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Music Classification based on MFCC Variants and Amplitude Variation Pattern: A Hierarchical Approach

초록

영어

In this work, we have presented a hierarchical scheme for classifying music data. Instead of dealing with large variety of features, proposed scheme relies on MFCC and its variants which are introduced at the different stages to satisfy the need. At the top level music is classified as song (music with voice) and instrumental (music without voice) based on MFCC. Subsequently, instrumental signals and songs are classified based on instrument type and genres respectively. Hierarchical approach has been followed for such detailed categorization. Using two-stage process, instrumental signals are identified as one of the four types namely, string, woodwind, percussion or keyboard. Wavelet and MFCC based features are used for this purpose. For song classification, at first level signals are categorized as classical or non-classical(popular) ones by capturing the MFCC pattern present in the high sub-band of wavelet decomposed signal. At second level, we consider the task of further classification of popular songs into various genres like Pop, Jazz, Bhangra (an Indian genre) based on amplitude variation pattern. RANSAC has been utilized as the classifier at all stages. Experimental result indicates the effectiveness of the proposed schemes.

목차

Abstract
 1. Introduction
 2. Proposed Methodology
  2.1. Computation of Features
  2.2. Classification
 3. Experimental Result
 4. Conclusion
 Acknowledgement
 References

저자정보

  • Arijit Ghosal Institute of Technology and Marine Engg
  • Rudrasis Chakraborty Indian Statistical Institute
  • Bibhas Chandra Dhara Jadavpur University
  • Sanjoy Kumar Saha Jadavpur University

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