Extracting High-Level Intuitive Features (HLIF) for Classifying Skin Lesions Using Standard Camera Images

R. Amelard, A. Wong, David A Clausi
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引用次数: 21

Abstract

High-level intuitive features (HLIF) that measure asymmetry of skin lesion images obtained using standard cameras are presented. These features can be used to help dermatologists objectively diagnose lesions as cancerous (melanoma) or benign with intuitive rationale. Existing work defines large sets of low-level statistical features for analysing skin lesions. The proposed HLIFs are designed such that smaller sets of HLIFs can capture more deterministic information than large sets of low-level features. Analytical reasoning is given for each feature to show how it aptly describes asymmetry. Promising experimental results show that classification using the proposed HLIF set, although only one-tenth the size of the existing state-of-the-art low-level feature set, labels the data with better or comparable success. The best classification is obtained by combining the low-level feature set with the HLIF set.
利用标准相机图像提取高级直观特征(HLIF)进行皮肤病变分类
提出了用标准相机测量皮肤病变图像不对称性的高级直观特征(HLIF)。这些特征可以用来帮助皮肤科医生客观地诊断病变是癌性(黑色素瘤)还是良性的直觉原理。现有的工作定义了大量用于分析皮肤病变的低水平统计特征。所提出的HLIFs的设计使得较小的HLIFs集可以捕获比大的低级特征集更多的确定性信息。给出了每个特征的分析推理,以说明它如何恰当地描述不对称。有希望的实验结果表明,使用提出的HLIF集进行分类,尽管只有现有最先进的低级特征集的十分之一大小,但标记数据的效果更好或相当成功。将低级特征集与HLIF集相结合,得到最佳分类。
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