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Machine learning based classification of violin and viola instrument sounds for the same notes

机译:基于机器学习的小提琴和中提琴声音分类

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In this paper, a study on the classification of violin and viola instrument sounds in the same notes that are hard for people to distinguish is presented. First, 16 statistical features defined in the time and frequency domain for 512 violin note recordings and 512 viola note recordings are extracted. Classification algorithms including Linear Distinction Analysis (LDA), k-nearest neighbors (k-NN), Support Vector Machines (SVM), and Random Forests (RF) classifiers are used to recognize violin and viola instrument sounds. The classification operation is performed on three different sets of features: only time domain features (12), only frequency domain features (4), and both time domain and frequency domain features (16). Simulation results show that the highest accuracy rate is obtained when using the Random Forests classifier with both time and frequency domain attributes. With Random Forest classifier, while obtaining 64.4% classification accuracy with 10 times cross-validity using only time domain and only frequency domain features, 79.6% classification success is achieved with both time and frequency domain features.
机译:本文对难以区分的同一音符中的小提琴和中提琴乐器音的分类进行了研究。首先,提取在时域和频域中为512个小提琴音符记录和512个中提琴音符记录定义的16个统计特征。分类算法包括线性区分分析(LDA),k近邻(k-NN),支持向量机(SVM)和随机森林(RF)分类器,用于识别小提琴和中提琴乐器的声音。对三个不同的特征集执行分类操作:仅时域特征(12),仅频域特征(4)以及时域和频域特征(16)。仿真结果表明,使用同时具有时域和频域属性的随机森林分类器可获得最高的准确率。使用随机森林分类器,在仅使用时域和仅频域特征的情况下,具有10倍交叉有效性的64.4 \%的分类精度,同时在时域和频域特征下均可以实现79.6%的分类成功率。

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