基于SqueezeNet的白内障分类机器学习

Xingzhi Qian, E. Patton, Justin Swaney, Qian Xing, TingyingHelen Zeng
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引用次数: 19

摘要

白内障是一种严重的眼部疾病,全世界有超过2000万人受到影响。它是晶状体的混浊,阻挡了光线通过晶状体投射到视网膜上[1]。因此,神经无法将整个图像传输到大脑,从而导致失明。绝大多数白内障患者是50岁以上的人。为了对晶状体上不同区域的白内障进行分类,我们使用卷积神经网络的监督训练对420张裂隙灯晶状体上的白内障图像进行了训练。该实验可以使白内障的分类更加容易,眼科医生可以在更短的时间内对不同类别的白内障进行手术治疗,从而治愈白内障患者。对于那些在农村的人来说,即使没有经验的医生也可以拍下晶状体的照片,并使用该程序对白内障进行正确的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning on Cataracts Classification Using SqueezeNet
Cataracts is a serious eye disease, affecting over 20 million people worldwide. It is the clouding of the lens, which blocks the light to go through the lens and project on the retina [1]. As a result, the nerve cannot transfer the whole image to the brain, leading to blindness. A vast majority of cataracts patients are people who are over 50 years old. To classify different areas of cataracts in lens, we use supervised training of convolutional neural network to train 420 images of cataracts on the lens taken from slit-lamps. The experiment can make the future of classifying cataracts more easily and ophthalmologists can apply operations to different categories of cataracts within a shorter time to cure patients with cataracts. For those people in the countryside, even not so experienced doctors can take the photo of lens and use the program to classify cataracts correctly.
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