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Development of an efficient fractal based texture analysis technique for improved classification of dermoscopic images

机译:一种基于分形的有效纹理分析技术的开发,用于改善皮肤镜图像的分类

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Dermoscopy, a non-invasive imaging technique has been significantly used by the doctors and radiologists for the early diagnosis of the various skin disorders. The characteristically similar nature of the melanocytic skin lesions specifically melanoma and dysplastic nevi make the diagnosis more subjective and time consuming, even for expert clinicians. Computer aided diagnostic system has a great impact on the notable discrimination of two closely similar classes of skin diseases by extracting a large number of effective features. In this reported work fractal geometry has been used for both skin lesion border irregularity measurement and texture features extraction. Here, in fractal based texture analysis technique the dermoscopic images have been decomposed into a set of binary images to extract more effective texture features from different grey regions of the image. From each of the image grey region, some statistical features have been extracted along with the fractal dimension measurement to quantify the intensity variation in that region. In this paper it has been established that the extraction of texture information from different small sub regions of the original image using fractal texture analysis increases the classification performance for both the classes. An analysis of the dependence of the performance of classifier using fractal based texture analysis, on the number of decomposed binary images, has been discussed. The highest classification sensitivity of 93.75% and 91.66% have been achieved for melanoma and dysplastic nevi respectively, using support vector machine (SVM) classifier by extracting fractal based texture features from forty grey scale regions of the dermoscopic images.
机译:皮肤镜检查是一种无创成像技术,已被医生和放射科医生广泛用于各种皮肤疾病的早期诊断。黑素细胞性皮肤病变的特征相似性质,特别是黑素瘤和增生性痣,即使对于专家临床医生,诊断也更加主观和耗时。计算机辅助诊断系统通过提取大量有效特征,对两种极为相似的皮肤疾病的显着区分产生重大影响。在此报道的工作中,分形几何已用于皮肤病变边界不规则性测量和纹理特征提取。在此,在基于分形的纹理分析技术中,将皮肤镜图像分解为一组二进制图像,以从图像的不同灰度区域提取更有效的纹理特征。从每个图像灰度区域中,已经提取了一些统计特征以及分形维数测量结果,以量化该区域中的强度变化。在本文中已经确定,使用分形纹理分析从原始图像的不同小子区域中提取纹理信息可提高两个类别的分类性能。讨论了基于分形的纹理分析对分类器性能的依赖性对分解后的二值图像数量的分析。使用支持向量机(SVM)分类器通过从皮肤镜图像的40个灰度区域中提取基于分形的纹理特征,分别对黑色素瘤和增生痣实现了最高的分类敏感性93.75%和91.66%。

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