基于扬声器身份分类算法的微电网模式下智能行为分析软件设计

Weijie Guo
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引用次数: 0

摘要

数字技术在教学行为分析微格模式中的智能化程度仍然较低,导致说话者身份分类仍采用传统的人工观察记录阶段,教学行为分析效率也较低。针对上述问题,该研究以师生分析方法为基础,提出了基于一般背景模型高斯混合模型的说话者身份分类双聚类算法,从而实现了智能化行为分析软件的开发设计。研究结果表明,智能行为分析软件对课堂教学话语语料中行为转换点的平均召回率为 89.03%,优于传统分析方法。因此,采用双聚类算法构建的智能行为分析软件具有较高的有效性和实用性。该研究提出了课堂教学行为分析的方法模型,实现了课堂教学行为分析的智能可视化,提高了当前微格教学行为分析的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of intelligent behavior analysis software based on speaker identity classification algorithm in microgrid mode

Digital technology still has a low level of intelligence in the microgrid mode of teaching behavior analysis, resulting in the traditional manual observation and recording stage still being used for speaker identity classification, and the efficiency of teaching behavior analysis is also low. In response to the above issues, the research is based on the teacher-student analysis method and proposes a dual clustering algorithm based on the general background model Gaussian mixture model for speaker identity classification, thereby realizing the development and design of intelligent behavior analysis software. The research results indicate that the average recall rate of behavior transition points in the classroom teaching discourse corpus of the intelligent behavior analysis software is 89.03%, which is better than traditional analysis methods. Therefore, the intelligent behavior analysis software constructed by the dual clustering algorithm has high effectiveness and practicality. The research proposes a method model and implements intelligent visualization for classroom teaching behavior analysis, improving the efficiency of analyzing current microgrid teaching behavior.

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