追赶iCatcher:比较基于训练有素的人类编码员和iCatcher+自动凝视编码软件的婴儿眼球追踪分析。

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Elena Luchkina, Leah R Simon, Sandra R Waxman
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引用次数: 0

摘要

眼动追踪测量为人类语言认知、感知和社会行为的潜在过程提供了至关重要的见解,在对学龄前婴儿的研究中尤为重要。直到最近,婴儿眼球注视分析要么需要昂贵的角膜反射眼球追踪技术,要么需要劳动密集型的人工注释(编码)。幸运的是,最近开发的基于人工智能的自动注视注释工具iCatcher+有望减少这些费用。要将iCatcher+作为注视注释的主流工具,关键是要确定iCatcher+生成的注释与训练有素的人类编码器生成的注释相比如何。在这里,我们提供了这样一个比较,使用288个视频,这些视频来自一个12个月大的婴儿的单词学习实验。我们评估了这两个注释系统之间的一致性以及使用每个系统识别的效果。我们发现(1)人工编码和iCatcher+注释视频数据之间的一致性非常好(88%),与人类编码器之间的编码间一致性(90%)相当;(2)两种注释系统产生相同的效果模式。这为iCatcher+提供了强有力的保证,证明iCatcher+是手动标注婴儿凝视的可行替代方案,有望提高效率,降低成本,并扩大婴儿眼球追踪的经验基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Catching up with iCatcher: Comparing analyses of infant eye tracking based on trained human coders and iCatcher+ automated gaze coding software.

Eye-tracking measures, which provide crucial insight into the processes underlying human language cognition, perception, and social behavior, are particularly important in research with preverbal infants. Until recently, infant eye-gaze analysis required either expensive corneal-reflection eye-tracking technology or labor-intensive manual annotation (coding). Fortunately, iCatcher+, a recently developed AI-based automated gaze annotation tool, promises to reduce these expenses. To adopt this tool as a mainstream tool for gaze annotation, it is key to determine how annotations produced by iCatcher+ compare to the annotations produced by trained human coders. Here, we provide such a comparison, using 288 videos from a word-learning experiment with 12-month-olds. We evaluate the agreement between these two annotation systems and the effects identified using each system. We find that (1) agreement between human-coded and iCatcher+-annotated video data is excellent (88%) and comparable to intercoder agreement among human coders (90%), and (2) both annotation systems yield the same patterns of effects. This provides strong assurances that iCatcher+ is a viable alternative to manual annotation of infant gaze, one that holds promise for increasing efficiency, reducing the costs, and broadening the empirical base in infant eye-tracking.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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