Construction of college music information teaching mode under the background of Internet

IF 3.1 Q1 Mathematics
Li Hai Yan
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引用次数: 0

Abstract

Abstract The traditional music teaching method in the informationization era has been difficult to adapt to the needs of modern teaching and must be reformed in the direction of informationization. In this paper, based on the closure, inflection point and outer enclosing box features of the stroke line element, the recognition of handwritten notes is carried out from the three categories of straight line segments, folded line segments and quadratic curves. Meanwhile, for the binarized music score image, the multi-directional LBP features for spectral line detection are improved, and the computation method of multi-scale spectral line detection LBP features is established. The Manhattan distance is used to evaluate and select the features, which are inputted into XGBoost for classification and recognition training based on the statistical distribution characteristics of the features. Note recognition and spectral line recognition are applied to college music teaching, and the effectiveness of teaching is explored. In the rhythm-recognition path, the recognition teaching based on multi-scale and multi-directional LBP features led to an increase in students’ mastery of the musical score by 2.8 and in the phrasing and segmentation path by 3.5. Informational teaching led to a deepening of students’ mastery of the notes and musical scores.
互联网背景下高校音乐信息化教学模式的构建
传统的音乐教学方法在信息化时代已经难以适应现代教学的需要,必须朝着信息化的方向进行改革。本文基于笔划线元的闭合性、拐点性和外围盒性特征,从直线线段、折叠线段和二次曲线三大类进行手写笔记的识别。同时,针对二值化后的乐谱图像,改进了用于谱线检测的多向LBP特征,建立了多尺度谱线检测LBP特征的计算方法。利用曼哈顿距离对特征进行评价和选择,根据特征的统计分布特征输入到XGBoost中进行分类和识别训练。将音符识别和谱线识别应用于高校音乐教学,并对教学效果进行了探讨。在节奏识别路径中,基于多尺度多方位LBP特征的识别教学使学生对乐谱的掌握提高了2.8分,在乐句和切分路径中提高了3.5分。信息化教学可以加深学生对音符和乐谱的掌握。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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