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Computational Approaches to Melodic
Analysis of Indian Art Music
Indian Institute of Sciences, Bengaluru, India 2016
Sankalp Gulati
Music Technology Group, Universitat Pompeu Fabra, Barcelona, Spain
Tonic
Melody
Intonation
Raga
Motifs
Similarity
Melodic
description
Tonic Identification
Tonic Identification
time (s)
Frequency(Hz)
0 1 2 3 4 5 6 7 8
0
1000
2000
3000
4000
5000
100 150 200 250 300
0
0.2
0.4
0.6
0.8
1
Frequency (bins), 1bin=10 cents, Ref=55 Hz
Normalizedsalience
f2
f3
f4
f
5f6
Tonic
Signal processing Learning
q  Tanpura / drone background sound
q  Extent of gamakas on Sa and Pa svara
q  Vadi, sam-vadi svara of the rāga
S. Gulati, A. Bellur, J. Salamon, H. Ranjani, V. Ishwar, H.A. Murthy, and X. Serra. Automatic tonic identification in Indian art music: approaches
and evaluation. Journal of New Music Research, 43(01):55–73, 2014.
Salamon, J., Gulati, S., & Serra, X. (2012). A multipitch approach to tonic identification in Indian classical music. In Proc. of Int. Conf. on Music
Information Retrieval (ISMIR) (pp. 499–504), Porto, Portugal.
Bellur, A., Ishwar, V., Serra, X., & Murthy, H. (2012). A knowledge based signal processing approach to tonic identification in Indian classical music. In 2nd
CompMusic Workshop (pp. 113–118) Istanbul, Turkey.
Ranjani, H. G., Arthi, S., & Sreenivas, T. V. (2011). Carnatic music analysis: Shadja, swara identification and raga verification in Alapana using stochastic
models. Applications of Signal Processing to Audio and Acoustics (WASPAA), IEEE Workshop , 29–32, New Paltz, NY.
Accuracy : ~90% !!!
Tonic Identification
Vignesh Ishwar, Varnam
Tonic Identification
C#
Vignesh Ishwar, Varnam
Melody Extraction
q  Pitch (Fundamental frequency-F0) of the lead
artist
q  Pitch estimation
§  Melodic contour characteristics
§  Dual melodic lines in Indian art music
Signal processing
Learning
Salamon, Justin, and Emilia Gómez. "Melody extraction from polyphonic music signals using pitch contour characteristics." Audio, Speech, and Language
Processing, IEEE Transactions on 20.6 (2012): 1759-1770.
Rao, Vishweshwara, and Preeti Rao. "Vocal melody extraction in the presence of pitched accompaniment in polyphonic music." Audio, Speech, and
Language Processing, IEEE Transactions on 18.8 (2010): 2145-2154.
De Cheveigné, A., & Kawahara, H. (2002). YIN, a fundamental frequency estimator for speech and music. The Journal of the Acoustical Society of America,
111, 1917.
Original Audio
Predominant Voice
Pitch of the Predominant Voice
Loudness and Timbral Facets
Melody
Tonic
Intonation
Motifs
Intonation Analysis
Melody Histogram Computation
Sa
Re
Ga
1s 2s 1s
Sa Re Ga
Time
Svara
Salience
Melody Histogram Computation
50 100 150 200 250 300
0
0.2
0.4
0.6
0.8
1
Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz
Normalizedsalience
Lower Sa
Tonic
middle Sa
Higher Sa
Frequency (cents), fref = tonic frequency
0 120-120
time (s)
10 30
Intonation Analysis
Mohana - G Begada - G
•  Koduri, Gopala Krishna, et al. "Intonation Analysis of Rāgas in Carnatic Music." Journal of New Music Research
43.1 (2014): 72-93.
•  Koduri, Gopala K., Serrà Joan, and Xavier Serra. "Characterization of Intonation in Carnatic Music by
Parametrizing Pitch Histograms." (2012): 199-204.
Motif Discovery and Characterization
Objective
Objective
Approaches for Discovery of Motifs
Melodic Motives
Discovery
Induction
Extraction
Matching
Retrieval
+	
Image	taken	from	-	(Mueen	&	Keogh,	2009)
Approaches for Discovery of Motifs
Melodic Motives
Discovery
Induction
Extraction
Matching
Retrieval
+	
Image	taken	from	-	(Mueen	&	Keogh,	2009)
Melodic Pattern Discovery: Challenges
q  Pitch variation
q  Timing variation
q  Added ornamentation
Time (s)
Frequency(Cent)
10 2 3 4 5 6 7 8 9 10 11 12 13 14 15
0
200
400
600
800
1000
1200
1400
Melodic Pattern Discovery
-Predominant pitch
estimation
-Downsampling
-Hz to Cents
-Tonic normalization
-Brute-force
segmentation
-Segment filtering
-Uniform Time-scaling
Flat Non-flat
Data processing Intra-recording
discovery
Inter-recording
search
Rank-refinement
q  S. Gulati, J. Serrà, V. Ishwar, and X. Serra, “Mining melodic patterns in large audio collections
of Indian art music,” in Int. Conf. on Signal Image Technology & Internet Based Systems -
MIRA, Marrakesh, Morocco, 2014, pp. 264–271.
Data Preprocessing
-Predominant pitch
estimation
-Downsampling
-Hz to Cents
-Tonic normalization
-Brute-force
segmentation
-Segment filtering
-Uniform Time-scaling
Flat Non-flat
q  S. Gulati, J. Serrà, V. Ishwar, and X. Serra, “Mining melodic patterns in large audio collections
of Indian art music,” in Int. Conf. on Signal Image Technology & Internet Based Systems -
MIRA, Marrakesh, Morocco, 2014, pp. 264–271.
Melodic Similarity
q  S. Gulati, J. Serrà and X. Serra, "An Evaluation of Methodologies for Melodic Similarity in
Audio Recordings of Indian Art Music", in Proceedings of IEEE Int. Conf. on Acoustics,
Speech, and Signal Processing (ICASSP), Brisbane, Australia 2015
Melodic Similarity: Distance Measure
q  Dynamic time warping based distance
Discovery and Search Rank refinement
Computational Complexity
q  Lower bounding techniques (DTW)
Rakthanmanon, T., Campana, B., Mueen, A., Batista, G., Westover, B., Zhu, Q., ... & Keogh, E. (2012,
August). Searching and mining trillions of time series subsequences under dynamic time warping. In
Proceedings of the 18th ACM SIGKDD international conference on Knowledge discovery and data
mining (pp. 262-270). ACM.
Image taken from: http://www.cs.ucr.edu/~eamonn/LB_Keogh.htm
Melodic Similarity Improvements
q  S. Gulati, J. Serrà and X. Serra, "Improving Melodic Similarity in Indian Art Music Using
Culture-specific Melodic Characteristics", in International Society for Music Information
Retrieval Conference (ISMIR) , pp. 680-686, Spain, 2015
Demo:
h:p://dunya.compmusic.upf.edu/moDfdiscovery/
Melodic Pattern Network
q  M. EJ Newman, “The structure and function of complex networks,” Society for Industrial and
Applied Mathematics (SIAM) review, vol. 45, no. 2, pp. 167–256, 2003.
Undirectional
Melodic Pattern Network
h:p://dunya.compmusic.upf.edu/pa:ern_network/
Similarity Threshold Estimation
q  M. EJ Newman, “The structure and function of complex networks,” Society for Industrial and Applied
Mathematics (SIAM) review, vol. 45, no. 2, pp. 167–256, 2003.
q  S. Maslov and K. Sneppen, “Specificity and stability in topology of protein networks,” Science, vol. 296, no.
5569, pp. 910– 913, 2002.
Ts
*
Melodic Pattern Characterization
V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,”
Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
Melodic Pattern Characterization
V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,”
Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
Melodic Pattern Characterization
V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,”
Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
Melodic Pattern Characterization
Gamaka	
Rāga	
phrase	
ComposiDon	
phrase	
V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,”
Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
Melodic Pattern Characterization
q  S. Gulati, J. Serrà, V. Ishwar, S. Şentürk and X. Serra, "Discovering Rāga Motifs by
characterizing Communities in Networks of Melodic Patterns", in IEEE Int. Conf. on
Acoustics, Speech, and Signal Processing (ICASSP), pp. 286-290, Shanghai, China, 2016.
Automatic Rāga Recognition
Automatic Rāga Recognition
Training corpus
Rāga recognition
System
Rāga label
Yaman
Shankarabharnam
Todī
Darbari
Kalyan
Bageśrī
Kambhojī
Hamsadhwani
Des
Harikambhoji
Kirvani
Atana
Behag
Kapi
Begada
Rāga Characterization: Svaras
time (s)
10 30
Rāga Characterization: Svaras
time (s)
10 30
Rāga Characterization: Svaras
50 100 150 200 250 300
0
0.2
0.4
0.6
0.8
1
Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz
Normalizedsalience
Lower Sa
Tonic
middle Sa
Higher Sa
Frequency (cents), fref = tonic frequency
0 120-120
q  P. Chordia and S. Şentürk, “Joint recognition of raag and tonic in North Indian music,” Computer Music Journal, vol.
37, no. 3, pp. 82–98, 2013.
q  G. K. Koduri, S. Gulati, P. Rao, and X. Serra, “Rāga recognition based on pitch distribution methods,” Journal of New
Music Research, vol. 41, no. 4, pp. 337–350, 2012.
time (s)
10 30
Rāga Characterization: Intonation
50 100 150 200 250 300
0
0.2
0.4
0.6
0.8
1
Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz
Normalizedsalience
Lower Sa
Tonic
middle Sa
Higher Sa
Frequency (cents), fref = tonic frequency
0 120-120
time (s)
10 30
Rāga Characterization: Intonation
50 100 150 200 250 300
0
0.2
0.4
0.6
0.8
1
Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz
Normalizedsalience
Lower Sa
Tonic
middle Sa
Higher Sa
Frequency (cents), fref = tonic frequency
0 120-120
q  G.K.Koduri,V.Ishwar,J.Serrà,andX.Serra,“Intonation analysis of rāgas in Carnatic music,” Journal of New Music
Research, vol. 43, no. 1, pp. 72–93, 2014.
q  H. G. Ranjani, S. Arthi, and T. V. Sreenivas, “Carnatic music analysis: Shadja, swara identification and raga
verification in alapana using stochastic models,” in IEEE WASPAA, 2011, pp. 29–32.
time (s)
10 30
Rāga Characterization: Ārōh-Avrōh
q  Ascending-descending svara pattern; melodic
progression
time (s)
10 30
time (s)
10 30
Rāga Characterization: Ārōh-Avrōh
q  S. Shetty and K. K. Achary, “Raga mining of indian music by extracting arohana-avarohana pattern,” Int.
Journal of Recent Trends in Engineering, vol. 1, no. 1, pp. 362–366, 2009.
q  V. Kumar, H Pandya, and C. V. Jawahar, “Identifying ragas in indian music,” in 22nd Int. Conf. on Pattern
Recognition (ICPR), 2014, pp. 767–772.
q  P. V. Rajkumar, K. P. Saishankar, and M. John, “Identification of Carnatic raagas using hidden markov
models,” in IEEE 9th Int. Symposium on Applied Machine Intelligence and Informatics (SAMI), 2011, pp.
107–110.
Melodic Progression Templates
N-gram Distribution
Hidden Markov Model
Rāga Characterization: Melodic motifs
time (s)
10 30
time (s)
10 30
Rāga Characterization: Melodic motifs
q  R. Sridhar and T. V. Geetha, “Raga identification of carnatic music for music information retrieval,”
International Journal of Recent Trends in Engineering, vol. 1, no. 1, pp. 571–574, 2009.
q  S. Dutta, S. PV Krishnaraj, and H. A. Murthy, “Raga verification in carnatic music using longest common
segment set,” in Int. Soc. for Music Information Retrieval Conf. (ISMIR), pp. 605-611,2015
Rāga A Rāga B Rāga C
Goal
q  Automatic rāga recognition
Training corpus
Rāga recognition
System
Rāga label
Yaman
Shankarabharnam
Todī
Darbari
Kalyan
Bageśrī
Kambhojī
Hamsadhwani
Des
Harikambhoji
Kirvani
Atana
Behag
Kapi
Begada
Goal
q  Automatic rāga recognition
Training corpus
Rāga recognition
System
Rāga label
time (s)
10
time (s)
10
time (s)
30
time (s)
10
time (s)
10
time (s)
30
time (s
10
time (s)
10
time (s)
30
time
10
time (s
10
time (s)
30
tim
10
time (
10
time (s)
0 30
tim
10
time
10
time (s)
10 30
t
10
tim
10
time (s)
10 30
10
ti
10
time (s)
10 30
1010
time (s)
10 30
1010
time (s)
10 30
1010
time (s)
10 30
1010
time (s)
10 30
1010
time (s)
10 30
1010
time (s)
10 30
1010
time (s)
10 30
Yaman
Shankarabharnam
Todī
Darbari
Kalyan
Bageśrī
Kambhojī
Hamsadhwani
Des
Harikambhoji
Kirvani
Atana
Behag
Kapi
Begada
time (s)
10 30
time (s)
10 30
30
Communities in Pattern Network
Feature Extraction
Feature Extraction
Text/document classification
Phrases
Rāga
Recordings	
Words
Topic
Documents
Feature Extraction
Text/document classification
Term Frequency Inverse
Document Frequency (TF-IDF)
Feature Extraction
Feature Extraction
1 0 4
2 2 0
1 1 0
3 3 3
Classification methodology
q  Experimental setup
§  Stratified 12-fold cross validation (balanced)
§  Repeat experiment 20 times
§  Evaluation measure: mean classification accuracy
q  Classifiers
§  Multinomial, Gaussian and Bernoulli naive Bayes
(NBM, NBG and NBB)
§  SVM with a linear and RBF-kernel, and with a
SGD learning (SVML, SVMR and SGD)
§  logistic regression (LR) and random forest (RF)
Results
phrase
e of a
of oc-
as, we
es that
ile for
re vec-
ument
(2)
(3)
ere the
rdings.
db Mtd Ftr NBM NBB LR SVML 1NN
DB10r¯aga
M
F1 90.6 74 84.1 81.2 -
F2 91.7 73.8 84.8 81.2 -
F3 90.5 74.5 84.3 80.7 -
S1
PCD120 - - - - 82.2
PCDfull - - - - 89.5
S2 PDparam 37.9 11.2 70.1 65.7 -
DB40r¯aga
M
F1 69.6 61.3 55.9 54.6 -
F2 69.6 61.7 55.7 54.3 -
F3 69.5 61.5 55.9 54.5 -
S1
PCD120 - - - - 66.4
PCDfull - - - - 74.1
S2 PDparam 20.8 2.6 51.4 44.2 -
Table 1. Accuracy (in percentage) of different methods (Mtd) for
two datasets (db) using different classifiers and features (Ftr).
the evaluation measure. In order to assess if the difference in the
S.	GulaD,	J.	Serrà,	V.	Ishwar	and	X.	Serra,	"Phrase-based	Rāga	RecogniDon	Using	Vector	
Space	Modelling",	in	IEEE	Int.	Conf.	on	AcousDcs,	Speech,	and	Signal	Processing	(ICASSP),	
pp.	66-70,	Shanghai,	China,	2016.
Tonic
Melody
Intonation
Raga
Motifs
Similarity
Melodic
description
Resources
q  Tonic dataset:
§  http://compmusic.upf.edu/iam-tonic-dataset
q  Rāga dataset:
§  http://compmusic.upf.edu/node/278
q  Demo:
§  http://dunya.compmusic.upf.edu/motifdiscovery/
§  http://dunya.compmusic.upf.edu/pattern_network/
q  CompMusic (Project):
§  http://compmusic.upf.edu/
q  Related datasets:
§  http://compmusic.upf.edu/datasets

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Computational Approaches to Melodic Analysis of Indian Art Music

  • 1. Computational Approaches to Melodic Analysis of Indian Art Music Indian Institute of Sciences, Bengaluru, India 2016 Sankalp Gulati Music Technology Group, Universitat Pompeu Fabra, Barcelona, Spain
  • 4. Tonic Identification time (s) Frequency(Hz) 0 1 2 3 4 5 6 7 8 0 1000 2000 3000 4000 5000 100 150 200 250 300 0 0.2 0.4 0.6 0.8 1 Frequency (bins), 1bin=10 cents, Ref=55 Hz Normalizedsalience f2 f3 f4 f 5f6 Tonic Signal processing Learning q  Tanpura / drone background sound q  Extent of gamakas on Sa and Pa svara q  Vadi, sam-vadi svara of the rāga S. Gulati, A. Bellur, J. Salamon, H. Ranjani, V. Ishwar, H.A. Murthy, and X. Serra. Automatic tonic identification in Indian art music: approaches and evaluation. Journal of New Music Research, 43(01):55–73, 2014. Salamon, J., Gulati, S., & Serra, X. (2012). A multipitch approach to tonic identification in Indian classical music. In Proc. of Int. Conf. on Music Information Retrieval (ISMIR) (pp. 499–504), Porto, Portugal. Bellur, A., Ishwar, V., Serra, X., & Murthy, H. (2012). A knowledge based signal processing approach to tonic identification in Indian classical music. In 2nd CompMusic Workshop (pp. 113–118) Istanbul, Turkey. Ranjani, H. G., Arthi, S., & Sreenivas, T. V. (2011). Carnatic music analysis: Shadja, swara identification and raga verification in Alapana using stochastic models. Applications of Signal Processing to Audio and Acoustics (WASPAA), IEEE Workshop , 29–32, New Paltz, NY. Accuracy : ~90% !!!
  • 8. q  Pitch (Fundamental frequency-F0) of the lead artist q  Pitch estimation §  Melodic contour characteristics §  Dual melodic lines in Indian art music Signal processing Learning Salamon, Justin, and Emilia Gómez. "Melody extraction from polyphonic music signals using pitch contour characteristics." Audio, Speech, and Language Processing, IEEE Transactions on 20.6 (2012): 1759-1770. Rao, Vishweshwara, and Preeti Rao. "Vocal melody extraction in the presence of pitched accompaniment in polyphonic music." Audio, Speech, and Language Processing, IEEE Transactions on 18.8 (2010): 2145-2154. De Cheveigné, A., & Kawahara, H. (2002). YIN, a fundamental frequency estimator for speech and music. The Journal of the Acoustical Society of America, 111, 1917.
  • 11. Pitch of the Predominant Voice
  • 15. Melody Histogram Computation Sa Re Ga 1s 2s 1s Sa Re Ga Time Svara Salience
  • 16. Melody Histogram Computation 50 100 150 200 250 300 0 0.2 0.4 0.6 0.8 1 Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz Normalizedsalience Lower Sa Tonic middle Sa Higher Sa Frequency (cents), fref = tonic frequency 0 120-120 time (s) 10 30
  • 17. Intonation Analysis Mohana - G Begada - G •  Koduri, Gopala Krishna, et al. "Intonation Analysis of Rāgas in Carnatic Music." Journal of New Music Research 43.1 (2014): 72-93. •  Koduri, Gopala K., Serrà Joan, and Xavier Serra. "Characterization of Intonation in Carnatic Music by Parametrizing Pitch Histograms." (2012): 199-204.
  • 18. Motif Discovery and Characterization
  • 21. Approaches for Discovery of Motifs Melodic Motives Discovery Induction Extraction Matching Retrieval + Image taken from - (Mueen & Keogh, 2009)
  • 22. Approaches for Discovery of Motifs Melodic Motives Discovery Induction Extraction Matching Retrieval + Image taken from - (Mueen & Keogh, 2009)
  • 23. Melodic Pattern Discovery: Challenges q  Pitch variation q  Timing variation q  Added ornamentation Time (s) Frequency(Cent) 10 2 3 4 5 6 7 8 9 10 11 12 13 14 15 0 200 400 600 800 1000 1200 1400
  • 24. Melodic Pattern Discovery -Predominant pitch estimation -Downsampling -Hz to Cents -Tonic normalization -Brute-force segmentation -Segment filtering -Uniform Time-scaling Flat Non-flat Data processing Intra-recording discovery Inter-recording search Rank-refinement q  S. Gulati, J. Serrà, V. Ishwar, and X. Serra, “Mining melodic patterns in large audio collections of Indian art music,” in Int. Conf. on Signal Image Technology & Internet Based Systems - MIRA, Marrakesh, Morocco, 2014, pp. 264–271.
  • 25. Data Preprocessing -Predominant pitch estimation -Downsampling -Hz to Cents -Tonic normalization -Brute-force segmentation -Segment filtering -Uniform Time-scaling Flat Non-flat q  S. Gulati, J. Serrà, V. Ishwar, and X. Serra, “Mining melodic patterns in large audio collections of Indian art music,” in Int. Conf. on Signal Image Technology & Internet Based Systems - MIRA, Marrakesh, Morocco, 2014, pp. 264–271.
  • 26. Melodic Similarity q  S. Gulati, J. Serrà and X. Serra, "An Evaluation of Methodologies for Melodic Similarity in Audio Recordings of Indian Art Music", in Proceedings of IEEE Int. Conf. on Acoustics, Speech, and Signal Processing (ICASSP), Brisbane, Australia 2015
  • 27. Melodic Similarity: Distance Measure q  Dynamic time warping based distance Discovery and Search Rank refinement
  • 28. Computational Complexity q  Lower bounding techniques (DTW) Rakthanmanon, T., Campana, B., Mueen, A., Batista, G., Westover, B., Zhu, Q., ... & Keogh, E. (2012, August). Searching and mining trillions of time series subsequences under dynamic time warping. In Proceedings of the 18th ACM SIGKDD international conference on Knowledge discovery and data mining (pp. 262-270). ACM. Image taken from: http://www.cs.ucr.edu/~eamonn/LB_Keogh.htm
  • 29. Melodic Similarity Improvements q  S. Gulati, J. Serrà and X. Serra, "Improving Melodic Similarity in Indian Art Music Using Culture-specific Melodic Characteristics", in International Society for Music Information Retrieval Conference (ISMIR) , pp. 680-686, Spain, 2015
  • 31. Melodic Pattern Network q  M. EJ Newman, “The structure and function of complex networks,” Society for Industrial and Applied Mathematics (SIAM) review, vol. 45, no. 2, pp. 167–256, 2003. Undirectional
  • 33. Similarity Threshold Estimation q  M. EJ Newman, “The structure and function of complex networks,” Society for Industrial and Applied Mathematics (SIAM) review, vol. 45, no. 2, pp. 167–256, 2003. q  S. Maslov and K. Sneppen, “Specificity and stability in topology of protein networks,” Science, vol. 296, no. 5569, pp. 910– 913, 2002. Ts *
  • 34. Melodic Pattern Characterization V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,” Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
  • 35. Melodic Pattern Characterization V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,” Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
  • 36. Melodic Pattern Characterization V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,” Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
  • 37. Melodic Pattern Characterization Gamaka Rāga phrase ComposiDon phrase V. D. Blondel, J. L. Guillaume, R. Lambiotte, and E. Lefebvre, “Fast unfolding of communities in large networks,” Journal of Statistical Mechanics: Theory and Experiment, vol. 2008, no. 10, pp. P10008, 2008.
  • 38. Melodic Pattern Characterization q  S. Gulati, J. Serrà, V. Ishwar, S. Şentürk and X. Serra, "Discovering Rāga Motifs by characterizing Communities in Networks of Melodic Patterns", in IEEE Int. Conf. on Acoustics, Speech, and Signal Processing (ICASSP), pp. 286-290, Shanghai, China, 2016.
  • 40. Automatic Rāga Recognition Training corpus Rāga recognition System Rāga label Yaman Shankarabharnam Todī Darbari Kalyan Bageśrī Kambhojī Hamsadhwani Des Harikambhoji Kirvani Atana Behag Kapi Begada
  • 43. Rāga Characterization: Svaras 50 100 150 200 250 300 0 0.2 0.4 0.6 0.8 1 Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz Normalizedsalience Lower Sa Tonic middle Sa Higher Sa Frequency (cents), fref = tonic frequency 0 120-120 q  P. Chordia and S. Şentürk, “Joint recognition of raag and tonic in North Indian music,” Computer Music Journal, vol. 37, no. 3, pp. 82–98, 2013. q  G. K. Koduri, S. Gulati, P. Rao, and X. Serra, “Rāga recognition based on pitch distribution methods,” Journal of New Music Research, vol. 41, no. 4, pp. 337–350, 2012. time (s) 10 30
  • 44. Rāga Characterization: Intonation 50 100 150 200 250 300 0 0.2 0.4 0.6 0.8 1 Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz Normalizedsalience Lower Sa Tonic middle Sa Higher Sa Frequency (cents), fref = tonic frequency 0 120-120 time (s) 10 30
  • 45. Rāga Characterization: Intonation 50 100 150 200 250 300 0 0.2 0.4 0.6 0.8 1 Frequency (bins), 1 bin = 10 Cents, Ref = 55 Hz Normalizedsalience Lower Sa Tonic middle Sa Higher Sa Frequency (cents), fref = tonic frequency 0 120-120 q  G.K.Koduri,V.Ishwar,J.Serrà,andX.Serra,“Intonation analysis of rāgas in Carnatic music,” Journal of New Music Research, vol. 43, no. 1, pp. 72–93, 2014. q  H. G. Ranjani, S. Arthi, and T. V. Sreenivas, “Carnatic music analysis: Shadja, swara identification and raga verification in alapana using stochastic models,” in IEEE WASPAA, 2011, pp. 29–32. time (s) 10 30
  • 46. Rāga Characterization: Ārōh-Avrōh q  Ascending-descending svara pattern; melodic progression time (s) 10 30
  • 47. time (s) 10 30 Rāga Characterization: Ārōh-Avrōh q  S. Shetty and K. K. Achary, “Raga mining of indian music by extracting arohana-avarohana pattern,” Int. Journal of Recent Trends in Engineering, vol. 1, no. 1, pp. 362–366, 2009. q  V. Kumar, H Pandya, and C. V. Jawahar, “Identifying ragas in indian music,” in 22nd Int. Conf. on Pattern Recognition (ICPR), 2014, pp. 767–772. q  P. V. Rajkumar, K. P. Saishankar, and M. John, “Identification of Carnatic raagas using hidden markov models,” in IEEE 9th Int. Symposium on Applied Machine Intelligence and Informatics (SAMI), 2011, pp. 107–110. Melodic Progression Templates N-gram Distribution Hidden Markov Model
  • 48. Rāga Characterization: Melodic motifs time (s) 10 30
  • 49. time (s) 10 30 Rāga Characterization: Melodic motifs q  R. Sridhar and T. V. Geetha, “Raga identification of carnatic music for music information retrieval,” International Journal of Recent Trends in Engineering, vol. 1, no. 1, pp. 571–574, 2009. q  S. Dutta, S. PV Krishnaraj, and H. A. Murthy, “Raga verification in carnatic music using longest common segment set,” in Int. Soc. for Music Information Retrieval Conf. (ISMIR), pp. 605-611,2015 Rāga A Rāga B Rāga C
  • 50. Goal q  Automatic rāga recognition Training corpus Rāga recognition System Rāga label Yaman Shankarabharnam Todī Darbari Kalyan Bageśrī Kambhojī Hamsadhwani Des Harikambhoji Kirvani Atana Behag Kapi Begada
  • 51. Goal q  Automatic rāga recognition Training corpus Rāga recognition System Rāga label time (s) 10 time (s) 10 time (s) 30 time (s) 10 time (s) 10 time (s) 30 time (s 10 time (s) 10 time (s) 30 time 10 time (s 10 time (s) 30 tim 10 time ( 10 time (s) 0 30 tim 10 time 10 time (s) 10 30 t 10 tim 10 time (s) 10 30 10 ti 10 time (s) 10 30 1010 time (s) 10 30 1010 time (s) 10 30 1010 time (s) 10 30 1010 time (s) 10 30 1010 time (s) 10 30 1010 time (s) 10 30 1010 time (s) 10 30 Yaman Shankarabharnam Todī Darbari Kalyan Bageśrī Kambhojī Hamsadhwani Des Harikambhoji Kirvani Atana Behag Kapi Begada time (s) 10 30 time (s) 10 30 30
  • 55. Feature Extraction Text/document classification Term Frequency Inverse Document Frequency (TF-IDF)
  • 57. Feature Extraction 1 0 4 2 2 0 1 1 0 3 3 3
  • 58. Classification methodology q  Experimental setup §  Stratified 12-fold cross validation (balanced) §  Repeat experiment 20 times §  Evaluation measure: mean classification accuracy q  Classifiers §  Multinomial, Gaussian and Bernoulli naive Bayes (NBM, NBG and NBB) §  SVM with a linear and RBF-kernel, and with a SGD learning (SVML, SVMR and SGD) §  logistic regression (LR) and random forest (RF)
  • 59. Results phrase e of a of oc- as, we es that ile for re vec- ument (2) (3) ere the rdings. db Mtd Ftr NBM NBB LR SVML 1NN DB10r¯aga M F1 90.6 74 84.1 81.2 - F2 91.7 73.8 84.8 81.2 - F3 90.5 74.5 84.3 80.7 - S1 PCD120 - - - - 82.2 PCDfull - - - - 89.5 S2 PDparam 37.9 11.2 70.1 65.7 - DB40r¯aga M F1 69.6 61.3 55.9 54.6 - F2 69.6 61.7 55.7 54.3 - F3 69.5 61.5 55.9 54.5 - S1 PCD120 - - - - 66.4 PCDfull - - - - 74.1 S2 PDparam 20.8 2.6 51.4 44.2 - Table 1. Accuracy (in percentage) of different methods (Mtd) for two datasets (db) using different classifiers and features (Ftr). the evaluation measure. In order to assess if the difference in the S. GulaD, J. Serrà, V. Ishwar and X. Serra, "Phrase-based Rāga RecogniDon Using Vector Space Modelling", in IEEE Int. Conf. on AcousDcs, Speech, and Signal Processing (ICASSP), pp. 66-70, Shanghai, China, 2016.
  • 61. Resources q  Tonic dataset: §  http://compmusic.upf.edu/iam-tonic-dataset q  Rāga dataset: §  http://compmusic.upf.edu/node/278 q  Demo: §  http://dunya.compmusic.upf.edu/motifdiscovery/ §  http://dunya.compmusic.upf.edu/pattern_network/ q  CompMusic (Project): §  http://compmusic.upf.edu/ q  Related datasets: §  http://compmusic.upf.edu/datasets