Zhang Lei, Wu Xiaolin, Zhang David
Department of Computing, The Hong Kong Polytechnic University, Hung Hum, Kowloon, Hong Kong.
IEEE Trans Image Process. 2007 Sep;16(9):2184-97. doi: 10.1109/tip.2007.901807.
Single sensor digital color still/video cameras capture images using a color filter array (CFA) and require color interpolation (demosaicking) to reconstruct full color images. The color reproduction has to combat sensor noises which are channel dependent. If untreated in demosaicking, sensor noises can cause color artifacts that are hard to remove later by a separate denoising process, because the demosaicking process complicates the noise characteristics by blending noises of different color channels. This paper presents a joint demosaicking-denoising approach to overcome this difficulty. The color image is restored from noisy mosaic data in two steps. First, the difference signals of color channels are estimated by linear minimum mean square-error estimation. This process exploits both spectral and spatial correlations to simultaneously suppress sensor noise and interpolation error. With the estimated difference signals, the full resolution green channel is recovered. The second step involves in a wavelet-based denoising process to remove the CFA channel-dependent noises from the reconstructed green channel. The red and blue channels are subsequently recovered. Simulated and real CFA mosaic data are used to evaluate the performance of the proposed joint demosaicking-denoising scheme and compare it with many recently developed sophisticated demosaicking and denoising schemes.
单传感器数字彩色静态/视频相机使用彩色滤光片阵列(CFA)捕获图像,并且需要进行颜色插值(去马赛克)以重建全彩色图像。颜色再现必须应对与通道相关的传感器噪声。如果在去马赛克过程中不进行处理,传感器噪声会导致出现颜色伪像,而这些伪像在后续单独的去噪过程中很难去除,因为去马赛克过程通过混合不同颜色通道的噪声使噪声特性变得复杂。本文提出了一种联合去马赛克 - 去噪方法来克服这一困难。彩色图像从有噪声的马赛克数据中分两步恢复。首先,通过线性最小均方误差估计来估计颜色通道的差分信号。该过程利用光谱和空间相关性来同时抑制传感器噪声和插值误差。利用估计出的差分信号,恢复全分辨率的绿色通道。第二步涉及基于小波的去噪过程,以从重建的绿色通道中去除与CFA通道相关的噪声。随后恢复红色和蓝色通道。使用模拟的和真实的CFA马赛克数据来评估所提出的联合去马赛克 - 去噪方案的性能,并将其与许多最近开发的复杂去马赛克和去噪方案进行比较。