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Skin Diseases Classification Using Hybrid AI Based Localization Approach

机译:基于混合AI定位方法的皮肤病分类

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摘要

One of the most prevalent diseases that can be initially identified by visual inspection and further identified with the use of dermoscopic examination and other testing is skin cancer. Since eye observation provides the earliest opportunity for artificial intelligence to intercept various skin images, some skin lesion classification algorithms based on deep learning and annotated skin photos display improved outcomes. The researcher used a variety of strategies and methods to identify and stop diseases earlier. All of them yield positive results for identifying and categorizing diseases, but proper disease categorization is still lacking. Computer-aided diagnosis is one of the most crucial methods for more accurate disease detection, although it is rarely used in dermatology. For Feature Extraction, we introduced Spectral Centroid Magnitude (SCM). The given dataset is classified using an enhanced convolutional neural network; the first stage of preprocessing uses a median filter, and the final stage compares the accuracy results to the current method.
机译:皮肤癌是最普遍的疾病之一,最初可以通过目视检查确定,并使用皮肤镜检查和其他检查进一步确定。由于肉眼观察为人工智能拦截各种皮肤图像提供了最早的机会,因此一些基于深度学习和注释皮肤照片的皮肤病变分类算法显示出更好的结果。研究人员使用了各种策略和方法来更早地识别和阻止疾病。它们都对疾病的识别和分类产生了积极的结果,但仍然缺乏适当的疾病分类。计算机辅助诊断是更准确检测疾病的最关键方法之一,尽管它很少用于皮肤病学。对于特征提取,我们引入了光谱质心幅度 (SCM)。使用增强的卷积神经网络对给定的数据集进行分类;预处理的第一阶段使用中值滤波器,最后阶段将精度结果与当前方法进行比较。

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