An Imaging Method for Automated SkinLesion Segmentation using Statistical Analysis and Bit Plane Slicing

Ashmita Gupta, Ashish Issac, Malay Kishore Duttal, K. Říha
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Abstract

Melanoma can prove fatal if not diagnosed at early stage. Computer aided identification of diseases can equip normal people in performing a screening test of diseases. The accurate lesion segmentation plays a crucial role in correct diagnosis of skin diseases. This work proposes a skin lesion segmentation method using statistical analysis and bit plane slicing. Hole filling operation is competent enough to sufficiently reject the noisy pixels from the finally segmented image. The results of skin lesion segmentation obtained from the proposed algorithm has been compared with the annotated images available with the database. The results arepresented in form of overlapping score and correlation coefficient. An average overlapping score and correlation coefficient of 91.59% and 92.07%, respectively, is obtained from the proposed algorithm. Also, an image based performance analysis of segmented lesion has been done and an average sensitivity of 94.33% has been achieved. The results are convincing and suggests that the proposed work can be used for some real-time application.
基于统计分析和位平面切片的皮肤病灶自动分割成像方法
如果不及早诊断,黑色素瘤可能是致命的。计算机辅助疾病识别可以使正常人进行疾病筛查试验。准确的病灶分割对于皮肤病的正确诊断至关重要。本文提出了一种基于统计分析和位平面切片的皮肤病灶分割方法。孔填充操作足以充分抑制最终分割图像中的噪声像素。将该算法得到的皮肤病变分割结果与数据库中已有的标注图像进行了比较。结果以重叠分数和相关系数的形式表示。该算法的平均重叠分数和相关系数分别为91.59%和92.07%。同时,对分割病灶进行了基于图像的性能分析,平均灵敏度达到94.33%。结果令人信服,表明所提出的工作可以用于一些实时应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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