利用预训练深度学习技术和树莓派(Raspberry Pi)进行眼疾检测的计算机视觉技术

Ali Al-Naji, G. Khalid, Mustafa F. Mahmood, J. Chahl
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摘要

眼疾的早期诊断对于预防视力损伤和指导适当的治疗方法非常重要。本文提出了一种可自动检测多种眼疾的独特方法。最初,这种方法使用预训练的 ImageNet 模型,该模型提供各种预训练模型,用于训练获取的数据。现有的数据集由 645 张临床获取的数据图像组成,分为两组,一组为健康受试者,另一组为患有白内障、异物、青光眼、结膜下出血和病毒性结膜炎等眼部缺陷的受试者。然后比较预训练模型的系数和预测性能。随后,将一流的执行模型集成到树莓派分期和实时数码相机检测中。评估过程使用了混淆矩阵、模型准确率、精确系数、召回系数、F1 分数和马修斯相关系数(MCC)。结果显示,本研究中使用的这些预训练 ImageNet 模型的性能分别为 93%(InceptionResNetV2)、90%(MobileNet)、86%(残差网络 ResNet50)、85%(InceptionV3)、78%(视觉几何组 VGG19)和 72%(神经架构搜索网络 NASNetMobile)。结果表明,InceptionResNetV2 的性能最高。在眼科领域,通过实时监测早期发现受试者不健康的眼睛,显示了这一建议方法的效率和优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer vision for eye diseases detection using pre‐trained deep learning techniques and raspberry Pi
Early diagnosis of eye diseases is very important to prevent visual impairment and guide appropriate treatment methods. This paper presents a unique approach that can detect numerous eye diseases automatically. Initially, this approach used the pre‐trained ImageNet models that provides various pre‐trained models for training the acquired data. The existing data sets are composed of 645 data images acquired clinically, represented by two groups of subjects as healthy and others holding the proposed eye defect like cataracts, foreign bodies, glaucoma, subconjunctival haemorrhage, and viral conjunctivitis. Followed by comparisons of the pre‐trained model's coefficients and prediction performance. Later, the first‐class execution model is integrated within the Raspberry Pi staging and the real‐time digital camera detection. The evaluation process used the confusion matrix, model accuracy, precision factor, recall coefficient, F1 score, and the Matthews Correlation Coefficient (MCC). Resulting in the performance of these pre‐trained ImageNet models used in this study represented by 93% (InceptionResNetV2), 90% (MobileNet), 86% (Residual Network ResNet50), 85% (InceptionV3), 78% (Visual Geometry Group VGG19), and 72% (Neural Architecture Search Network NASNetMobile). The results show that the InceptionResNetV2 achieved the highest performance. This proposed approach shows its efficiency and strength by early detection of the subject's unhealthy eyes through real‐time monitoring in the field of ophthalmology.
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