Skin cancer can be identified by dermoscopic examination and ocular inspection, but early detection significantly increases survival chances. Artificial intelligence (AI), using annotated skin images and Convolutional Neural Networks (CNNs), improves diagnostic accuracy. This paper presents an early skin cancer classification method using a soft voting ensemble of CNNs. In this investigation, three benchmark datasets, namely HAM10000, ISIC 2016, and ISIC 2019, were used. The process involved rebalancing, image augmentation, and filtering techniques, followed by a hybrid dual encoder for segmentation via transfer learning. Accurate segmentation focused classification models on clinically significant features, reducing background artifacts and improving accuracy. Classification was performed through an ensemble of MobileNetV2, VGG19, and InceptionV3, balancing accuracy and speed for real-world deployment. The method achieved lesion recognition accuracies of 96.32\%, 90.86\%, and 93.92\% for the three datasets. The system performance was evaluated using established skin lesion detection metrics, yielding impressive results.
翻译:皮肤癌可通过皮肤镜检查和肉眼观察进行识别,但早期检测能显著提高生存率。利用标注皮肤图像和卷积神经网络(CNN)的人工智能(AI)技术可提升诊断准确率。本文提出一种基于CNN软投票集成的早期皮肤癌分类方法。本研究采用HAM10000、ISIC 2016和ISIC 2019三个基准数据集。处理流程包括数据重平衡、图像增强与滤波技术,随后通过迁移学习采用混合双编码器进行分割。精确分割使分类模型聚焦于临床显著特征,减少背景伪影并提升准确率。分类任务通过集成MobileNetV2、VGG19和InceptionV3模型实现,在确保准确率的同时兼顾实时部署速度。该方法在三个数据集上的病变识别准确率分别达到96.32%、90.86%和93.92%。使用成熟的皮肤病变检测指标评估系统性能,取得了令人瞩目的结果。