首页> 外文会议>International conference on computers helping people with special needs >Automated vs Human Recognition of Emotional Facial Expressions of High-Functioning Children with Autism in a Diagnostic-Technological Context: Explorations via a Bottom-Up Approach
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Automated vs Human Recognition of Emotional Facial Expressions of High-Functioning Children with Autism in a Diagnostic-Technological Context: Explorations via a Bottom-Up Approach

机译:诊断技术背景下功能强大的自闭症儿童情绪面部表情的自动识别与人类识别:自下而上的探索

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Early detection of autism spectrum conditions (ASC) is an important goal. Automated facial expression recognition is a promising approach and has implications for assistive and educational technologies, too. This study was an initial exploration of (1) the inter-rater reliability of human recognition of facial emotions of high functioning (HF) children with ASC; (2) the relationship between human and automated recognition of facial emotions; and (3) a 'bottom-up' approach on identifying ASC/typical development (TD) differences, from a screening serious game context. Thirteen HF, kindergarten-age children with ASC and 13 children with TD, matched along age and IQ, participated. Emotion recognition was administered on video-recordings from sessions of their playing with the serious game. Results showed lack of inter-rater reliability in human coding, confirming some advantages of machine coding. The simple bottom-up cross-sectional exploratory analysis did not reveal any ASC/TD difference. This is in contrast with our and others' previous results, indicating such differences when aggregating emotion data from wider time-windows in machine-coded data-sets. This suggests that this second approach may be a more promising one to identify autism-specific emotion expression patterns.
机译:早期发现自闭症谱系状况(ASC)是一个重要的目标。自动化的面部表情识别是一种有前途的方法,对辅助和教育技术也有影响。这项研究是对以下方面的初步探索:(1)人类对ASC高功能(HF)儿童面部表情的认知的相互评价者信度; (2)人与面部表情自动识别之间的关系; (3)一种“自下而上”的方法,通过筛选严肃的游戏环境来识别ASC /典型开发(TD)差异。根据年龄和智商,参加了13例HF,ASC的幼儿园年龄儿童和13 TD的TD儿童。情感识别是在他们玩严肃游戏的过程中对视频记录进行管理的。结果表明,在人工编码中缺乏评估者之间的可靠性,这证实了机器编码的一些优势。简单的自下而上的横截面探索性分析没有揭示任何ASC / TD差异。这与我们和其他人先前的结果相反,表明从机器编码数据集中较宽的时间窗口汇总情感数据时的这种差异。这表明,第二种方法可能是一种更有前途的方法,用于识别自闭症特定的情绪表达模式。

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