基于k近邻和支持向量机的乐器识别

R. Kothe, D. Bhalke, P. P. Gutal
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引用次数: 3

摘要

在本文中,我们提出了一个使用不同的特征方案来检测和区分单个乐器的模型。所提出的方法考虑了十种乐器。特征提取方案包括时间特征、频谱特征、倒谱特征和小波特征。我们建立了k近邻模型和支持向量机模型来测试系统的性能。我们的系统使用k近邻分类器对所有特征进行识别,达到60.43%的识别率。采用svm - 1对rest和svm - 1对1的双管齐下方法进行多类分类。两种情况下SVM的准确率均为73.73%,所有特征均采用径向基函数。使用权因子法,knn的准确率为73%,而使用指数核函数,SVM的准确率为90.3%。使用权因子法,knn的准确率为73%,而使用指数核函数,SVM的准确率为90.3%。
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Musical instrument recognition using k-nearest neighbour and Support Vector Machine
In this paper, we present a model to detect and distinguish individual musical instrument using different feature schemes. The proposed method considers ten musical instruments. The feature extraction scheme consists of temporal, spectral, cepstral and wavelet features. We developed k-nearest neighbor model and support vector machine model to test the performance of system. Our system achieves the 60.43% of recognition rate using k-nearest neighbor classifier with all features. A two prong approach was taken to the multiclass classification which were SVM-one against rest &SVM-one vs. one. The accuracy of SVM in both cases is 73.73% with all features using radial basis function. Using weight factor method knn shows 73% accuracy while SVM shows 90.3% accuracy using exponential kernel function. Using weight factor method knn shows 73% accuracy while SVM shows 90.3% accuracy using exponential kernel function.
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