基于灰度和自适应多尺度视网膜法的皮肤镜图像色彩校正

Shuli Guo, Xiaowei Song, Lina Han, Guowei Wang, Yuanyuan Zhao, Anil Baris Cekderi
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引用次数: 0

摘要

黑色素瘤是最常见、最致命的恶性皮肤癌。提出了一种基于颜色校正和亮度调节的方法来解决黑色素瘤识别中皮肤镜图像的颜色偏差问题。首先,利用闵可夫斯基范数对皮肤镜图像中红色通道的颜色偏差进行校正;其次,采用线性拉伸法调整图像的饱和度;然后,利用引导滤波器的卷积运算来估计低照度图像的入射分量,并通过调整滤波窗口的大小和平滑参数的值来构建基于多尺度Retinex方法的引导滤波器的反射分量公式,以增强图像的亮度。最后,伽玛校正算法对图像亮度进行适当调整。实验结果表明,提出的算法可以解决皮肤镜图像颜色偏差异常的问题,通过颜色校正将黑色素瘤的识别率提高4-6个百分点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Colour correction of dermatoscopic images based on Shades of Gray and the Adaptive Multiscale Retinex Method
Melanoma is the most common and deadly malignant skin cancer. A method based on colour correction and brightness adjustment was proposed to solve the colour deviation problem of dermatoscopic images in melanoma recognition. Firstly, the Minkowski norm is used to correct the colour deviation in the red channel of the dermatoscopic image. Secondly, the image’s saturation is adjusted by the linear stretching method. Then, the convolution operation of the guided filter was used to estimate the incident component of the low illumination image, and the reflection component formula of the guided filter based on the multi-scale Retinex method was constructed by adjusting the size of the filtering window and the value of smoothing parameters to enhance the brightness of the image. Finally, the Gamma correction algorithm adjusts the brightness image appropriately. The experimental results show that the proposed algorithm can solve the problem of abnormal colour deviation of dermatoscopic images and improve the recognition rate of melanoma by 4-6 percentage points through colour correction.
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