通过面部分析和视频流促进开放式学习和教育

V. Tam, M. Gupta
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引用次数: 2

摘要

随着大规模在线课程(mooc)和Coursera、edX、Udemy等相关平台的普及,开放学习与教育显然将成为全球教育中一个非常有影响力和重要的领域,特别是对于中国、印度等人口规模庞大、高等教育需求巨大的发展中国家发展知识经济而言。由于开放学习平台上的课程可能会有很大的班级规模,因此很难监控每个人或每个开放学习课程的平均表现,从而可能导致课程结束时相对较高的辍学率。这就是机器学习或学习分析技术等计算智能方法可以帮助有效监控开放学习课程中每个人或小组的表现的地方。在这项工作中,我们提出了一个基于云的个性化学习平台,通过一个非常高效和智能的面部分析算法来增强,以捕捉学习者在移动设备上观看任何开放教育资源(如Ted Talks, YouTube或MERLOT)时的实时反应。在分析学习者的即时反应和注意力持续时间之后,它可能有助于快速识别那些困难和/或不那么有趣的话题。此外,课程教师可以灵活地将互动测验添加到在线教育资源的不同部分,以评估每个学习者的实际理解水平,同时相关的视频文件或课程材料正在从Dropbox云存储传输到学习者的移动设备上。所有关于学习进度的数据将被安全地上传到一个有密码保护的云计算平台上,供进一步分析。此外,云平台确保了各种移动设备在这个新增强的学习分析系统中的互操作性,并收集了一些初步的和积极的学生反馈。这项工作显然为下一代开放学习和教育平台的未来扩展提供了许多有希望的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facilitating the Open Learning and Education through Facial Analytics and Video Streaming
With the popularity of many massive online courses (MOOCs) and relevant platforms such as the Coursera, edX and Udemy, open learning and education will obviously become a very influential and significant sector in education all over the world, especially for developing countries like China and India with large population sizes and huge demands for tertiary education to develop the knowledge-based economy. Due to the potentially large class sizes for courses on an open learning platform, it can be difficult to monitor each individual or averaged performance in each open learning course, thus possibly leading to a relatively higher dropout rate at the end of the course. This is where computationally intelligent methods such as the machine learning or learning analytics techniques may help to effectively monitor each individual or group performance in an open learning course. In this work, we propose a cloud-based and personalized learning platform enhanced by a very efficient and intelligent facial analytics algorithm to capture learners' real-time responses when viewing any open educational resources such as the Ted Talks, YouTube or MERLOT on mobile devices. After analyzing learners' instant responses and attention spans, it may help to quickly identify those difficult and/or less interesting topics. Besides, interactive quizzes can be flexibly added by course instructors into different sections of an online educational resource to evaluate each individual learner's actual level of understanding while relevant video files or course material is being streamed onto the learner's mobile device from the Dropbox cloud storage. All the data about the learning progress will be securely uploaded onto a password-protected cloud computing platform for further analyzes. Furthermore, the cloud platform ensures the interoperability of various mobile devices in this newly enhanced learning analytic system with which some initial and positive students' feedback was collected. This work clearly provides many promising directions for future extensions of the next-generation open learning and education platform.
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