Identification of Acne Vulgaris Type in Facial Acne Images Using GLCM Feature Extraction and Extreme Learning Machine Algorithm

Riyan Latifahul Hasanah, Y. Rianto, D. Riana
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引用次数: 4

Abstract

Acne vulgaris or acne is a common inflammatory pilosebaceous condition that affects up to 90% of teenagers, begins during adolescent years, and often persists into adulthood. Acne vulgaris, especially on the face, has a major impact on the emotional, social and psychological health of patients. In treating acne, it is necessary to identify the exact type of acne. The manual method is considered less effective, so it is proposed an automatic method using a computer, which uses image processing techniques. This research was conducted to identify the types of acne on facial acne images. The methods used are K-Means Clustering for segmentation, Gray Level Co-occurrence Matrix (GLCM) for feature extraction, and Extreme Learning Machine (ELM) for classification. The dataset is 100 images and consists of 3 classes, namely Nodules, Papules and Pustules. Testing is done in two stages, namely testing 2 classes (Nodules and Papules), followed by testing 3 classes (Nodules, Papules and Pustules). Testing of 2 classes produces the highest accuracy of 95,24% and testing of 3 classes produces the highest accuracy of 80%.
基于GLCM特征提取和极限学习机算法的面部痤疮类型识别
寻常性痤疮或痤疮是一种常见的皮脂腺炎症性疾病,影响多达90%的青少年,始于青少年时期,通常持续到成年。寻常性痤疮,特别是面部痤疮,对患者的情绪、社会和心理健康有重大影响。在治疗痤疮时,有必要确定痤疮的确切类型。由于人工方法的有效性较低,因此提出了一种采用图像处理技术的计算机自动方法。本研究旨在识别面部痤疮图像中的痤疮类型。使用k均值聚类进行分割,灰度共生矩阵(GLCM)进行特征提取,极限学习机(ELM)进行分类。数据集为100张图像,由3类组成,即结节、丘疹和脓疱。测试分两个阶段进行,即测试2类(结节和丘疹),然后测试3类(结节、丘疹和脓疱)。2类测试的最高准确率为95.24%,3类测试的最高准确率为80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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24 weeks
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