首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Flexible Kernel-Based Fuzzy Means Based Segmentation and Patch-Local Binary Patterns Feature Based Classification System Skin Cancer Detection
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Flexible Kernel-Based Fuzzy Means Based Segmentation and Patch-Local Binary Patterns Feature Based Classification System Skin Cancer Detection

机译:基于灵活的基于内核的模糊意味着基于分割和补丁局部二进制模式的基于分类系统皮肤癌检测

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摘要

The high death rates are occurred due to the Melanoma among the skin tumor persons. Melanoma is more dangerous when it raises inside of the skin layer. Hence, watch the wound in depth of the skin is a significant cause to identify melanoma. A (NI) non-invasive computerized dermoscopic (DS) method is introduced in these study. Existing DS system many faces various challenges includes segmentation and classification for detecting the skin cancer. The objective of the research work to improve the segmentation and classification performance. In DS images hair removal and segmentation are performed by using Hybrid Laplacian of Gaussian (HLOG) filter and Flexible Kernel-Based Fuzzy Means (FKFCM). whereas Patch-Local binary patterns (LBP) for feature extraction. The extensive experiment are conducted on largest publicly available benchmark dataset such as PH2, Kaggel and HAM 10000. To validate the performance of proposed technique when compared with traditional segmentation and classification techniques. The proposed system archive 97% of accuracy, 98% sensitivity and 96% of specificity for PH2 dataset. The planned scheme stands out among the few modern literary sources presented in the context of the analysis of DS images in terms of productivity and accepted methodologies, which proves the reliability of the novel study.
机译:由于皮肤肿瘤人群中的黑素瘤发生了高死亡率。当它在皮肤层内升起时,黑色素瘤更危险。因此,观察皮肤深度的伤口是鉴定黑色素瘤的重要原因。在这些研究中介绍了(Ni)非侵入式计算机化Dermoscopic(DS)方法。现有的DS系统许多面临各种挑战包括检测皮肤癌的分段和分类。研究致力于改善细分和分类绩效的目标。在DS图像中,通过使用高斯(HLOG)滤波器的混合LAPLIAN和基于柔性内核的模糊装置(FKFCM)来执行毛发去除和分割。虽然特征提取的补丁本地二进制模式(LBP)。广泛的实验是在最大的公开可用的基准数据集上进行,如PH2,Kaggel和Ham 10000。与传统分割和分类技术相比,验证所提出的技术的性能。所提出的系统归档精度的97%,灵敏度为98%和96%的PH2数据集的特异性。计划的计划在少数现代文学资源中脱颖而出,在生产力和接受的方法中分析DS图像的背景中,证明了新型研究的可靠性。

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