使用光谱聚类的皮肤镜图像自动病变边界检测

Fahimeh Sadat Saleh, R. Azmi
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引用次数: 2

摘要

皮肤病变分割是自动化早期皮肤癌检测最重要的步骤之一,因为后续步骤的准确性很大程度上取决于它。本文提出了一种基于光谱聚类的新方法,可以对皮肤镜图像进行准确有效的分割。在该方法中,考虑到皮肤镜图像的特殊特征,提出了一种优化的聚类算法,利用光谱图划分算法在适当的颜色空间中有效提取病灶边界。所提出的分割方法已应用于170个皮肤镜图像,并通过两个指标进行评估,通过由经验丰富的皮肤科医生提供的分割结果作为基础事实。实验结果表明,与四种最先进的方法相比,该方法可以正确地区分复杂的轮廓,同时可以处理皮肤病变的挑战性特征,如拓扑变化、弱轮廓或虚假轮廓以及颜色和形状的不对称。
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Automated lesion border detection of dermoscopy images using spectral clustering
Skin lesion segmentation is one of the most important steps for automated early skin cancer detection since the accuracy of the following steps significantly depends on it. In this paper we present a novel approach based on spectral clustering that provides accurate and effective segmentation for dermoscopy images. In the proposed method, an optimized clustering algorithm has been provided which effectively extracts lesion borders using spectral graph partitioning algorithm in an appropriate color space, considering special characteristics of dermoscopy images. The proposed segmentation method has been applied to 170 dermoscopic images and evaluated with two metrics, by means of the segmentation results provided by an experienced dermatologist as the ground truth. The experiment results of this approach demonstrate that, complex contours are distinguished correctly while challenging features of skin lesions such as topological changes, weak or false contours, and asymmetry in color and shape are handled as might be expected when compared to four state of the art methods.
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