TY - GEN
T1 - Comparative analysis of multiple kernel learning on learning emotion recognition
AU - Akputu, Oryina Kingsley
AU - Lee, Yunli
AU - Seng, Kah Phooi
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2014
Y1 - 2014
N2 - Local appearance descriptors are widely used on facial emotion recognition tasks. With these descriptors, image filters, such as Gabor wavelet or local binary patterns (LBP) are applied on the whole or specific regions of the face to extract facial appearance changes. But it is also clear that beside feature descriptor; choice of suitable learning method that integrates feature novelty is vital. The multiple kernels learning (MKL) framework reportedly shows promising performances on problems of this nature. However, most MKL studies in object recognition domain provide conflicting reports about recognition performances of MKL. We resolve such conflicts by motivating a comparative analysis of MKL using appearance descriptors for facial emotion recognition-in challenging learning setting. Moreover, we introduce a simulated learning emotion (SLE) dataset for the first time in model performance evaluation. We conclude that given sufficient training elements (examples) with efficient feature descriptor, the rapper methods of Semi-infinite programming MKL (SIP-MKL) and SimpleMKL frameworks are relatively efficient on facial emotion recognition task, compare to other kernel combination schemes. Nevertheless we opine that average MKL performance accuracy, especially on learning facial emotion dataset, remains unsatisfactory (around 56%).
AB - Local appearance descriptors are widely used on facial emotion recognition tasks. With these descriptors, image filters, such as Gabor wavelet or local binary patterns (LBP) are applied on the whole or specific regions of the face to extract facial appearance changes. But it is also clear that beside feature descriptor; choice of suitable learning method that integrates feature novelty is vital. The multiple kernels learning (MKL) framework reportedly shows promising performances on problems of this nature. However, most MKL studies in object recognition domain provide conflicting reports about recognition performances of MKL. We resolve such conflicts by motivating a comparative analysis of MKL using appearance descriptors for facial emotion recognition-in challenging learning setting. Moreover, we introduce a simulated learning emotion (SLE) dataset for the first time in model performance evaluation. We conclude that given sufficient training elements (examples) with efficient feature descriptor, the rapper methods of Semi-infinite programming MKL (SIP-MKL) and SimpleMKL frameworks are relatively efficient on facial emotion recognition task, compare to other kernel combination schemes. Nevertheless we opine that average MKL performance accuracy, especially on learning facial emotion dataset, remains unsatisfactory (around 56%).
KW - appearance discriptor
KW - facial emotion recognition
KW - feature selection
KW - learning emotion dataset
KW - multiple kernel learning
UR - http://www.scopus.com/inward/record.url?scp=84937510558&partnerID=8YFLogxK
U2 - 10.1109/ICIMU.2014.7066659
DO - 10.1109/ICIMU.2014.7066659
M3 - Conference Proceeding
AN - SCOPUS:84937510558
T3 - Conference Proceedings - 6th International Conference on Information Technology and Multimedia at UNITEN: Cultivating Creativity and Enabling Technology Through the Internet of Things, ICIMU 2014
SP - 357
EP - 362
BT - Conference Proceedings - 6th International Conference on Information Technology and Multimedia at UNITEN
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 6th International Conference on Information Technology and Multimedia, ICIMU 2014
Y2 - 18 November 2014 through 20 November 2014
ER -