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Medical image colorization using learning

机译:使用学习对医学图像进行着色

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摘要

We propose a method for colorization of medical grayscale images using color learning. The colors are learned from a color image and predicted for a grayscale image. Earlier we introduced an efficient algorithm for image colorization which uses a dichromatic reflection model. The colorization algorithm is further developed in this study. First, we improve the algorithm performance by extending its capability to work with the grayscale images the contrast of which is lower than the contrast of the color images. Then, we propose a reliable technique to prevent negative contrast during colorization. In addition, we develop a simple approach for grayscale image colorization by a given RGB value. We give two medical applications of our algorithm: realistic color labeling of skin wounds and colorization of a dental cast models. In the former case we use grayscale images and labeling obtained after support vector classification as input data and for the latter application we use photometric stereo images.
机译:我们提出了一种使用颜色学习对医学灰度图像进行彩色化的方法。从彩色图像中学习颜色,并预测灰度图像。早先,我们介绍了一种使用双色反射模型进行图像着色的有效算法。在这项研究中将进一步开发着色算法。首先,我们通过扩展算法的处理能力来处理灰度图像,该灰度图像的对比度低于彩色图像的对比度,从而提高了算法性能。然后,我们提出了一种可靠的技术来防止在着色过程中产生负面的对比度。此外,我们针对给定的RGB值开发了一种用于灰度图像着色的简单方法。我们提供了该算法的两种医学应用:真实的皮肤伤口颜色标记和牙科模型的着色。在前一种情况下,我们使用灰度图像和支持向量分类后获得的标签作为输入数据,而在后一种应用中,我们使用光度立体图像。

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