Clasificación de escenas acústicas a través de descriptores de audio y máquinas de aprendizaje. Aplicación en escenas de Medellín
In recent years, automatic learning methods have been paired to obtain models for the analysis and classification of audio signals, such as the support vector machines, Ensemble Classifier, among others. These methods present a problem because they are not very understandable in their internal funct...
Autor Principal: | Chica Osorio, Carlos Andrés |
---|---|
Otros Autores: | Yurgaky Valoyes, Dudley |
Formato: | info:eu-repo/semantics/bachelorThesis |
Idioma: | spa |
Publicado: |
Ingenierias
2019
|
Materias: | |
Acceso en línea: |
[1] C. A. Chica Osorio, y D. Yurgaky Valoyes, “Clasificación de escenas acústicas a través de descriptores de audio y máquinas de aprendizaje. Aplicación en escenas de Medellín”, Tesis Ingeniería de Sonido, Universidad de San Buenaventura Medellín, Facultad de Ingenierías, 2019 |
Etiquetas: |
Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
|
Sumario: |
In recent years, automatic learning methods have been paired to obtain models for the analysis and classification of audio signals, such as the support vector machines, Ensemble Classifier, among others. These methods present a problem because they are not very understandable in their internal functioning, since they do not show the user an explanatory structure of how predictions are made and that they are understandable. It is worth mentioning that the models are accurate, but they are not presented properly.
There is not a sound bank of the acoustic scenes of the city, it was necessary to record these outside scenes in the field.
Audio descriptors such as MFCC and Chroma Vector were used to identify the acoustic scenes together with two SVM algorithms and one Ensemble Classifier.
The result was an efficiency rate of 72.22% for the cases of SVM machines (Medium Gaussian and Quadratic), which are satisfactory. On the other hand, the learning machine based on Ensemble Classifier (Boosted Tree) had an Accuracy rate of 55.55%, this being a low performance machine. |
---|