Classification of Ragas Using Psychoacoustic Features and Soft Computational Techniques
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Abstract
Classification of classical melodic structures by style, composer, genre, period, etc., is a
rather complex task. The level of difficulty varies across melodic frameworks. It would be
interesting to see how we can impart this ability to a machine. In this work, the problem
of music classification is taken into consideration with special emphasis on the Raga
classification. The challenges and obstacles in creating an automatic music classification
system are acknowledged and studied. A new approach for clustering melodies in audio
music collections of both western as well as Indian background and its application to
genre classification. A simple yet effective new classification technique Mean Centered
Clustering (MCC) is discussed. The proposed technique maximizes the distance between
difierent clusters and reduces the spread of data in individual clusters. The use of MCC
as a preprocessing technique for conventional classifiers like Artificial Neural Network
(ANN) and Support Vector Machine (SVM) is also demonstrated. It is observed that the
MCC based classifier outperforms the classifiers based on conventional techniques such
as Principal Component Analysis (PCA) and Discrete Cosine Transform (DCT).
Subsequently, this dissertation reports an improved pattern matching technique for composer
and raga classification using a fuzzy analytical hierarchy process-based approach.
The technique makes use of class-specific patterns extracted from a pattern discovery
technique known as Structure Induction Algorithm for r superdiagonals and compactness
trawler. Further, to represent inexact matches a modi ed matching technique is proposed
to assign weights to the exact matching scores in a probabilistic manner. Subsequently,
the weighted scores are fuzzi ed to quantify the extent of match. Finally, the fuzzy scores
are aggregated and classi ed on the basis of minimum Euclidean distance from an ideal
solution in the pattern space.
Finally, the problem of classification of music structures by using different distributions
is taken into consideration. Different popular probability distributions are taken into
consideration for this task. The processing is done in both the time as well as frequency
domain. MFCC coeffcients are used as a basis to apply distribution estimation.
