Developing and integrating advanced image sensors with novel algorithms in camera systems is 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, RGB+ToF Depth Completion, one of the five tracks, working on the fusion of RGB sensor and ToF sensor (with spot illumination) is introduced. The participants were provided with a new dataset called TetrasRGBD, which contains 18k pairs of high-quality synthetic RGB+Depth training data and 2.3k pairs of testing data from mixed sources. All the data are collected in an indoor scenario. We require that the running time of all methods should be real-time on desktop GPUs. The final results are evaluated using objective metrics and Mean Opinion Score (MOS) subjectively. 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,开发并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个轨道,包括五条侧重于新图像传感器和成像算法的轨道。本文中,RGB+ToF深度完成5个轨道之一,即RGB传感器和TF传感器(有点光化)的融合工作。向与会者提供了一套称为TetrasRGBBD的新数据集,其中包括18对高质量的RGB+Depts培训数据和来自混合来源的2.3K对测试数据。所有数据都是在室内收集的。我们要求所有方法的运行时间都应在桌面GPUPS上实时。最后结果将使用客观指标和平均意见评分(MOS)来评估。在本文中,所有在这项挑战中开发的模型的详细说明可以找到。