基于人工智能(AI)技术的手语交流器(CASC)特殊需求课堂评估

Samar Mouti, Samer Rihawi
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引用次数: 0

摘要

这项研究的重点是阿拉伯联合酋长国的聋哑学生。在阿拉伯联合酋长国,使用手语交流器(CASC)为特殊需要学生(SN)进行课堂评估的提议是基于人工智能(AI)工具的。本研究为教学评估、学习成果评估和学习环境的发展提供了必要的服务。CASC模型由两个模型组成。第一个模型将语音转换为手语,其中包含语音识别器、手语识别器。第二种模式将手语转换为书面文本。该模型基于手语识别和图像处理工具,在课程结束前提前生成报告,供学生理解和课堂评价。这一模式将对SN学生的成功产生显著的积极影响,并对课堂上的有效授课和优化教与学产生显著的积极影响。该模型的准确率为92%。实时分析学生的反馈可以提供有效的教学策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Special Needs Classroom Assessment Using a Sign Language Communicator (CASC) Based on Artificial Intelligence (AI) Techniques
This research focuses on deaf students in the United Arab Emirates. The proposed classroom assessment using sign language communicator (CASC) for special needs students (SN) in the United Arab Emirates is based on artificial intelligence (AI) tools. This research provides essential services for teaching evaluations, learning outcome assessments, and the development of learning environments. CASC model is composed of two models. The first model converts the speech to a sign language, which contains a speech recognizer, sign language recognizer. The second model converts the sign language to written text. This model generates a report for students' understanding and class evaluation in advance before ending the course based on the sign language recognition and image processing tools. This model will have a significantly positive impact on SN students' success and on effective lecturing and optimizing teaching and learning in the classroom. The accuracy of the model is 92%. The analysis of the student's feedback in real-time provides effective instructional strategies.
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