Artificial Intelligence Based Real-Time Skin Cancer Detection

T. Kumar, I. N. Himanshu
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Abstract

Skin cancer emerge as the one of the most dangerous kinds of cancer occurred to human beings. Early detection of skin cancer is curable and necessary treatment can save the patient’s life. There are several types of skin cancer diseases with each having respective characteristics. The traditional way of detecting skin lesion include ABCDET technique which is widely used by the doctors. However manual detection of skin lesion fails in the current era with rapidly increasing skin cancer cases world-wide. Automatic detection of skin lesion is needed to perform the detection faster and minimize the diagnostic errors, lowering the overhead on the doctors. With the advent of different machine learning and deep learning techniques, an intelligent system can be developed to identify the skin lesions accurately. Neural networks are such a deep learning models used for the extraction and classification of skin lesion features. This paper presents a comparative analysis of skin lesion classification using CNN and Random Forest classifiers and real-time simulation of skin cancer detection. The dataset considered is HAM10000 dataset which provides a wide range of images of seven different types of skin lesions. Followed by image preprocessing for denoising and artifacts removal, image segmentation is done using Active Contours Without Edges (ACWE) and feature extraction is done using ABCDT technique where the textural analysis is implemented using Gray Level Co-Occurrence Matrix (GLCM) and Fractal Dimension texture analysis (FDTA). The accuracy with CNN classification is obtained to be 91.97% and that of Random Forest classification is 89.82%. The real-time simulation for skin cancer detection using trained models is performed and CNN model performed well than Random Forest classifier.
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基于人工智能的皮肤癌实时检测
皮肤癌是人类面临的最危险的癌症之一。皮肤癌的早期发现是可以治愈的,必要的治疗可以挽救病人的生命。皮肤癌有几种类型,每种类型都有各自的特点。传统的皮肤病变检测方法包括ABCDET技术,被医生广泛使用。然而,在当今世界范围内皮肤癌病例迅速增加的时代,人工检测皮肤病变是失败的。为了更快地进行检测,最大限度地减少诊断错误,降低医生的开销,需要对皮肤病变进行自动检测。随着不同机器学习和深度学习技术的出现,可以开发智能系统来准确识别皮肤病变。神经网络就是这样一种用于皮肤病变特征提取和分类的深度学习模型。本文采用CNN和Random Forest分类器对皮肤病变进行分类,并对皮肤癌检测的实时仿真进行对比分析。考虑的数据集是HAM10000数据集,该数据集提供了七种不同类型皮肤病变的广泛图像。然后对图像进行去噪和去除伪影的预处理,使用无边缘活动轮廓(ACWE)进行图像分割,使用ABCDT技术进行特征提取,其中使用灰度共生矩阵(GLCM)和分形维纹理分析(FDTA)实现纹理分析。CNN分类的准确率为91.97%,Random Forest分类的准确率为89.82%。利用训练好的模型进行皮肤癌检测的实时仿真,CNN模型的检测效果优于随机森林分类器。
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