实时视频脱色使用双边滤波

Yibing Song, Linchao Bao, Qingxiong Yang
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引用次数: 16

摘要

本文提出了一种实时脱色方法。鉴于人类视觉系统对亮度信息的偏好,在脱色过程中应尽可能地保留亮度。因此,所提出的脱色方法测量了将颜色转换为亮度时颜色对比度/细节损失的量。通过计算两幅中间图像之间的差值来估计细节损失,一幅中间图像是对原始彩色图像进行双边滤波得到的,另一幅中间图像是对原始彩色图像进行联合双边滤波得到的,其亮度作为引导图像。然后通过最小化输入彩色图像的图像梯度与客观灰度图像(即残差图像和亮度之和)之间的差值,将估计的细节损失映射到称为残差图像的灰度图像。显然,残差图像将包含像素与所有零值(即两个中间图像将是相同的),只有当没有视觉细节丢失的亮度。与以往大多数方法不同,本文提出的脱色方法既保留了彩色图像的对比度,又保留了亮度。定量评估表明它在标准测试套件中表现最好。同时,它具有很强的鲁棒性,可以直接用于视频转换,同时保持时间相干性。具体来说,它可以在3.4 GHz i7 CPU上实时(约28 Hz)转换高分辨率视频(1280 × 720)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time video decolorization using bilateral filtering
This paper presents a real-time decolorization method. Given the human visual systems preference for luminance information, the luminance should be preserved as much as possible during decolorization. As a result, the proposed decolorization method measures the amount of color contrast/detail lost when converting color to luminance. The detail loss is estimated by computing the difference between two intermediate images: one obtained by applying bilateral filter to the original color image, and the other obtained by applying joint bilateral filter to the original color image with its luminance as the guidance image. The estimated detail loss is then mapped to a grayscale image named residual image by minimizing the difference between the image gradients of the input color image and the objective grayscale image that is the sum of the residual image and the luminance. Apparently, the residual image will contain pixels with all zero values (that is the two intermediate images will be the same) only when no visual detail is missing in the luminance. Unlike most previous methods, the proposed decolorization method preserves both contrast in the color image and the luminance. Quantitative evaluation shows that it is the top performer on the standard test suite. Meanwhile it is very robust and can be directly used to convert videos while maintaining the temporal coherence. Specifically it can convert a high-resolution video (1280 × 720) in real time (about 28 Hz) on a 3.4 GHz i7 CPU.
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