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用于黑色素瘤诊断的皮肤图像光照建模与发色团识别

Skin image illumination modeling and chromophore identification for melanoma diagnosis.

作者信息

Liu Zhao, Zerubia Josiane

机构信息

INRIA, Ayin Research Team, BP93 06902 Sophia Antipolis, Cedex, France.

出版信息

Phys Med Biol. 2015 May 7;60(9):3415-31. doi: 10.1088/0031-9155/60/9/3415. Epub 2015 Apr 9.

DOI:10.1088/0031-9155/60/9/3415
PMID:25856087
Abstract

The presence of illumination variation in dermatological images has a negative impact on the automatic detection and analysis of cutaneous lesions. This paper proposes a new illumination modeling and chromophore identification method to correct lighting variation in skin lesion images, as well as to extract melanin and hemoglobin concentrations of human skin, based on an adaptive bilateral decomposition and a weighted polynomial curve fitting, with the knowledge of a multi-layered skin model. Different from state-of-the-art approaches based on the Lambert law, the proposed method, considering both specular reflection and diffuse reflection of the skin, enables us to address highlight and strong shading effects usually existing in skin color images captured in an uncontrolled environment. The derived melanin and hemoglobin indices, directly relating to the pathological tissue conditions, tend to be less influenced by external imaging factors and are more efficient in describing pigmentation distributions. Experiments show that the proposed method gave better visual results and superior lesion segmentation, when compared to two other illumination correction algorithms, both designed specifically for dermatological images. For computer-aided diagnosis of melanoma, sensitivity achieves 85.52% when using our chromophore descriptors, which is 8~20% higher than those derived from other color descriptors. This demonstrates the benefit of the proposed method for automatic skin disease analysis.

摘要

皮肤病图像中光照变化的存在对皮肤病变的自动检测和分析有负面影响。本文提出了一种新的光照建模和发色团识别方法,基于自适应双边分解和加权多项式曲线拟合,并结合多层皮肤模型的知识,来校正皮肤病变图像中的光照变化,以及提取人体皮肤中的黑色素和血红蛋白浓度。与基于朗伯定律的现有方法不同,该方法同时考虑了皮肤的镜面反射和漫反射,使我们能够处理在非受控环境中拍摄的皮肤颜色图像中通常存在的高光和强阴影效果。所导出的黑色素和血红蛋白指数与病理组织状况直接相关,受外部成像因素的影响较小,并且在描述色素沉着分布方面更有效。实验表明,与另外两种专门为皮肤病图像设计的光照校正算法相比,该方法具有更好的视觉效果和更优的病变分割效果。对于黑色素瘤的计算机辅助诊断,使用我们的发色团描述符时灵敏度达到85.52%,比从其他颜色描述符得出的灵敏度高8%至20%。这证明了所提出的方法对自动皮肤疾病分析的益处。

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