micai13 turdus migratorius (2)

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Talk given in MICAI 2013: Emotion based features of bird singing for Turdus migratorius identification

TRANSCRIPT

Emotion based features of bird singing for Turdus migratorius identification

Toaki Villarreal, Caleb Rascón and Ivan MezaUniversidad Nacional Autónoma de México

http://golem.iimas.unam.mx/

GrupoGolem

Motivation

● Ecosystems change constantly and with this its inhabitants

● In the case of birds, to understand such changes specialists monitor populations

● Bioacoustics monitors by means of the singing of birds

Challenges

● It is time consuming

● It requires a specialist

● Recording área limited

On the other hand

Automatic emotion recognition in speech has the goal:

With a recording of speech recognise the emotional state of the speaker

Our goal

With a recording of bird singing recognise the bird species

*We are interested in the bird species, not the emotional state of the bird

Proposal

Develop a monitoring system for birds based on what we know for emotion recognition

At this point:

● We focus on Turdus migratorius● It has to be live and had a good performance● Module of Acoustic Identification of Birds

Bird songs

Emotion based: procedure

● Identify a candidate composed by multiple frames (usually turns in a conversation)

● Extract a representation per frame

● Use additive functions to represent the segment as a vector

● Use a classification technique

For the birds

● Energy based sound activity, syllabifier

● Standard MFCC (13 valores), 1st derivation

● Mean, Std. var, 1st, 2nd and 3rd , min, max, skewness, kurtosis

● Support Vector Machine

The system

MIAA

Evaluation performance

Segment based evaluation, recordings with only Turdus migratorius, GS labellings available

Precision 87.49%

Recall 75.15%

F1-score 78.30%

Precision 73.94%

Recall 64.64%

F1-score 67.34%

Syllabifier Classifier

What about other species?

Segment based evaluation, no GSSix species: Turdus rufopalliatus, Myadestes occidentalis, Thryomanes bewickii, Cardinalis cardinalis and Toxostoma curvirostre

Precision 83.23%

Recall 83.23%

F1-score 83.23%

Experiments

Which features are more helpful?

Conclusions

● We were able to identify the Turdus migratorius

● Our approach is inspired by emotion based

identification systems

● We showed that MFCC are good enough

● The module is functional and works live on

the MIAA module

● … lots of future work

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