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MobileNet Neural Network skin disease detector with Raspberry pi Integrated to Telegram

机译:带Raspberry pi的MobileNet神经网络皮肤疾病检测器集成到Telegram中

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According to Global statistics cancer, one of the skin diseases, accounts for 8.2 million deaths and 14,1 million new diagnosis per year around the globe. An efficient automated approach that can serve the purpose of early referral for skin disease patients is highly needed. A skin disease module which classifies skin cancer lesions has been constructed in this paper. Skin Lesions classified in this module are 7 including Benign Keratosis and Melanoma, classification utilizing machine learning techniques. The skin disease detector employs MobileNet convolutional neural network on Raspberry pi for the classification of skin lesions utilizing the Keras architecture for training. Telegram chat bot is utilized by the user to take a picture and get a prediction output of the input image which can be taken using gadget camera or upload. MobileNet CNN implements the process of Depthwise Separable Convolution which consumes 8–9 times less Computing resources compared to standard convolution. The model achieves top-3 validation accuracy of 0.096 with 0.89 for top-2 accuracy. This Skin disease detector is promising and has the potential of assisting dermatologists in managing the skin disease diagnosis. Furthermore, it will assist ordinary users to pre-access themselves to get the necessary early referral for proper medical attention to diagnose and manage the disease.
机译:根据全球统计数据,癌症是一种皮肤病,每年在全球造成820万人死亡和1410万新诊断。迫切需要一种能够为皮肤病患者提早转诊的有效自动化方法。本文构建了一种将皮肤癌病变分类的皮肤疾病模块。在此模块中分类的皮肤病变为7种,包括良性角化病和黑色素瘤,它们是使用机器学习技术分类的。皮肤疾病检测器在Raspberry pi上采用MobileNet卷积神经网络,利用Keras架构进行训练,对皮肤病变进行分类。用户使用电报聊天机器人拍照并获取输入图像的预测输出,该输出可以使用小工具相机拍摄或上传。 MobileNet CNN实现了深度可分离卷积过程,与标准卷积相比,它消耗的计算资源少8-9倍。该模型的前三名验证精度为0.096,前三名的精度为0.89。这种皮肤病检测器很有前途,并有可能帮助皮肤科医生进行皮肤疾病诊断。此外,它将帮助普通用户预先获取自己的信息,以获取必要的早期转诊,以进行适当的医疗护理,以诊断和治疗该疾病。

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