DocumentCode :
1767187
Title :
Compact unsupervised EEG response representation for emotion recognition
Author :
Xiaodan Zhuang ; Rozgic, Viktor ; Crystal, Michael
Author_Institution :
Speech, Language & Multimedia Bus. Unit, Raytheon BBN Technol., Cambridge, MA, USA
fYear :
2014
fDate :
1-4 June 2014
Firstpage :
736
Lastpage :
739
Abstract :
In this work, we propose a compact and un-supervised EEG response representation. Instead of directly extracting features from the whole response, as is commonly done for EEG signal processing, the proposed representation employs segment-level feature extraction and leverages a robust two-part unsupervised generative model to transform the segment-level features to a low-dimensional vector. The proposed method leads to rich and compact representation capability, and robust unsupervised estimation. While some previous work [1] based on segment-level features needs labeled training responses to transforms segment-level features to a response representation, the proposed method produces an EEG response representation in an unsupervised fashion, which can be directly used in various EEG response classification problems. We perform binary classification and regression of emotion dimensions on the DEAP dataset (Dataset for Emotion Analysis using electroencephalogram, Physiological and Video Signals) and demonstrate competitive performances.
Keywords :
data structures; electroencephalography; emotion recognition; feature extraction; medical signal processing; psychology; regression analysis; signal classification; vectors; DEAP dataset; Dataset for Emotion Analysis using electroencephalogram Physiological and Video Signals dataset; EEG response classification problems; EEG signal processing; binary classification; compact unsupervised EEG response representation; direct feature extraction; emotion dimension classification; emotion dimension regression; emotion recognition; labeled training responses; low-dimensional vector; representation capability; robust two-part unsupervised generative model; robust unsupervised estimation; segment-level feature extraction; segment-level feature transformation; Brain modeling; Electroencephalography; Feature extraction; Robustness; Support vector machines; Training; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Biomedical and Health Informatics (BHI), 2014 IEEE-EMBS International Conference on
Conference_Location :
Valencia
Type :
conf
DOI :
10.1109/BHI.2014.6864469
Filename :
6864469
Link To Document :
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