IEEE Trans Cybern. 2018 May;48(5):1406-1419. doi: 10.1109/TCYB.2017.2695655. Epub 2017 Apr 30.
Video decolorization is to filter out the color information while preserving the perceivable content in the video as much and correct as possible. Existing methods mainly apply image decolorization strategies on videos, which may be slow and produce incoherent results. In this paper, we propose a video decolorization framework that considers frame coherence and saves decolorization time by referring to the decolorized frames. It has three main contributions. First, we define decolorization proximity to measure the similarity of adjacent frames. Second, we propose three decolorization strategies for frames with low, medium, and high proximities, to preserve the quality of these three types of frames. Third, we propose a novel decolorization Gaussian mixture model to classify the frames and assign appropriate decolorization strategies to them based on their decolorization proximity. To evaluate our results, we measure them from three aspects: 1) qualitative; 2) quantitative; and 3) user study. We apply color contrast preserving ratio and C2G-SSIM to evaluate the quality of single frame decolorization. We propose a novel temporal coherence degree metric to evaluate the temporal coherence of the decolorized video. Compared with current methods, the proposed approach shows all around better performance in time efficiency, temporal coherence, and quality preservation.
视频去色是指在尽可能多地保留视频中可感知内容的同时,过滤掉颜色信息。现有的方法主要将图像去色策略应用于视频,这可能会很慢,并且产生不一致的结果。在本文中,我们提出了一种视频去色框架,该框架通过参考去色帧来考虑帧一致性,并节省去色时间。它有三个主要贡献。首先,我们定义了去色接近度来衡量相邻帧的相似性。其次,我们提出了三种针对低、中、高接近度的去色策略,以保持这三种类型的帧的质量。第三,我们提出了一种新的去色高斯混合模型,根据帧的去色接近度对其进行分类,并为其分配适当的去色策略。为了评估我们的结果,我们从三个方面进行了测量:1)定性;2)定量;和 3)用户研究。我们应用颜色对比度保持比和 C2G-SSIM 来评估单帧去色的质量。我们提出了一种新的时间相干度度量来评估去色视频的时间相干性。与现有的方法相比,所提出的方法在时间效率、时间一致性和质量保持方面都表现出了全面的更好的性能。