Banding or false contour is an annoying visual artifact whose impact is even more pronounced in ultra high definition, high dynamic range, and wide colour gamut visual content, which is becoming increasingly popular. Since users associate a heightened expectation of quality with such content and banding leads to deteriorated visual quality-of-experience, the area of banding removal or debanding has taken paramount importance. Existing debanding approaches are mostly knowledge-driven. Despite the widespread success of deep learning in other areas of image processing and computer vision, data-driven debanding approaches remain surprisingly missing. In this work, we make one of the first attempts to develop a deep learning based banding artifact removal method for images and name it deep debanding network (deepDeband). For its training, we construct a large-scale dataset of 51,490 pairs of corresponding pristine and banded image patches. Performance evaluation shows that deepDeband is successful at greatly reducing banding artifacts in images, outperforming existing methods both quantitatively and visually.
翻译:带宽或假轮廓是一种令人烦恼的视觉工艺品,其影响在超高定义、高动态范围和广彩全色视觉内容中更加明显,越来越受欢迎。由于用户将对质量的高度期望与这种内容联系在一起,而且带宽导致视觉质量下降,因此,取消或取消带宽的领域至关重要。现有的取消带宽方法大多是知识驱动的。尽管在图像处理和计算机视觉的其他领域深层学习取得了广泛成功,但数据驱动的脱宽方法仍然令人惊讶地缺失。在这项工作中,我们首次尝试为图像开发一种深层学习的以带宽清除方法,并命名其深带宽带宽网络(deep Deband)。为了培训,我们建立了一个51 490对相应的平板和带宽幅图像补丁的大规模数据集。绩效评估表明,深德班成功地大大减少了图像中的带宽幅工艺,在数量上和视觉上都比现有方法都好。