In this paper, we propose a novel method for separately estimating spectral distributions from images captured by a typical RGB camera. The proposed method allows us to separately estimate a spectral distribution of illumination, reflectance, or camera sensitivity, while recent hyperspectral cameras are limited to capturing a joint spectral distribution from a scene. In addition, the use of Bayesian inference makes it possible to take into account prior information of both spectral distributions and image noise as probability distributions. As a result, the proposed method can estimate spectral distributions in a unified way, and it can enhance the robustness of the estimation against noise, which conventional spectral-distribution estimation methods cannot. The use of Bayesian inference also enables us to obtain the confidence of estimation results. In an experiment, the proposed method is shown not only to outperform conventional estimation methods in terms of RMSE but also to be robust against noise.
翻译:在本文中,我们提出了一种新颖的方法,将光谱分布与典型的RGB相机摄取的图像分开估计。拟议方法使我们能够单独估计光谱分布、反射或摄像敏感度的光谱分布,而最近的超光谱摄像头仅限于从场外捕捉光谱分布。此外,使用巴耶斯推断法可以将光谱分布和图像噪音的先前信息作为概率分布来考虑。因此,拟议方法可以统一地估计光谱分布,并且可以提高对噪音的可靠估计,而传统的光谱分布估计方法是无法做到的。使用巴耶斯推断法也使我们能够获得对估计结果的信心。在一项实验中,所拟议的方法不仅在RME方面超越了常规估计方法,而且对噪音也十分有力。