD-B task. In GCP-Net, the GCP features extracted from green channels are utilized to guide the feature extraction and feature upsampling of the whole image. To compensate for the shift between frames, the offset is also estimated from GCP features to reduce the impact of noise. Our GCP-Net can preserve more image structures and details than other JDD methods while removing noise. Experiments on synthetic and real-world noisy images demonstrate the effectiveness of GCP-Net quantitatively and qualitatively.
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