Analisis Perbandingan Akurasi Pre-Trained Convolutional Neural Network Untuk Klasifikasi Kelompok Usia Pengunjung Rumah Sakit

Arnes Sembiring, Sayuti Rahman, D. Siregar, Muhammad Zen, Suriati Suriati
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Abstract

Children are not allowed to visit the hospital. Children should not visit the hospital for two reasons, namely the patient's side and the child's side. On the patient's side, patients need peace of mind during treatment and recovery. The noise generated by children makes the atmosphere not conducive and increases the patient's stress level. On the child's side, there are two factors, namely immunity, and trauma. Children have incomplete immunity so they are easily infected by viruses and bacteria. A child's immune disorder will harm the child's development. Apart from viruses and bacteria, in hospitals, there are also patients with major injuries such as those resulting from accidents. Children who see these large wounds can traumatize themselves and interfere with the child's growth and development. The age classification of visitors supports for hospital management to limit visitors based on age. Visitors categorized as children are visitors aged 12 years or younger. The method used for age group classification is the pre-trained CNN, including Alexnet, VGGNet, GoogleNet, ResNet, and AqueezeNet. We conducted a preliminary study using the All-Age-Faces (AAF) dataset as test data that represents the age of hospital visitors. The dataset is divided into two classes, namely children and adults. Based on the SqueezeNet test, it is a better method in terms of training accuracy and validation. Based on the order of accuracy validation, SqueezeNet succeeded in recognizing age groups with an accuracy of 93.09%, VGGNet 92.72%, AlexNet 91.44%, GoogleNet 90.92%, and ResNet 90.62%. This research is expected to contribute to helping control visitors to the hospital.
对医院访客年龄分类的前试验性神经混淆网络进行比较
儿童不允许参观医院。孩子不应该去医院,有两个原因,即病人一方和孩子一方。在患者方面,患者在治疗和康复期间需要安心。儿童产生的噪音使气氛不利,增加了病人的压力水平。在儿童方面,有两个因素,即免疫力和创伤。儿童免疫力不完全,容易感染病毒和细菌。孩子的免疫系统紊乱会损害孩子的发育。除了病毒和细菌外,医院里还有严重受伤的病人,例如因事故而受伤的病人。看到这些大伤口的孩子可能会受到创伤,影响孩子的成长和发展。访客的年龄分类支持医院管理根据年龄限制访客。儿童游客是指12岁以下的游客。年龄组分类使用的方法是预训练的CNN,包括Alexnet、VGGNet、GoogleNet、ResNet和AqueezeNet。我们使用全年龄面孔(AAF)数据集作为代表医院访客年龄的测试数据进行了初步研究。数据集分为两类,即儿童和成人。通过对SqueezeNet的测试,该方法在训练精度和验证性方面都是一种较好的方法。根据准确率验证的先后顺序,SqueezeNet识别年龄组的准确率分别为93.09%、92.72%、91.44%、90.92%、90.62%。这项研究有望有助于控制医院的访客。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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