Mobile detection of cataracts with an optimised lightweight deep Edge Intelligent technique

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS IET Cyber-Physical Systems: Theory and Applications Pub Date : 2024-01-01 DOI:10.1049/cps2.12083
Dipta Neogi, Mahirul Alam Chowdhury, Mst. Moriom Akter, Md. Ishan Arefin Hossain
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Abstract

Testing the visual field is a valuable diagnostic tool for identifying eye conditions such as cataract, glaucoma, and retinal disease. Its quick and straightforward testing process has become an essential component in our efforts to prevent blindness. Still, the device must be accessible to the general masses. This research has developed a machine learning model that can work with Edge devices like smartphones. As a result, it is opening the opportunity to integrate the disease-detecting model into multiple Edge devices to automate their operation. The authors intend to use convolutional neural network (CNN) and deep learning to deduce which optimisers have the best results when detecting cataracts from live photos of eyes. This is done by comparing different models and optimisers. Using these methods, a reliable model can be obtained that detects cataracts. The proposed TensorFlow Lite model constructed by combining CNN layers and Adam in this study is called Optimised Light Weight Sequential Deep Learning Model (SDLM). SDLM is trained using a smaller number of CNN layers and parameters, which gives SDLM its compatibility, fast execution time, and low memory requirements. The proposed Android app, I-Scan, uses SDLM in the form of TensorFlow Lite for demonstration of the model in Edge devices.

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利用优化的轻量级深度边缘智能技术移动检测白内障
视野测试是识别白内障、青光眼和视网膜疾病等眼部疾病的重要诊断工具。其快速、直接的测试过程已成为我们防盲工作的重要组成部分。不过,该设备必须能够为普通大众所使用。这项研究开发了一种机器学习模型,可与智能手机等边缘设备配合使用。因此,它为将疾病检测模型集成到多个 Edge 设备中实现自动化操作提供了机会。作者打算利用卷积神经网络(CNN)和深度学习来推断出哪种优化器在从眼睛的实时照片中检测白内障时效果最好。这是通过比较不同的模型和优化器来实现的。利用这些方法,可以获得检测白内障的可靠模型。在本研究中,通过结合 CNN 层和亚当构建的 TensorFlow Lite 模型被称为优化轻量级序列深度学习模型(SDLM)。SDLM 使用较少的 CNN 层数和参数进行训练,因此具有兼容性强、执行时间快、内存需求低等特点。拟议的安卓应用程序 I-Scan 使用 TensorFlow Lite 形式的 SDLM,以便在 Edge 设备中演示该模型。
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来源期刊
IET Cyber-Physical Systems: Theory and Applications
IET Cyber-Physical Systems: Theory and Applications Computer Science-Computer Networks and Communications
CiteScore
5.40
自引率
6.70%
发文量
17
审稿时长
19 weeks
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