SDASJan 7, 2018

Binning based algorithm for Pitch Detection in Hindustani Classical Music

arXiv:1801.02155v1
Originality Synthesis-oriented
AI Analysis

This work addresses pitch identification for Hindustani Classical Music, but it appears incremental as it builds on existing methods like Pitch Class Distribution with a focus on specific musical features.

The paper tackles pitch detection in Hindustani Classical Music by developing a binning-based algorithm to identify fundamental frequencies, estimating appropriate bin sizes and comparing error ratios with historical tuning models.

Speech coding forms a crucial element in speech communications. An important area concerning it lies in feature extraction which can be used for analyzing Hindustani Classical Music. An important feature in this respect is the fundamental frequency often referred to as the pitch. In this work, the terms pitch and its acoustical sensation, the frequency is used interchangeably. There exists numerous pitch detection algorithms which detect the main/ fundamental frequency in a given musical piece, but we have come up with a unique algorithm for pitch detection using the binning method as described in the paper using appropriate bin size. Previous work on this subject throws light on pitch identification for Hindustani Classical Music. Pitch Class Distribution has been employed in this work. It can be used to identify pitches in Hindustani Classical Music which is based on suitable intonations and swaras. It follows a particular ratio pattern which is a tuning for diatonic scale proposed by Ptolemy and confirmed by Zarlino is explored in this paper. We have also given our estimated of these ratios and compared the error with the above. The error produced by varying the bin size in our algorithm is investigated and an estimate for an appropriate bin size is suggested and tested. The binning algorithm thus helps to segregate the important pitches in a given musical piece.

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