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A Multimodal Machine Learning Framework for Teacher Vocal Delivery Evaluation

机译:用于教师声乐交付评估的多模式机器学习框架

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The quality of vocal delivery is one of the key indicators for evaluating teacher enthusiasm, which has been widely accepted to be connected to the overall course qualities. However, existing evaluation for vocal delivery is mainly conducted with manual ratings, which faces two core challenges: subjectivity and time-consuming. In this paper, we present a novel machine learning approach that utilizes pairwise comparisons and a multimodal orthogonal fusing algorithm to generate large-scale objective evaluation results of the teacher vocal delivery in terms of fluency and passion. We collect two datasets from real-world education scenarios and the experiment results demonstrate the effectiveness of our algorithm.
机译:声乐交付的质量是评估教师热情的关键指标之一,已被广泛接受与整体课程质量相关联。 然而,对声乐交付的现有评估主要是用手动评级进行的,这面临两个核心挑战:主观性和耗时。 在本文中,我们提出了一种新颖的机器学习方法,利用成对比较和多模式正交融合算法在流利和激情方面产生教师声带的大规模客观评估结果。 我们从真实的教育场景中收集两个数据集,实验结果展示了我们算法的有效性。

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