首页> 外文会议>International conference on computers helping people with special needs >Data Quality as a Bottleneck in Developing a Social-Serious-Game-Based Multi-modal System for Early Screening for 'High Functioning' Cases of Autism Spectrum Condition
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Data Quality as a Bottleneck in Developing a Social-Serious-Game-Based Multi-modal System for Early Screening for 'High Functioning' Cases of Autism Spectrum Condition

机译:数据质量是开发基于社交认真游戏的多模式系统以早期筛查自闭症频谱状况“高功能”案例的瓶颈

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Our aim is to explore raw data quality in the first evaluation of the first fully playable prototype of a social-serious-game-based, multi-modal, interactive software system for screening for high functioning cases of autism spectrum condition at kindergarten age. Data were collected from 10 high functioning children with autism spectrum condition and 10 typically developing children. Mouse and eye-tracking data, and data from automated emotional facial expression recognition were analyzed quantitatively. Results show a sub-optimal level of raw data quality and suggest that it is a bottleneck in developing screening/diagnostic/assessment tools based on multi-mode behavioral data.
机译:我们的目的是在对第一个完全可玩的原型进行首次评估的过程中,探索原始数据的质量,该原型是一个基于社交游戏的,多模式,交互式软件系统,用于筛查幼儿园年龄段自闭症状况良好的病例。数据收集自10名自闭症谱系状况良好的高功能儿童和10名典型的发育中儿童。定量分析了鼠标和眼睛跟踪数据以及来自自动情绪面部表情识别的数据。结果表明原始数据质量欠佳,这表明它是开发基于多模式行为数据的筛查/诊断/评估工具的瓶颈。

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