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Accessing Refractive Errors via Eccentric Infrared Photorefraction Based on Deep Learning

机译:基于深度学习,通过偏心红外光反射效应访问屈光误差

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Eccentric infrared photorefraction is an attractive vision screening method which is widely used for uncooperative subjects, such as infants and toddlers. Unlike conventional slope-based photorefraction, a deep neural network is used to predict refractive error in this study. Total 1216 ocular image were collected by a homemade photorefraction device, whose corresponding refractive error was measured by a commercial autorefractor device, to create a series of dataset for our deep neural network. The mean squared error of the preliminary result is ±0.9 diopter, which indicates its feasibility and can be improved with bigger database.
机译:偏心红外光学缩合是一种有吸引力的视觉筛选方法,广泛用于不合作的受试者,例如婴儿和幼儿。 与常规的基于斜率的光反转一组相比,深神经网络用于预测该研究中的屈光误差。 通过自制的光反弹装置收集总1216个目录,其通过商业自动反式术装置测量相应的屈光误差,为我们的深神经网络创建一系列数据集。 初步结果的平均平方误差是±0.9屈光度,表示其可行性,可以用更大的数据库改进。

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