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Classification of Musical Instruments with Convolutional Neural Networks

机译:卷积神经网络乐器分类

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This paper presents one solution to a problem of classifying musical instruments with convolutional neural networks. Mel frequency cepstral coefficients are used for audio features extraction, and neural network architecture is modelled after the LeNet architecture. During the learning process, Adam optimization is used, along with negative log likelihood loss function. In the end, results are given and it is concluted that this solution has, at least 4% better accuracy on the validation set, than any other published solution.
机译:本文介绍了用卷积神经网络对乐器进行分类问题的一个解决方案。 MEL频率谱系数用于音频特征提取,并且在Lenet架构之后建模神经网络架构。在学习过程中,使用ADAM优化以及负日志似然丢失功能。最终,给出了结果,结果表明,这种解决方案在验证集中具有至少4%的准确性,而不是任何其他发布的解决方案。

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