Developing and integrating advanced image sensors with novel algorithms in camera systems are prevalent with the increasing demand for computational photography and imaging on mobile platforms. However, the lack of high-quality data for research and the rare opportunity for in-depth exchange of views from industry and academia constrain the development of mobile intelligent photography and imaging (MIPI). To bridge the gap, we introduce the first MIPI challenge, including five tracks focusing on novel image sensors and imaging algorithms. In this paper, Quad Joint Remosaic and Denoise, one of the five tracks, working on the interpolation of Quad CFA to Bayer at full resolution, is introduced. The participants were provided a new dataset, including 70 (training) and 15 (validation) scenes of high-quality Quad and Bayer pairs. In addition, for each scene, Quad of different noise levels was provided at 0dB, 24dB, and 42dB. All the data were captured using a Quad sensor in both outdoor and indoor conditions. The final results are evaluated using objective metrics, including PSNR, SSIM, LPIPS, and KLD. A detailed description of all models developed in this challenge is provided in this paper. More details of this challenge and the link to the dataset can be found at https://github.com/mipi-challenge/MIPI2022.
翻译:由于对计算摄影和移动平台成像的需求日益增加,开发和整合先进的图像传感器和摄像系统的新算法十分普遍;然而,缺乏高质量的研究数据,而且行业和学术界深入交流观点的机会很少,限制了移动智能摄影和成像(MIPI)的发展。为了缩小差距,我们引入了第一个MIPI挑战,包括侧重于新图像传感器和成像算法的五条轨道,包括侧重于新图像传感器和成像算法的五条轨道之一。在本文中,五条轨道之一,即四轮联合Remosaic和Denoise,正在对夸德非洲金融公司与Bayer公司的全面解析。与会者获得了一套新的数据集,包括70个(培训)和15个(验证)优质Quad和Bayer两对的场景。此外,我们在每个场景中都提供了不同噪声等级的四轮的四架,分别侧重于新式图像传感器和成型/室内条件之一。最后结果是使用客观的衡量指标,包括PSNRR、SSIM、LPIPS、LPIS和KLLLLLLDMI公司。在本文中找到了这个格式中的所有挑战。