In this paper, a method for pitch independent musical instrument recognition using artificial neural networks is presented. Spectral features including FFT coefficients, harmonic envelopes and cepstral coefficients are used to represent the musical instrument sounds for classification. The effectiveness of these features are compared by testing the performance of ANNs trained with each feature. Multi-layer perceptrons are also compared with Time-delay neural networks. The testing and training sets both consist of fifteen note samples per musical instrument within the chromatic scale from C3 to C6. Both sets consist of nine instruments from the string, brass and woodwind families. Best results were achieved with cepstrum coefficients with a ...
In this paper we will perform a preliminary exploration on how neural networks can be used for the t...
A method for content-based audio classification is presented. In particular we focus on identificati...
This paper describes two neural network architectures for solving problems encountered in the develo...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
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 musical instrument recognition and transcription for piano, guitar, violin is discusse...
Abstract: This paper addresses musical sounds recognition produced by different instrument. Various ...
Non-peer-reviewedThis paper examines the use of a number of auditory features in identifying musica...
In this paper, a system for pitch independent musical instrument recognition is presented. A wide se...
In this paper, a system for pitch independent musical instrument recognition is presented. A wide se...
This paper discusses design and implementation of classifying system for recognition of musical inst...
This paper presents the classification of musical instruments using Mel Frequency Cepstral Coefficie...
A method for content-based audio classification is presented. In particular we focus on identificati...
In this paper we will perform a preliminary exploration on how neural networks can be used for the t...
A method for content-based audio classification is presented. In particular we focus on identificati...
This paper describes two neural network architectures for solving problems encountered in the develo...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
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 musical instrument recognition and transcription for piano, guitar, violin is discusse...
Abstract: This paper addresses musical sounds recognition produced by different instrument. Various ...
Non-peer-reviewedThis paper examines the use of a number of auditory features in identifying musica...
In this paper, a system for pitch independent musical instrument recognition is presented. A wide se...
In this paper, a system for pitch independent musical instrument recognition is presented. A wide se...
This paper discusses design and implementation of classifying system for recognition of musical inst...
This paper presents the classification of musical instruments using Mel Frequency Cepstral Coefficie...
A method for content-based audio classification is presented. In particular we focus on identificati...
In this paper we will perform a preliminary exploration on how neural networks can be used for the t...
A method for content-based audio classification is presented. In particular we focus on identificati...
This paper describes two neural network architectures for solving problems encountered in the develo...