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End-to-End Classification of Ballroom Dancing Music Using Machine Learning

机译:使用机器学习的宴会厅舞蹈音乐的端到端分类

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The term 'ballroom dancing' refers to a social and competitive type of partnered dance. Competitive ballroom dancing consists of 10 different types of dances performed to specific styles of music unique to each type of dance. There are few algorithms attempting to differentiate between pieces of music and classify them into the categories, making it hard for beginners to identify which dance corresponds to a certain piece of music they may be listening to. In our research, we attempted to use an end-to-end machine learning approach to easily and accurately classify music into the 10 different types of dance. We experimented with four types of machine learning models and received the highest accuracy of 83% using a Deep Neural Network with three hidden layers. With this algorithm, we can facilitate the learning experience of beginner ballroom dancers by aiding them to distinguish between different types of ballroom dancing music.
机译:“舞厅舞蹈”一词是指社会和竞争类型的合作舞蹈。 竞争宴会厅舞蹈由10种不同类型的舞蹈组成,对每种舞蹈的特定音乐风格表达。 很少有算法试图区分音乐曲线并将它们分类为类别,使初学者难以识别哪些舞蹈对应于他们可能正在收听的某个音乐。 在我们的研究中,我们试图使用端到端的机器学习方法轻松准确地将音乐分类为10种不同类型的舞蹈。 我们尝试了四种机器学习模型,并使用具有三个隐藏层的深神经网络接收了83%的最高精度。 通过这种算法,我们可以通过帮助他们区分不同类型的宴会厅舞蹈音乐来促进初学者舞厅舞者的学习经验。

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