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Detecting melanoma in dermoscopy images using scale adaptive local binary patterns

机译:使用比例自适应局部二进制模式检测皮肤镜图像中的黑色素瘤

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Recent advances in the area of computer vision has led to the development of various assisted diagnostics systems for the detection of melanoma in the patients. Texture and color are considered as two fundamental visual characteristics which are vital for the detection of melanoma. This paper proposes the use of a combination of texture and color features for the classification of dermoscopy images. The texture features consist of a variation of local binary pattern (LBP) in which the strength of the LBPs is used to extract scale adaptive patterns at each pixel, followed by the construction of a histogram. For color feature extraction, we used standard HSV histograms. The extracted features are concatenated to form a feature vector for an image, followed by classification using support vector machines. Experiments show that the proposed feature set exhibits good classification performance comparing favorably to other state-of-the-art alternatives.
机译:计算机愿景领域的最新进展导致了各种辅助诊断系统的检测,用于检测患者的黑素瘤。 纹理和颜色被认为是对检测黑素瘤至关重要的两个基本视觉特征。 本文提出了使用纹理和颜色特征的组合,用于Dermoscopy图像的分类。 纹理特征包括局部二进制图案(LBP)的变型,其中LBP的强度用于在每个像素处提取比例自适应图案,然后进行直方图构造。 对于彩色特征提取,我们使用标准HSV直方图。 提取的特征被连接以形成图像的特征向量,然后使用支持向量机进行分类。 实验表明,所提出的特征套件表现出良好的分类性能,对其他最先进的替代方案有利比较。

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