Title :
Classification of Recorded Musical Instruments Sounds Based on Neural Networks
Author :
Ding, Qian ; Zhang, Nian
Author_Institution :
Dept. of Electr. & Comput. Eng., South Dakota Sch. of Mines & Technol., Rapid, SD
Abstract :
Neural networks have found profound success in the area of pattern recognition. The purpose of this paper is to classify automatically musical instrument sounds on the basis of a limited number of parameters. And this involves issues like feature extraction and development of classifier using the obtained features. As for feature extraction, a 5 second audio file stored in WAVE format is passed to a feature extraction function. The feature extraction function calculates more than 20 numerical features both in time-domain and frequency-domain that characterize the sample. Regarding the task of classification, we designed a two-layer feed-forward neural network (FFNN) using back-propagation training algorithm. The FFNN is trained in a supervised manner - the weights are adjusted based on training samples (input-output pairs) that guide the optimization procedure towards an optimum. After training, the neural network is validated by analyzing its response to unknown data in order to evaluate its generalization capabilities. Then, the sequential forward selection method is adopted to choose the best feature set to achieve high classification accuracy. Our goal is mainly to classify the sound into five different musical instrument families, such as the Strings, the Woodwinds and the Brass
Keywords :
audio signal processing; backpropagation; feature extraction; feedforward neural nets; frequency-domain analysis; generalisation (artificial intelligence); mean square error methods; musical instruments; signal classification; time-domain analysis; WAVE format; audio file; backpropagation training; feature extraction; feedforward neural network; frequency domain; generalization; mean-square error; musical instrument sound classification; pattern recognition; sequential forward selection method; time domain; Artificial neural networks; Backpropagation algorithms; Feature extraction; Feedforward neural networks; Feedforward systems; Filters; Frequency estimation; Instruments; Neural networks; Spatial databases; Artificial Neural Networks (ANN); Back-Propagation Training Algorithm; Feature Extraction; Feed-Forward Neural Network (FFNN); Mean-Square Error (MSE); Sequential Forward Selection (SFS);
Conference_Titel :
Computational Intelligence in Image and Signal Processing, 2007. CIISP 2007. IEEE Symposium on
Conference_Location :
Honolulu, HI
Print_ISBN :
1-4244-0707-9
DOI :
10.1109/CIISP.2007.369310