Elbaum Batya, Perry Lynn K, Messinger Daniel S
Department of Teaching and Learning, University of Miami, 1507 Levante Ave., Coral Gables, FL 33146.
Department of Psychology, University of Miami, 5665 Ponce De Leon Blvd., Coral Gables, FL 33146.
Early Child Res Q. 2024;66:147-156. doi: 10.1016/j.ecresq.2023.10.005. Epub 2023 Oct 13.
New technologies that combine digital sensors with automated processing algorithms are now being deployed to study preschool classrooms. This article provides an overview of these new sensing technologies, focusing on automated speaker classification, the analysis of children's and teachers' speech, and the detection and analysis of their movements over the course of the school day. Findings from recent studies utilizing these technologies are presented to illustrate the contribution of these sensing technologies to our understanding of classroom processes that predict children's language and social development. In particular, the potential to collect extended real-time data on the speech and movement of all children and teachers in a classroom provides a broader window on the variability of individual children's interactions with peers and teachers and their integration into classroom social networks. The article describes current challenges related to the use of sensing technologies in preschool settings, as well as advances that may overcome these challenges and allow for more in-depth investigations of children's early classroom experiences.
如今,将数字传感器与自动化处理算法相结合的新技术正被应用于学前教育课堂研究。本文概述了这些新的传感技术,重点介绍了自动说话者分类、儿童和教师语音分析,以及在学校一天的课程中对他们动作的检测和分析。文中呈现了近期利用这些技术开展的研究结果,以说明这些传感技术对我们理解预测儿童语言和社会发展的课堂过程所做的贡献。特别是,收集课堂上所有儿童和教师语音及动作的扩展实时数据的潜力,为了解个别儿童与同伴和教师互动的变异性以及他们融入课堂社交网络的情况提供了更广阔的视角。本文描述了在学前教育环境中使用传感技术目前面临的挑战,以及可能克服这些挑战并允许对儿童早期课堂体验进行更深入调查的进展。