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Book ChapterDOI

Stratification of String Instruments Using Chroma-Based Features

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TLDR
The proposed work relies on Chroma-based low-dimensional feature vector to categorize String instruments, which is an octave independent estimation of strength of all possible notes in Western 12 note scale at different points of time.
Abstract
Identification of instrument type from acoustic signal is a challenging issue. It is also an interesting and popular research area having several promising applications in music industry. Researchers have already been able to classify instruments into several broad categories like String, Woodwind, Percussion, and Keyboard etc. using acoustic features like Mel-Frequency Cepstral Coefficients (MFCCs), Zero Crossing Rate (ZCR) etc. MFCC has been found to be excessively used. In this work an alternative acoustic feature of MFCC has been proposed. Chroma is an octave independent estimation of strength of all possible notes in Western 12 note scale at different points of time. Sound envelope originated by a note reflects the signature of an instrument and this can be used to stratify String instruments into various categories. The proposed work relies on Chroma-based low-dimensional feature vector to categorize String instruments. For classification purpose, simple and popular classifiers like Neural Network, k-NN, Naive Bayes’ have been exercised.

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Proceedings ArticleDOI

Smart Carnatic Music Note Identification (CMNI) System using Probabilistic Neural Network

TL;DR: An attempt is made to identify the swaras in Madhya Sthayi and constant Shruthi by using digital signal processing and probabilistic neural-network.
References
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Proceedings ArticleDOI

Chroma Toolbox: MATLAB Implementations for Extracting Variants of Chroma-based Audio Features

TL;DR: A chroma toolbox is presented, which contains MATLAB implementations for extracting various types of recently proposed pitch-based and chroma-based audio features and discusses two example applications showing that the final music analysis result may crucially depend on the initial feature design step.
Journal ArticleDOI

A Study on Feature Analysis for Musical Instrument Classification

TL;DR: There is significant redundancy between and within feature schemes commonly used in practice in practice, suggesting that further feature analysis research is necessary in order to optimize feature selection and achieve better results for the instrument recognition problem.
Journal ArticleDOI

Musical instrument timbres classification with spectral features

TL;DR: In this paper, a set of features is evaluated for recognition of musical instruments out of monophonic musical signals, aiming to achieve a compact representation, the adopted features regard only spectral characteristics of sound and are limited in number.
Journal ArticleDOI

Transcribing Multi-Instrument Polyphonic Music With Hierarchical Eigeninstruments

TL;DR: This paper uses training instruments to learn a set of linear manifolds in model parameter space which are then used during transcription to constrain the properties of models fit to the target mixture to supply the system with prior knowledge at different levels of abstraction.
Journal ArticleDOI

Automatic musical instrument classification using fractional fourier transform based- MFCC features and counter propagation neural network

TL;DR: A novel feature extraction scheme for automatic classification of musical instruments using Fractional Fourier Transform (FrFT)-based Mel Frequency Cepstral Coefficient (MFCC) features that shows significant improvement in classification accuracy and robustness against Additive White Gaussian Noise compared to other conventional features.
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