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Melanoma skin cancer detection using color and new texture features

机译:黑色素瘤皮肤癌使用颜色和新纹理特征

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Melanoma is the most prevalent skin cancer and sometimes it is very difficult to diagnose. Noninvasive dermatoscopy is used to diagnose type of cancer. Since proposed method is based on eye-deduction, diagnosis of melanoma in early stage is difficult for dermatologist. A new algorithm is presented to classify dermoscopic images into malignant and benign. Initially the images were segmented using active counter model and two features such as texture and colorful components were extracted. Texture-based features were first in this area used to diagnose disease and its results indicated high-efficacy. In the international skin imaging collaboration dataset we achieve accuracy of 97% by support vector machine classifier.
机译:黑色素瘤是最普遍的皮肤癌,有时难以诊断。非侵入性皮肤镜用于诊断癌症的类型。由于所提出的方法是基于令人眼花推迟,皮肤科医生难以诊断黑素瘤。提出了一种新的算法将Dermoscopic图像分类为恶性和良性。最初使用主动计数器模型进行分段图像,提取两个功能,例如纹理和彩色组件。纹理的特征首先在用于诊断疾病的该地区,其结果表明高效率。在国际皮肤成像协作数据集中,我们通过支持向量机分类器实现了97 %的准确性。

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