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Skin Lesion Images Segmentation: A Survey of the State-of-the-Art

机译:皮肤病变图像分割:对最先进的调查

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This paper presents a detailed and robust survey of the state-of-the-art algorithms and techniques for performing skin lesion segmentation. The approach used is the comparative analysis of the existing methods for skin lesion analysis, critical review of the performance evaluation of some recently developed algorithms for skin lesion images segmentation, and the study of current evaluating metrics used for performance analysis. The study highlights merits and demerits of the algorithms examined, observing the strength and weakness of each algorithm. An inference can thus be made from the analysis about the best performing algorithms. It is observed that the advancement of technology and availability of a large and voluminous data set for training the machine learning algorithms encourage the application of machine learning techniques such as deep learning for performing skin lesion images segmentation. This work shows that most deep learning techniques outperform some existing state-of-the arts algorithm for skin lesion images segmentation.
机译:本文介绍了对现有算法和用于进行皮肤病延迟分割的技术的详细和强大的调查。所用方法是对皮肤病病变分析现有方法的比较分析,对皮肤病变图像分割的一些最近开发的算法的绩效评估的关键综述,以及用于性能分析的当前评估度量的研究。该研究突出了检查的算法的优点和缺点,观察每种算法的强度和弱点。因此可以从关于最好的执行算法的分析来进行推断。据指出,技术和大型数据集的技术和可用性用于训练机器学习算法鼓励应用机器学习技术,例如深度学习以进行皮肤病升图像分割。这项工作表明,大多数深度学习技术越优于皮肤病变图像分割的现有现有技术算法。

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