基于网络的皮肤病分类过程中的 CNN 和 SVM 方法比较

Ahmad Ilham Kushartanto, Fauziah Fauziah, Rima Tamara Aldisa
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引用次数: 0

摘要

皮肤作为人体的最外层,因其最外露的位置而经常与细菌、病菌和病毒接触。根据 2009 年印尼健康概况的统计数据,皮肤病是全国医院门诊中第三大常见疾病。因此,保持皮肤健康非常重要,因为皮肤可以保护身体内部器官免受伤害和病原体的侵袭。图像分类(如皮肤病分类)的发展已成为卫生领域的一个重点。本研究分析了卷积神经网络(CNN)和支持向量机(SVM)在基于网络的皮肤病分类中的性能,并克服了训练数据不平衡的问题。通过数据增强和预处理,本研究提高了数据泛化能力,并比较了召回率、准确率和 F1 分数等性能指标。结果显示,CNN 的平均准确率为 83.8%,而 SVM 则达到 81%。虽然这两种模型对正常类的指标都很高,但其他更复杂的类只能由 CNN 来处理,其值超过 0.9。除此之外,CNN 方法还提供了比 SVM 更高的置信度分数,以及更快的执行时间。总之,根据各种性能测试结果,在基于网络应用的皮肤病分类中,CNN 方法更胜一筹,值得推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of CNN and SVM Methods on Web-based Skin Disease Classification Process
Skin, as the outermost layer of the body, is often in contact with bacteria, germs and viruses because of its most external position. According to statistics from the 2009 Indonesian Health Profile, skin illness is the third most common ailment seen in outpatient settings across the country's hospitals. Therefore, maintaining healthy skin is important because it protects the body's internal organs from injury and attack by pathogens. The development of image classification, such as the classification of skin diseases, has become a focus in the health sector. This research analyses the performance of Convolutional Neural Network (CNN) and Support Vector Machine (SVM) in web-based skin disease classification and overcomes the problem of imbalanced training data. With data augmentation and preprocess, this research improves data generalization and compares performance metrics such as Recall, Accuracy, and F1 Score. The results show that the average accuracy of CNN is 83.8%, while SVM reaches 81%. Although both models have high metrics for the normal class, other more complicated classes can only be handled by CNN with a value of more than 0.9. Apart from that, the CNN method also provides a higher Confidence Score than SVM, as well as a faster execution time. In conclusion, the CNN method is superior and recommended for skin disease classification based on web applications based on various performance test results.
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