Nasirul Mumenin, Mohammad Abu Yousuf, Md Asif Nashiry, A. Azad, S. Alyami, Pietro Lio’, M. Moni
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引用次数: 0
摘要
自闭症谱系障碍(ASD)是一种以社交互动和沟通障碍为特征的慢性疾病。人们希望能及早发现自闭症,因此需要开发诊断辅助工具来帮助实现这一目标。为诊断 ASD,我们开发了一种轻量级内卷积神经网络(INN)架构。与最先进的(SOTA)图像分类模型相比,该模型采用了更简单的架构设计,参数数量更少,所需的计算资源更低。该模型经过训练,可从眼动跟踪扫描路径 (SP)、热图 (HM) 和固定图 (FM) 图像中检测出 ASD。该模型采用蒙特卡洛剔除法(Monte Carlo Dropout)进行不确定性分析,以确保 INN 模型输出的有效性。该模型使用两个可公开访问的数据集进行了训练和评估。从实验中可以看出,该模型在 SP、FM 和 HM 上的准确率分别达到了 98.12%、96.83% 和 97.61%,优于目前的 SOTA 图像分类模型和其他现有的相关工作。
ASDNet: A robust involution‐based architecture for diagnosis of autism spectrum disorder utilising eye‐tracking technology
Autism Spectrum Disorder (ASD) is a chronic condition characterised by impairments in social interaction and communication. Early detection of ASD is desired, and there exists a demand for the development of diagnostic aids to facilitate this. A lightweight Involutional Neural Network (INN) architecture has been developed to diagnose ASD. The model follows a simpler architectural design and has less number of parameters than the state‐of‐the‐art (SOTA) image classification models, requiring lower computational resources. The proposed model is trained to detect ASD from eye‐tracking scanpath (SP), heatmap (HM), and fixation map (FM) images. Monte Carlo Dropout has been applied to the model to perform an uncertainty analysis and ensure the effectiveness of the output provided by the proposed INN model. The model has been trained and evaluated using two publicly accessible datasets. From the experiment, it is seen that the model has achieved 98.12% accuracy, 96.83% accuracy, and 97.61% accuracy on SP, FM, and HM, respectively, which outperforms the current SOTA image classification models and other existing works conducted on this topic.