| Literature DB >> 28966730 |
Lian Zhang1, Joshua Wade1, Dayi Bian1, Jing Fan1, Amy Swanson2, Amy Weitlauf3, Zachary Warren3, Nilanjan Sarkar4.
Abstract
Autism Spectrum Disorder (ASD) is a highly prevalent neurodevelopmental disorder with enormous individual and social cost. In this paper, a novel virtual reality (VR)-based driving system was introduced to teach driving skills to adolescents with ASD. This driving system is capable of gathering eye gaze, electroencephalography, and peripheral physiology data in addition to driving performance data. The objective of this paper is to fuse multimodal information to measure cognitive load during driving such that driving tasks can be individualized for optimal skill learning. Individualization of ASD intervention is an important criterion due to the spectrum nature of the disorder. Twenty adolescents with ASD participated in our study and the data collected were used for systematic feature extraction and classification of cognitive loads based on five well-known machine learning methods. Subsequently, three information fusion schemes-feature level fusion, decision level fusion and hybrid level fusion-were explored. Results indicate that multimodal information fusion can be used to measure cognitive load with high accuracy. Such a mechanism is essential since it will allow individualization of driving skill training based on cognitive load, which will facilitate acceptance of this driving system for clinical use and eventual commercialization.Entities:
Keywords: Intelligent tutoring systems; Multi-modal recognition; cognitive models; physiological measures; virtual realities
Year: 2017 PMID: 28966730 PMCID: PMC5614512 DOI: 10.1109/TAFFC.2016.2582490
Source DB: PubMed Journal: IEEE Trans Affect Comput ISSN: 1949-3045 Impact factor: 10.506