This paper is concerned with specular reflection removal based on tensor low-rank decomposition framework with the help of polarization information. Our method is motivated by the observation that the specular highlight of an image is sparsely distributed while the remaining diffuse reflection can be well approximated by a linear combination of several distinct colors using a low-rank and sparse decomposition framework. Unlike current solutions, our tensor low-rank decomposition keeps the spatial structure of specular and diffuse information which enables us to recover the diffuse image under strong specular reflection or in saturated regions. We further define and impose a new polarization regularization term as constraint on color channels. This regularization boosts the performance of the method to recover an accurate diffuse image by handling the color distortion, a common problem of chromaticity-based methods, especially in case of strong specular reflection. Through comprehensive experiments on both synthetic and real polarization images, we demonstrate that our method is able to significantly improve the accuracy of highlight specular removal, and outperform the competitive methods to recover the diffuse image, especially in regions of strong specular reflection or in saturated areas.
翻译:本文关注的是借助极分化信息,基于高压低位分解框架的视觉反射去除。我们的方法的动因是观察到图像的显像亮度分布不广,而其余的弥散反射则完全可以通过使用低调和稀疏分解框架的几种不同颜色的线性组合相近。与目前的解决方案不同,我们的微调低分解保持了透光和分散信息的空间结构,使我们能够在强烈的视觉反射或饱和地区恢复扩散图像的准确性。我们进一步定义并强加一个新的极化正规化术语,将其作为对彩色频道的限制。这种正规化提高了通过处理色彩扭曲(一种基于染色性的方法的常见问题)来恢复准确扩散图像的方法的性能,特别是当出现强烈的光度反射时。我们通过对合成的和真实的极化图像的全面实验,证明我们的方法能够大大提高显光谱分解的准确性,并超越了恢复扩散图像的竞争性方法,特别是在强烈的镜像反射区或饱和地区。