Title of article :
Improving LNMF Performance of Facial Expression Recognition via Significant Parts Extraction using Shapley Value
Author/Authors :
Derhami, Vali Computer Engineering Department - Faculty of Engineering - Yazd University - Yazd, Iran , Rezaei, Masoumeh Computer Engineering Department - Faculty of Engineering - Yazd University - Yazd, Iran
Abstract :
The non-negative Matrix Factorization (NMF) algorithms have been utilized in a wide range of real
applications. NMF has been used by several researchers for its part-based representation property, especially
in the facial expression recognition problems. It decomposes a face image into its essential parts (e.g. nose,
lips). However, in all the previous attempts, it has been neglected that all features achieved by NMF are not
required for recognition problems. For example, some facial parts do not have any useful information
regarding the facial expression recognition. In this work, addressing the challenge of defining and calculating
the contributions of each part, the Shapley value is used. It is applied for identifying the contribution of each
feature in the classification problem, and then the effectless features are removed. Experiments performed on
the JAFFE and MUG facial expression databases, as benchmarks of facial expression datasets, demonstrate
the effectiveness of our approach
Keywords :
Game Theory , Non-negative Matrix Factorization (NMF) , Shapley Value
Journal title :
Astroparticle Physics