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Skin lesion images classification using new color pigmented boundary descriptors

机译:使用新的彩色色素边界描述符对皮肤病变图像进行分类

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Computational methods play an important role in enhancing the diagnosis of the skin cancer. Melanoma is the most fatal type of skin cancers that causes significant number of deaths in recent years. In this paper, novel boundary features are introduced based on the color variation of the skin lesion images, acquired with standard cameras. Furthermore, to reach higher performance in melanoma detection, a set of textural and morphological features are associated with proposed features. Multilayer perceptron neural network is used as classifier in this work. Results analysis indicate that proposed feature set has the highest mean accuracy (87.80%), sensitivity (87.92%), specificity (87.65%) and precision (90.39%) in comparison with the previous works in Dermatology Information System (IS) and DermQuest datasets.
机译:计算方法在增强皮肤癌的诊断中起重要作用。黑色素瘤是最致命的皮肤癌类型,近年来导致大量死亡。在本文中,基于使用标准相机获取的皮肤病变图像的颜色变化,介绍了新颖的边界特征。此外,为了在黑色素瘤检测中达到更高的性能,一组纹理和形态特征与建议的特征相关联。多层感知器神经网络被用作分类器。结果分析表明,与以前在皮肤病学信息系统(IS)中进行的工作相比,所提出的特征集具有最高的平均准确度(87.80 \%),灵敏度(87.92 \%),特异性(87.65 \%)和精度(90.39 \%) )和DermQuest数据集。

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