通过深度特征学习模型和机器学习分类器使用皮肤镜图像进行皮肤病分类

Siddharth Gupta, A. Panwar, Kishor Mishra
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引用次数: 12

摘要

皮肤是人体最重要的器官之一,它帮助调节体温,并负责感觉,触觉,热和冷。如今,皮肤问题在日常生活中很常见。皮肤疾病的原因可能有很多:不平衡和不纯净的饮食,几种类型的污染,或者可能是家庭遗传。然而,如果皮肤病在长期治疗后没有任何改善的迹象或皮肤细胞生长异常,这可能导致皮肤癌。皮肤癌有很多种形式。对于皮肤癌的早期和及时诊断,一种有效的技术是至关重要的。全球有许多人因为诊断晚了而失去了生命。因此,一种成本效益高、速度快、容易获得的技术需要更高的需求。这些天对于图像的分类,机器学习和深度学习技术被证明是最有效的方法。本文采用多幅良恶性肿瘤图像数据集进行预处理。一旦所有的图像都经过预处理,它们就准备好输入几个CNN模型。这些模型提取特征,并将图像传递给几个机器学习分类器,用于将痣分类为良性或恶性。通过使用分类方法验证结果,皮肤科医生可以很容易地发现病变并为患者提供适当的治疗以挽救生命。
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Skin Disease Classification using Dermoscopy Images through Deep Feature Learning Models and Machine Learning Classifiers
Skin is one of the very important and largest organs of the human body that helps in regulating the body temperature and is responsible for sensations such as feel, touch, hot and cold. These days, skin problems are very common in day-to-day life. There may be many reasons for skin diseases: unbalanced and impure diet, several types of pollutions, or maybe family heredity. However, if skin disease after a long treatment does not show any sign of improvement or the skin cells grow abnormally, this may lead to skin cancer. There are many forms of skin cancer. For early and timely diagnosis of skin cancer, an efficient technique is required at utmost importance. Many people across the globe lost their lives due to the late diagnosis. Therefore, a technique that is cost-effective, quicker, and easily accessible needs a higher demand. These days for the classification of images, machine learning, and deep learning techniques proved to be the most efficient approach. In this paper, the dataset of several images of a benign and malignant tumor was taken and pre-processed. Once all the images were pre-processed, they are ready to fed in several CNN models. These models extract the features and pass the images to several machine learning classifiers for the classification of moles as benign or malignant. The results verify by using the classification approach it becomes very much easy for the dermatologist to easily detect the lesions and provide the appropriate treatment to the patient to save the life.
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