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Computer vision in autism spectrum disorder research: a systematic review of published studies from 2009 to 2019

机译:自闭症谱系障碍研究中的计算机愿景:2009年至2019年发布研究的系统审查

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摘要

The current state of computer vision methods applied to autism spectrum disorder (ASD) research has not been well established. Increasing evidence suggests that computer vision techniques have a strong impact on autism research. The primary objective of this systematic review is to examine how computer vision analysis has been useful in ASD diagnosis, therapy and autism research in general. A systematic review of publications indexed on PubMed, IEEE Xplore and ACM Digital Library was conducted from 2009 to 2019. Search terms included [‘autis*’ AND (‘computer vision’ OR ‘behavio* imaging’ OR ‘behavio* analysis’ OR ‘affective computing’)]. Results are reported according to PRISMA statement. A total of 94 studies are included in the analysis. Eligible papers are categorised based on the potential biological/behavioural markers quantified in each study. Then, different computer vision approaches that were employed in the included papers are described. Different publicly available datasets are also reviewed in order to rapidly familiarise researchers with datasets applicable to their field and to accelerate both new behavioural and technological work on autism research. Finally, future research directions are outlined. The findings in this review suggest that computer vision analysis is useful for the quantification of behavioural/biological markers which can further lead to a more objective analysis in autism research.
机译:应用于自闭症谱系障碍(ASD)研究的计算机视觉方法的当前状态尚未得到很好的成熟。越来越多的证据表明计算机视觉技术对自闭症研究产生了强烈影响。该系统审查的主要目标是检查计算机视觉分析在ASD诊断,治疗和自闭症研究中有用。从2009年到2019年进行了对PubMed,IEEE Xplore和ACM数字图书馆进行了系统审查。搜索条款包括['autis *'和('计算机愿景'或'行为*映像'或'行为*分析'或''情感计算')]。结果是根据Prisma陈述报告的。分析中共有94项研究。符合条件的论文根据每项研究中量化的潜在生物/行为标记进行分类。然后,描述了包括在附带的论文中使用的不同计算机视觉方法。还审查了不同的公开可用数据集,以便快速熟悉适用于其领域的数据集的研究人员,并加快自闭症研究的新行为和技术工作。最后,概述了未来的研究方向。该评论中的发现表明,计算机视觉分析对于量化的行为/生物标志物有用,这可以进一步导致自闭症研究的更客观分析。

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