REAL-TIME DETECTIONS OF OPENED-CLOSED EYES USING CONVOLUTIONAL NEURAL NETWORK

F. M. Sigit, Rahmad Syaifudin, D. Suryaningrum
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Abstract

The sleepy condition can affect changing behaviors in the human body, and one part of the human body that gets this effect is the eye; eyes are narrower than in normal conditions, and the frequency of blinking eyes is going to increase when people are sleepy. In this study, we will study the behavior of eyes, opened and closed eyes that the camera can capture in real-time, and tools of image processing that can capture and track eyes. Data images from this treatment are fed into Convolutional Neural Network (CNN) as data learning, so CNN can recognize opened and closed eyes from those eyes. In this study, we will characterize tools of image processing (Haar cascade Method) combined with CNN and their performance to detect opened-closed eyes in real-time detections. In this study, we use two CNN models as a comparison; the first CNN model uses 1 layer with 2 nodes, and the second CNN model uses 2 layers, with the first layer with 500 nodes and the second layer with 2 nodes; the output of each CNN has two targets namely 'open-label eyes and 'close' label eyes. The image dataset contains 20000 eye images, i.e., 10000 'open' eye images and 10000 'close' eye images. The image dataset is trained into two CNNs so that we have two CNN models: the one-layer CNN model and the two-layer CNN model. Each of those models has a pre-trained network. Each pre-trained model CNN is tested to detect opened-eyes and closed-eyes in real time. There are ten different people. For example, in this experiment, each person was subjected to ten trials of 'opening' and 'closing' eye detection and counted successfully detecting and failing to detect; from all the sample people tested, it can be concluded that the percentage was successful in detecting and percentage failed to detect. The Two-layers CNN model has a 55 % success rate in this experiment.  
卷积神经网络睁眼闭眼实时检测
困倦状态会影响人体内不断变化的行为,受到这种影响的一个部位是眼睛;眼睛比正常情况下更窄,当人们困的时候,眨眼的频率会增加。在这项研究中,我们将研究眼睛的行为,相机可以实时捕捉的睁眼和闭眼,以及可以捕捉和跟踪眼睛的图像处理工具。处理后的数据图像作为数据学习输入卷积神经网络(CNN), CNN可以通过这些眼睛识别睁眼和闭眼。在本研究中,我们将描述结合CNN的图像处理工具(Haar级联法)及其在实时检测中检测睁眼和闭眼的性能。在本研究中,我们使用两个CNN模型作为比较;第一个CNN模型使用1层2个节点,第二个CNN模型使用2层,第一层500个节点,第二层2个节点;每个CNN的输出都有两个目标,即“开标签眼”和“闭标签眼”。图像数据集包含20000张眼睛图像,即10000张“睁眼”图像和10000张“闭眼”图像。图像数据集被训练成两个CNN,这样我们就有了两个CNN模型:单层CNN模型和双层CNN模型。每个模型都有一个预先训练好的网络。对每个预训练的模型CNN进行测试,实时检测睁眼和闭眼。有十个不同的人。例如,在这个实验中,每个人都接受了10次“睁开”和“闭上”眼睛检测的试验,并计算成功检测和失败检测的次数;从所有被检测的样本中,可以得出检测成功的百分比和未检测成功的百分比。在本实验中,双层CNN模型的成功率为55%。
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