Toward User-Independent Emotion Recognition Using Physiological Signals
Many techniques have been developed to improve the flexibility and the fit of detection models beyond user-dependent models, yet detection tasks continue to be complex and challenging. For emotion, which is known to be highly user-dependent, improvements to the emotion learning algorithm can greatly...
- Autores:
- Tipo de recurso:
- Fecha de publicación:
- 2019
- Institución:
- Universidad de Medellín
- Repositorio:
- Repositorio UDEM
- Idioma:
- eng
- OAI Identifier:
- oai:repository.udem.edu.co:11407/5711
- Acceso en línea:
- http://hdl.handle.net/11407/5711
- Palabra clave:
- Emotion recognition
ensemble learning
multi-dimensional dynamic time warping (MD-DTW)
optimization
physiological signals
Biological systems
Electrocardiography
Electromyography
Learning algorithms
Nearest neighbor search
Optimization
Physiology
Psychology computing
Sensor data fusion
Sensors
Speech recognition
Support vector machines
Biological system modeling
Emotion recognition
Ensemble learning
Multi-dimensional dynamics
Physiological signals
Biomedical signal processing
- Rights
- License
- http://purl.org/coar/access_right/c_16ec
Summary: | Many techniques have been developed to improve the flexibility and the fit of detection models beyond user-dependent models, yet detection tasks continue to be complex and challenging. For emotion, which is known to be highly user-dependent, improvements to the emotion learning algorithm can greatly boost predictive power. Our aim is to improve the accuracy rate of the classifier using peripheral physiological signals. Here, we present a hybrid sensor fusion approach based on a stacking model that allows for data from multiple sensors and emotion models to be jointly embedded within a user-independent model. WMD-DTW, which is a weighted multi-dimensional DTW, and the k-nearest neighbor's algorithm k-NN are used to classify the emotions as a base model. The ensemble methods were used to learn a high-level classifier on top of the two base models. We applied a meta-learning approach to the data set and showed that the ensemble approach outperforms any individual method. We also compared the results using two data sets. Our proposed system achieved an overall accuracies of 65.6% for all users for the E4-data set and 94.0% and 93.6% for recognizing valence and arousal emotions, respectively, using the MAHNOB data set. © 2001-2012 IEEE. |
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