RFID系统在特殊教育学校的创新应用

Shu-Hui Yang, Pao-Ann Hsiung
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引用次数: 6

摘要

创新是做某事的新方法。它可能是思想、产品、过程或组织中渐进的、激进的或革命性的变化。发明是一种思想的体现,而创新是思想的成功应用。在这项工作中,我们努力将创新的无线射频识别系统应用于特殊教育学校校园,因为在这个现代科技时代,特殊教育学校仍然存在很大的数字差距,因此他们尚未从无线射频识别等技术进步中受益。在台湾教育部的支持下,我们成功地设计并部署了RFID技术到台湾嘉义一所特殊教育学校的校园。虽然这项技术被应用于八个不同的用例场景,但我们将在这项工作中重点关注五个更具创新性的用例,包括学生体温监测(STM)、体重监测(BWM)、垃圾处理监测(GDM)、拖地课程记录(MCR)和校园访客监测(CVM)。采用主动和被动标签和阅读器在同一校园内实现这五个系统。学生、教师和管理人员从这些系统中获得了三倍的好处。首先,通过STM和BWM系统进行学生健康监测,使教师和管理部门能够实时控制对这些学生产生重大影响的不断变化的健康状况。其次,通过GDM和MCR进行课程监控和记录,使教师能够轻松掌握和调整每个学生的学习曲线,并根据过去的学习努力实施更有针对性的培训。最后但并非最不重要的是,通过CVM校园安全监控允许管理部门监控校园内访客的位置,从而保护学生和老师免受危险或麻烦的访客的侵害。五个系统采用了新颖的技术和创新的方法,包括STM中的温度校正算法、BWM中的基于bmi的权值调整策略、GDM中的多路径跟踪、MCR中的历史分析学习改进和CVM中的人脸检测。该项目已成功部署,目前正在嘉义特殊教育学校使用,该学校有300多名学生和150多名管理人员和教师。
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Innovative Application of RFID Systems to Special Education Schools
Innovation is a new way of doing something. It may be incremental, radical, or revolutionary changes in thinking, products, processes, or organizations. Different from invention, which is an idea made manifest, innovation is ideas applied successfully. In this work, we strive to apply innovative Radio Frequency Identification (RFID) systems to special education school campus because in this modern age of science and technology, there still exists a wide digital gap in special education schools such that they have not yet benefited from technology advancements such as RFID. Supported by the ministry of education in Taiwan, we successfully designed and deployed RFID technology to the campus of a special education school at Chiayi in Taiwan. Though the technology was applied to eight different use case scenarios, we will focus on five of the more innovative ones in this work, including student temperature monitoring (STM), body weight monitoring (BWM), garbage disposal monitoring (GDM), mopping course recording (MCR), and campus visitor monitoring (CVM). Both active and passive tags and readers were employed to implement these five systems within the same campus. The benefits obtained from these systems by the students, teachers, and administrators were three-folds. First, student health monitoring through STM and BWM systems allowed the teachers and administration real-time control over changing health conditions that significantly affects such students. Second, course monitoring and recording through GDM and MCR allowed teachers to easily grasp and tune the learning curve of each student and also to implement a more guided training based on past learning efforts. Last but not least, campus safety monitoring through CVM allowed the administration to monitor the location of visitors in the campus and thus safeguard the students and teachers from dangerous or troublesome visitors. Novel techniques and creative methods were employed in the five systems, including temperature correction algorithm in STM, BMI-based weight tuning strategy in BWM, multiple route-tracking in GDM, learning improvement through history analysis in MCR, and face detection in CVM. The project was successfully deployed and is currently in use by the Chiayi School of Special Education which has more than 300 students and 150 administration staff and faculty.
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