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A Novel Approach to String Instrument Recognition

机译:串仪器识别的新方法

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摘要

In music information retrieval, identifying instruments has always been a challenging aspect for researchers. The proposed approach offers a simple and novel approach with highly accurate results in identifying instruments belonging to the same class, the string family in particular. The method aims to achieve this objective in an efficient manner, without the inclusion of any complex computations. The feature set developed using frequency and wavelet domain analyses has been employed using different prevalent classification algorithms ranging from the primitive k-NN to the recent Random Forest method. The results are extremely encouraging in all the cases. The best results include achieving an accuracy of 89.85% by SVM and 100% accuracy by Random Forest method for four and three instruments respectively. The major contribution of this work is the achievement of a very high level of accuracy of identification from among the same class of instruments, which has not been reported in existing works. Other significant contributions include the construction of only six features which is a major factor in bringing down the data requirements. The ultimate benefit is a substantial reduction of computational complexity as compared to existing approaches.
机译:在音乐信息检索中,识别仪器对于研究人员来说一直是一个具有挑战性的方面。该方法提供了一种简单而新颖的方法,具有高度准确的结果,在识别属于同一类的仪器,尤其是串口。该方法旨在以有效的方式实现这一目标,而不包含任何复杂的计算。使用频率和小波域分析开发的特征集使用不同的普遍存在分类算法,从基元K-Nn到最近的随机林法。结果在所有情况下都非常令人鼓舞。最佳结果包括分别通过SVM和4个和三种仪器的随机森林方法实现89.85%的准确度和100%的精度。这项工作的主要贡献是在同一类仪器中取得非常高的识别准确性,尚未在现有作品中报告。其他重大贡献包括仅构造仅六种特征,这是降低数据要求的主要因素。与现有方法相比,最终益处是计算复杂性的大幅降​​低。

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