This paper addresses musical sounds recognition produced by different instrument and focus on classification of instrument tones. Architecture of back-propagation and networks are applied as classifiers. The discrete Fourier transform vectors, mean, and variance extracted from each segment are used as parameters. The Music Instrument Sample Database (UIOWA) is used for this experiment. The number of instrument is 14. We use 16 different structures of neural networks for recognition these instruments and compare the results. Ezzaidi Hassan [1] obtained SR(14)=12/14 by MLP with 60, 120, and 240 units in the middle layer without impacting of training data set. We obtain SR(14)=13/14 using a different way for analyzing the music sounds.Computer...
The development of computer algorithms for music instrument identification and parameter extraction...
A method for content-based audio classification is presented. In particular we focus on identificati...
A method for content-based audio classification is presented. In particular we focus on identificati...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
Abstract: This paper addresses musical sounds recognition produced by different instrument. Various ...
In this paper an automated method to recognize the musical instruments playing the musical signals i...
In this paper an automated method to recognize the musical instruments playing the musical signals i...
In this paper, a method for pitch independent musical instrument recognition using artificial neural...
This paper discusses design and implementation of classifying system for recognition of musical inst...
In this paper musical instrument recognition and transcription for piano, guitar, violin is discusse...
This paper describes two neural network architectures for solving problems encountered in the develo...
Non-peer-reviewedThis paper examines the use of a number of auditory features in identifying musica...
The aim of this work was to investigate in what ways digitized music is analyzed and to determine wh...
A timbre classification system based on auditory processing and Kohonen self organizing neural netwo...
This paper is brief research on how to identify the audio instruments using machine learning. Algori...
The development of computer algorithms for music instrument identification and parameter extraction...
A method for content-based audio classification is presented. In particular we focus on identificati...
A method for content-based audio classification is presented. In particular we focus on identificati...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
Abstract: This paper addresses musical sounds recognition produced by different instrument. Various ...
In this paper an automated method to recognize the musical instruments playing the musical signals i...
In this paper an automated method to recognize the musical instruments playing the musical signals i...
In this paper, a method for pitch independent musical instrument recognition using artificial neural...
This paper discusses design and implementation of classifying system for recognition of musical inst...
In this paper musical instrument recognition and transcription for piano, guitar, violin is discusse...
This paper describes two neural network architectures for solving problems encountered in the develo...
Non-peer-reviewedThis paper examines the use of a number of auditory features in identifying musica...
The aim of this work was to investigate in what ways digitized music is analyzed and to determine wh...
A timbre classification system based on auditory processing and Kohonen self organizing neural netwo...
This paper is brief research on how to identify the audio instruments using machine learning. Algori...
The development of computer algorithms for music instrument identification and parameter extraction...
A method for content-based audio classification is presented. In particular we focus on identificati...
A method for content-based audio classification is presented. In particular we focus on identificati...