一种基于图像处理方法的混合皮肤病变分割方法

H. Moussaoui, Nabil El Akkad, Mohamed Benslimane
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摘要

目前,图像分割仍然是图像处理系统中最关键的阶段。图像分割的主要思想是根据要解决的问题将随机图像分割或分成若干个分区。在本文中,我们将提出一种基于Otsu阈值算法和标记控制分水岭法的皮肤癌检测新方法。该杂交过程首先通过使用模糊c均值算法对输入图像进行分割开始,模糊c均值算法是一种聚类方法,它赋予像素属于一个或多个聚类的可能性。之后,我们将应用multi-Otsu,这是一种阈值算法,根据灰度级别的强度将图像的像素划分为各种类别。该方法的下一步是标记控制的分水岭算法,该算法通过使用包括数学形态学在内的边缘检测概念将图像划分为均匀的区域或区域。通过从网络和Kaggle数据集中收集和收集的几种不同类型的皮肤癌图像,应用并体验了所提出的技术。为了评估所取得结果的价值,我们使用了几个评估指标,如骰子系数、灵敏度、特异性以及Jaccard相似性,这些指标都显示出良好和令人满意的结果。
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A Hybrid Skin Lesions Segmentation Approach Based on Image Processing Methods
Presently image segmentation remains the most crucial stage in the image processing system. The main idea ofimage segmentation is to partition or divide a random image into several partitions depending on the problem to solve. In this paper, we will be presenting a new method of skin cancer detection based on Otsu’s thresholding algorithm and markercontrolled watershed method. This hybridization process is first of all started by segmenting the input image using fuzzy c-means algorithm which is a clustering method that gives the possibility to a pixel to belong to one or more clusters. After that, we will apply multi-Otsu which is a thresholding algorithm that separates the pixels of an image into a variety of classes depending on the intensity of the gray levels. The next step of this proposed method is the marker-controlled watershedalgorithm that divides the image into homogenous areas or regions by using edge-detection concepts including mathematical morphology. The proposed technique was applied and experienced using several images of different types of skin cancer that were collected and gathered from the web and also from the Kaggle dataset. To assess the worth of the achieved results, we used several evaluation metrics like dice coefficient, sensitivity, specificity as well as Jaccard similarity that all have shown good and satisfactory results.
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