在实现神经网络建模的系统中确定糖尿病源性视网膜损伤

Dmytro Prochukhan
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引用次数: 0

摘要

为了确定糖尿病源性视网膜损伤的阶段,应用了机器学习机制。使用DenseNet卷积神经网络的高质量图像识别和分割是有根据的。DenseNet-121、DenseNet-169和DenseNet-201网络通过增加额外的层进行了修改。使用高斯模糊、去除黑帧和最小化图像位置变化对识别质量的影响的图像处理软件机制已经开发出来。建立了模型并进行了训练。获得了较高的识别准确率。对于DenseNet-201网络,获得了97.9%的指标,超过了DenseNet-121和DenseNet-169网络的特征。无花果。: 2。Tabl。: 1. 参考文献。: 13个头衔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuronet modeling in the implementation of the system for determining retinal damage of diabetic origin
In order to determine the stage of retinal damage of diabetic origin, machine learning mechanisms are applied. The use of the DenseNet convolutional neural network for high-quality image recognition and segmentation is substantiated. DenseNet-121, DenseNet-169 and DenseNet-201 networks have been modified by adding additional layers. Software mechanisms for image processing using Gaussian blurring, removal of black frames, and minimization of the influence of image position changes on recognition quality have been developed. The model was built and trained. High rates of recognition accuracy were obtained. For the DenseNet-201 network, an indicator of 97.9% was obtained, which exceeds the characteristics of the DenseNet-121 and DenseNet-169 networks. Figs.: 2. Tabl.: 1. Refs.: 13 titles.
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