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Clustering-Based Melanoma Detection in Dermoscopy Images Using ABCD Parameters

机译:使用ABCD参数的Dermoscopy图像中基于聚类的黑色素瘤检测

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Melanoma, dangerous among skin cancer, becomes fatal when not diagnosed and treated at the earliest. It can be correctly predicted only by the expert dermatologists. Owing to lack of experts, computer-aided diagnosis is preferred nowadays. Here we have proposed the image processing algorithm based on clustering to identify melanoma. A total of 170 images taken from the standard database are used to test the algorithm. Various filters and pre-processing techniques have been analyzed for better skin enhancement. The lesion portion is segmented using K-means clustering algorithm. Then the features are extracted from the segmented lesion, and total dermatoscopy score was calculated. This score was calculated for all images and are classified into melanoma and non-melanoma. Finally, the classification accuracy of the algorithm is computed.
机译:黑色素瘤,在皮肤癌中危险,当最早未被诊断和治疗时都变得致命。它可以仅由专家皮肤科医生正确预测。由于专家缺乏,现在优先于计算机辅助诊断。在这里,我们提出了基于聚类的图像处理算法来识别黑色素瘤。从标准数据库中拍摄的总共170张图像用于测试算法。已经分析了各种过滤器和预处理技术以获得更好的皮肤增强。使用K-means聚类算法分段病变部分。然后从分段病变中提取特征,并计算总皮肤病分数。为所有图像计算该分数,并分为黑色素瘤和非黑色素瘤。最后,计算了算法的分类精度。

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