Dermatological Diseases Classification using Image Processing and Deep Neural Network

A. K. Sah, Srijana Bhusal, Sunidhi Amatya, Madhusudan Mainali, S. Shakya
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引用次数: 8

Abstract

Dermatological diseases rate has been increasing for past few decades. Most of these diseases tend to pass on from one person to another and are also based on visual perspectives, the dermatological diseases of one kind found on one part of the body might look different on another part of the body and diseases of different kinds on one part might look similar on other body parts.Therefore, it should be taken into account at initial stages to prevent it from spreading. So, in this paper, we proposed a system to classify such diseases of 10 different classes containing 5500 images obtained from the Dermnet dataset. The proposed system consists of 2 parts- image processing and transfer learning for training of dermatological images. The image processing part deals with image augmentation and removal of unwanted elements, which is found to be necessary before further processing, else it will affect the output efficiency. And transfer learning part deals with features extractions and fine tuning of pre-trained VGG16 model. The validation accuracy is found of be 74.1% and by further fine tuning is found to be 76.3%, when tested on those dataset. The accuracy can be improved further if more training images data are used.
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基于图像处理和深度神经网络的皮肤病分类
近几十年来,皮肤病的发病率呈上升趋势。这些疾病大多会从一个人传染给另一个人,而且也是基于视觉角度,在身体的一个部位发现的一种皮肤病在身体的另一个部位可能看起来不同,而在身体的一个部位发现的不同类型的疾病在其他身体部位可能看起来相似。因此,在初始阶段应考虑到这一点,以防止其蔓延。因此,在本文中,我们提出了一个系统来对这类疾病进行分类,该系统包含了从Dermnet数据集中获得的5500张图像,分为10个不同的类别。该系统由两个部分组成:图像处理和用于皮肤病学图像训练的迁移学习。图像处理部分处理图像增强和去除不需要的元素,这是在进一步处理之前必须的,否则会影响输出效率。迁移学习部分处理预训练的VGG16模型的特征提取和微调。在这些数据集上进行测试时,验证精度为74.1%,进一步微调后的验证精度为76.3%。如果使用更多的训练图像数据,可以进一步提高准确率。
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