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Monogenic Riesz wavelet representation for micro-expression recognition

Version 2 2024-06-06, 11:57
Version 1 2015-01-01, 00:00
conference contribution
posted on 2024-06-06, 11:57 authored by YH Oh, AC Le Ngo, J See, ST Liong, RCW Phan, HC Ling
© 2015 IEEE. A monogenic signal is a two-dimensional analytical signal that provides the local information of magnitude, phase, and orientation. While it has been applied on the field of face and expression recognition [1], [2], [3], there are no known usages for subtle facial micro-expressions. In this paper, we propose a feature representation method which succinctly captures these three low-level components at multiple scales. Riesz wavelet transform is employed to obtain multi-scale monogenic wavelets, which are formulated by quaternion representation. Instead of summing up the multi-scale monogenic representations, we consider all monogenic representations across multiple scales as individual features. For classification, two schemes were applied to integrate these multiple feature representations: a fusion-based method which combines the features efficiently and discriminately using the ultra-fast, optimized Multiple Kernel Learning (UFO-MKL) algorithm; and concatenation-based method where the features are combined into a single feature vector and classified by a linear SVM. Experiments carried out on a recent spontaneous micro-expression database demonstrated the capability of the proposed method in outperforming the state-of-the-art monogenic signal approach to solving the micro-expression recognition problem.

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Location

Singapore

Language

eng

Publication classification

E1.1 Full written paper - refereed

Copyright notice

2015, IEEE

Pagination

1237-1241

Start date

2015-07-21

End date

2015-07-24

ISBN-13

9781479980581

Title of proceedings

2015 DSP : Proceedings of the IEEE International Conference on Digital Signal Processing

Event

Digital Signal Processing. International Conference (2015 : Singapore)

Publisher

IEEE

Place of publication

Piscataway, N.J.

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