Kurniawan Edwin, Park Yunjin, Lee Sukho
Department of Computer Engineering, Dongseo University, Busan 47011, Korea.
Department of Mathematics, Ewha University, Seoul 03760, Korea.
Sensors (Basel). 2022 Feb 24;22(5):1767. doi: 10.3390/s22051767.
In this paper, we propose a deep-image-prior-based demosaicing method for a random RGBW color filter array (CFA). The color reconstruction from the random RGBW CFA is performed by the deep image prior network, which uses only the RGBW CFA image as the training data. To our knowledge, this work is a first attempt to reconstruct the color image with a neural network using only a single RGBW CFA in the training. Due to the White pixels in the RGBW CFA, more light is transmitted through the CFA than in the case with the conventional RGB CFA. As the image sensor can detect more light, the signal-to-noise-ratio (SNR) increases and the proposed demosaicing method can reconstruct the color image with a higher visual quality than other existing demosaicking methods, especially in the presence of noise. We propose a loss function that can train the deep image prior (DIP) network to reconstruct the colors from the White pixels as well as from the red, green, and blue pixels in the RGBW CFA. Apart from using the DIP network, no additional complex reconstruction algorithms are required for the demosaicing. The proposed demosaicing method becomes useful in situations when the noise becomes a major problem, for example, in low light conditions. Experimental results show the validity of the proposed method for joint demosaicing and denoising.
在本文中,我们针对随机RGBW彩色滤光片阵列(CFA)提出了一种基于深度图像先验的去马赛克方法。随机RGBW CFA的颜色重建由深度图像先验网络执行,该网络仅使用RGBW CFA图像作为训练数据。据我们所知,这项工作是首次尝试在训练中仅使用单个RGBW CFA通过神经网络重建彩色图像。由于RGBW CFA中的白色像素,与传统RGB CFA相比,有更多的光透过CFA。由于图像传感器能够检测到更多的光,信噪比(SNR)提高,并且所提出的去马赛克方法能够以比其他现有去马赛克方法更高的视觉质量重建彩色图像,尤其是在存在噪声的情况下。我们提出了一种损失函数,该函数可以训练深度图像先验(DIP)网络从RGBW CFA中的白色像素以及红色、绿色和蓝色像素重建颜色。除了使用DIP网络之外,去马赛克不需要额外的复杂重建算法。当噪声成为主要问题时,例如在低光照条件下,所提出的去马赛克方法变得很有用。实验结果表明了所提出的联合去马赛克和去噪方法的有效性。