为科学实践工作设计计算机视觉支持:对科学教师的注意实践和支持偏好的定性调查

IF 3.3 1区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Science Education and Technology Pub Date : 2024-04-18 DOI:10.1007/s10956-024-10116-w
Edwin Chng
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引用次数: 0

摘要

由于教师不断报告课堂管理方面的挑战和实施科学探究方面的困难,目前学校开展科学实践工作的方式表明需要增加教师支持。在这方面,我们可以利用计算机视觉来提供教学支持,使教师不再需要对学生的活动进行琐碎的观察和基本解释。然而,据我们所知,人们对教师在实际工作中的观察实践知之甚少,而且以前也没有对这种计算机视觉系统的支持偏好进行过研究。为此,我们招募了 17 名具有不同教学专长的科学教育工作者,对科学教师的注意实践和支持偏好进行了定性调查。调查结果显示,教师通常会观察七大类和 36 小类学生活动,这使我们能够推导出观察例程,以模拟教师对计算机视觉输入的高质量观察。我们所获得的观察类别清单是首个考虑到科学教师的具体观察实践并适用于各类实际任务的清单。从参与者对计算机视觉模型的排序中,我们进一步了解了教师更喜欢哪类计算机视觉输出作为教学支持。据我们所知,此前还没有研究如此详细地考察过教师的注意与计算机视觉之间的联系。有了这些研究结果,我们就可以根据科学实验室的实际情况和科学教师的喜好,有的放矢地开发计算机视觉,为科学实践工作提供教学支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Designing Computer Vision Support for Science Practical Work: A Qualitative Investigation into the Noticing Practices and Support Preferences of Science Teachers

With teachers continuing to report challenges in classroom management and difficulties in implementing scientific inquiry, the current manner in which science practical work is conducted in schools suggests the need for added teacher support. In this regard, we can leverage computer vision to provide instructional support by relieving teachers of the need to carry out mundane observations and perform basic interpretations of student activity. However, to our knowledge, little is known about the noticing practices of teachers during practical work, and the support preferences of such a computer vision system have not been studied before. To this end, we recruited 17 science educators with different teaching expertise for a qualitative investigation into the noticing practices and support preferences of science teachers. Results revealed seven major categories and 36 minor categories of student activity that teachers typically observe, which enabled us to derive observation routines that can emulate quality teacher noticing for computer vision input. Our obtained list of observation categories represents a first-of-its-kind list which takes into account concrete noticing practices of science teachers and remains applicable across all types of practical tasks. From participants’ ranking of computer vision models, we further understood the type of computer vision output that teachers prefer for instructional support. To our best of knowledge, no prior research has examined the connection between teacher noticing and computer vision in such detail. Using these findings, we can then pursue the development of computer vision for instructional support in science practical work in an informed manner, taking into account the realities of science laboratories and proclivities of science teachers.

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来源期刊
Journal of Science Education and Technology
Journal of Science Education and Technology EDUCATION, SCIENTIFIC DISCIPLINES-
CiteScore
9.40
自引率
4.50%
发文量
45
审稿时长
6-12 weeks
期刊介绍: Journal of Science Education and Technology is an interdisciplinary forum for the publication of original peer-reviewed, contributed and invited research articles of the highest quality that address the intersection of science education and technology with implications for improving and enhancing science education at all levels across the world. Topics covered can be categorized as disciplinary (biology, chemistry, physics, as well as some applications of computer science and engineering, including the processes of learning, teaching and teacher development), technological (hardware, software, deigned and situated environments involving applications characterized as with, through and in), and organizational (legislation, administration, implementation and teacher enhancement). Insofar as technology plays an ever-increasing role in our understanding and development of science disciplines, in the social relationships among people, information and institutions, the journal includes it as a component of science education. The journal provides a stimulating and informative variety of research papers that expand and deepen our theoretical understanding while providing practice and policy based implications in the anticipation that such high-quality work shared among a broad coalition of individuals and groups will facilitate future efforts.
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