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LibROSA Based Assessment Tool for Music Information Retrieval Systems

机译:基于LibROSA的音乐信息检索系统评估工具

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Music is possibly the most impactful bonding over the society and culture. The process of perusing the music in classrooms is considered as a costly affair for the humans in rural areas. Although the tutorials (i.e., video lectures) are usually available for free access in internet, the process of learning and evaluation yet depends on conventional teacher-student affair. So, the need for an automated tool designating the process of analysis cum assessment of music is formulated in the music eternity. This proposed model focuses on providing a solution for this use case exactly where the users can play notes or music pieces on a musical instrument (i.e., piano ) and followed by evaluating their performance against a chosen benchmark audio file, named as 'teacher' file. The technique considers various features such as loudness, tempo, rolloff frequency, kurtosis, skewness and centroid associated with piano for evaluation process. The model emphasizes towards to distinguish the characteristics of different keys and it was achieved with the help of Essentia onset function and LibROSA python package. The evaluation was carried through a set of stages such as normalization of features, pattern matching to extract an effective grading sheet of the played tune (i.e., 'Student' file). The drawbacks such as identification of the sequence of musical tones and noise onsets were avoided using a pattern matching framework, named as REMOVE_NOISY_ONSETS. The performance factor is fixed based on the notes that were missed by the user and the extra notes played by the user. Hence, this technique is of cutting-edge technology in the expertise of music education using technology trends. The proposed tool also helps people, those were deprived of learning the instrument of their choice by giving them an easy-to-use software tool to evaluate themselves and also give a lucid user interface to review their performance.
机译:音乐可能是影响整个社会和文化的最有影响力的纽带。在教室里细读音乐的过程被认为对农村地区的人们来说是一项昂贵的事情。尽管通常可以免费从互联网上免费获得这些教程(即视频讲座),但是学习和评估的过程仍然取决于常规的师生事务。因此,在音乐永恒中提出了一种对指定用于分析和评估音乐的过程的自动化工具的需求。该提议的模型专注于为该用例提供一种解决方案,使用户可以在乐器(例如,钢琴)上弹奏音符或音乐作品,然后根据选定的基准音频文件(称为“教师”文件)评估其性能。 。该技术考虑了与钢琴相关的各种功能,例如响度,速度,滚降频率,峰度,偏度和质心,以进行评估。该模型着重于区分不同键的特征,它是借助Essentia发作功能和LibROSA python软件包实现的。评估是通过一系列阶段进行的,例如特征的归一化,模式匹配以提取所播放曲调的有效评分表(即“学生”文件)。使用名为REMOVE_NOISY_ONSETS的模式匹配框架,可以避免诸如识别音乐音调序列和噪音发作之类的缺点。性能因数是基于用户遗漏的音符和用户演奏的额外音符而固定的。因此,该技术是利用技术趋势在音乐教育专业知识方面的前沿技术。所提出的工具还通过为他们提供易于使用的软件工具来评估自己,并提供清晰的用户界面来评估他们的性能,从而帮助那些被剥夺学习选择工具的人们。

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