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Automatic Kaposi's sarcoma detection using texture distinctiveness

机译:利用纹理特征自动检测卡波济肉瘤

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There is a growing emphasis on skin cancer diagnosis and Kaposi's sarcoma has recently received increasing attention. Kaposi's sarcoma is one form of skin cancer. The time and costs required for medical experts to screen all patients for Kaposi's sarcoma are prohibitively expensive. Dermatologists need an automatic diagnosis system to assess a patient's risk of Kaposi's sarcoma without using special or costly equipment. One challenge in implementing such a system is locating the skin lesion. We propose Texture Distinctiveness Lesion Segmentation Algorithm (TDS-KS) to automatically locate skin lesions from the photograph. TDS-KS algorithm consists of two main steps. First a set of representative texture distributions are learned from the input skin lesion image and texture distinctiveness metric is calculated for each distribution. Then a texture-based segmentation algorithm classifies regions the input image as normal skin or lesion based on the occurrence of representative texture distributions. The input images are taken from dermquest database which has images of different skin diseases.
机译:人们越来越重视皮肤癌的诊断,最近卡波西氏肉瘤受到了越来越多的关注。卡波济氏肉瘤是皮肤癌的一种形式。医学专家对所有患者进行卡波西氏肉瘤筛查所需的时间和成本实在是太昂贵了。皮肤科医生需要一种自动诊断系统来评估患者患卡波西肉瘤的风险,而无需使用特殊或昂贵的设备。实施这种系统的一个挑战是定位皮肤病变。我们提出纹理区别性病变分割算法(TDS-KS),以自动从照片中定位皮肤病变。 TDS-KS算法包括两个主要步骤。首先,从输入的皮肤病变图像中获悉一组代表性的纹理分布,并为每个分布计算纹理独特性度量。然后,基于纹理的分割算法基于代表性纹理分布的出现,将输入图像的区域分类为正常皮肤或病变。输入的图像取自具有不同皮肤疾病图像的dermquest数据库。

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