通过人脸图像分类快速筛选自闭症谱系障碍儿童

Yuyu Zheng, Leyuan Liu
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引用次数: 1

摘要

自闭症谱系障碍(Autism spectrum disorder, ASD)影响儿童语言、运动和表达能力的发展,对儿童的成长造成极大的不良影响。然而,由于传统方法对儿童监护人的时间和经济要求,自闭症筛查的发生率仍然很低。如果早期发现自闭症的症状,自闭症儿童通常会在有效的医疗干预后恢复正常发育。此外,如果使用深度学习来识别自闭症儿童的面部图像,准确识别自闭症儿童的可能性就会增加。本研究选择Kaggle数据库[1]中的自闭症儿童面部数据集,通过人脸识别模型对发育典型儿童和自闭症儿童进行分类。在模型选择上,VGG19[1]、VGG16[2]、ResNet18[3]、ResNet101[4]、DenseNet161[5]是候选模型。经过训练,在5个模型中,ResNet101和DenseNet161的性能更好,ResNet101在这两个网络中的召回率更高。
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Rapid Screening of Children With Autism Spectrum Disorders Through Face Image Classification
Autism spectrum disorders (ASD) impact the development of children’s language, motor, and expression abilities, causing great adverse effects on children’s growth. The incidence of autism screening is still quite poor, nevertheless, due to the traditional method’s time and financial requirements for child guardians. If symptoms of autism are detected early, children with autism usually return to normal development after effective medical intervention. Furthermore, the likelihood of accurately identifying children with autism grows if deep learning is used to recognize face images of autistic children. In this study, the dataset of autistic children’s faces in the Kaggle database [1] is selected to classify the typically developing children and autistic children through the face recognition model. On model selection, VGG19 [1], VGG16 [2], ResNet18 [3], ResNet101 [4], and DenseNet161 [5] are candidates. After training, among the five models, ResNet101 and DenseNet161 have better performance, and the recall rate of ResNet101 is higher in these two networks.
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