基于网络的高效面部自闭症检测迁移学习技术

Pub Date : 2023-09-10 DOI:10.12694/scpe.v24i3.2233
Tariq Saeed Mian
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引用次数: 0

摘要

自闭症谱系障碍是一种神经障碍,患者在与他人的交流和互动中面临终身影响。如今,自闭症谱系障碍的比例比以往任何时候都急剧增加。自闭症可以在所有发育阶段被认定为一种“行为状况”,其症状通常在两到四岁之间出现。ASD问题始于青春期,并持续到青春期和成年期。患有自闭症谱系障碍的儿童既使用非语言行为也使用语言行为进行交流,他们在集中注意力和社会互惠方面存在困难。由于这些问题,自闭症儿童经常在社会上被孤立。通过非常昂贵和耗时的筛查检查,可以识别自闭症谱系的特征。儿童的面部作为大脑的一种可能的镜子,可以作为一种生物标志物,作为一种快速方便的早期识别ASD的技术。需要一种有效的、真实的、自动的基于人脸的频谱障碍识别方法。在这项研究中,我们比较了用于自闭症识别的迁移学习方法和基于卷积神经网络(CNN)的高效网络策略,使用面部图像识别自闭症儿童。我们使用了一个开源的Kaggle数据集,并从准确性、混淆矩阵、精度、召回率和F1度量方面评估了模型的性能。高效在基准数据集上显示了97%的准确性,并且击败了基于迁移学习方法的基线技术。这项研究可以用来帮助医疗专业人员验证他们的初步筛选程序,以发现患有自闭症的青少年。
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Efficient Net-based Transfer Learning Technique for Facial Autism Detection
Autism Spectrum Disorder is a neurological disorder in which an individual faces life-long effects in communication and interaction with others. Nowadays, the Autism Spectrum disorder ratio is increasing drastically more than ever before. Autism can be identified at all developmental levels as a ”behavioural condition,” and its symptoms often arise between the ages of two and four. The ASD issue starts during puberty and persists through adolescence and adulthood. Children with ASD use both nonverbal and verbal behaviour to communicate, and they struggle with joint attention and social reciprocity. Children with autism are frequently socially isolated as a result of these problems. Through very expensive and time-consuming screening exams, autism spectrum features can be identified. As one of the possible mirrors of the brain, children’s faces can be utilised as a biomarker and as a quick and convenient technique for the early identification of ASD. An effective, genuine, and automatic method of face-based spectrum disorder identification is required. In this study we compare the transfer learning approach used for autism identification with the convolutional neural network (CNN)-based efficient-net strategy to identify autistic children using facial images. We used an open-source Kaggle dataset and evaluated the model performance in terms of accuracy, confusion matrix, precision, recall, and F1 measure. Efficient shows an accuracy of 97% on the benchmark dataset and beats the baseline technique of transfer learning-based approaches. This study can be used to help medical professionals validate their initial screening procedures for finding youngsters with ASD disease.
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