Modelling appearance variations in expressive and neutral face image for automatic facial expression recognition

Author:

Kumar H N Naveen1ORCID,M S Guru Prasad2,Asif Shah Mohd345ORCID,Mahadevaswamy 1,B Jagadeesh1,K Sudheesh1

Affiliation:

1. Department of Electronics and Communication Engineering Vidyavardhaka College of Engineering Mysuru Karnataka India

2. Department of Computer Science and Engineering Graphic Era (Deemed to be University) Dehradun India

3. Department of Economics, College of Business and Economics Kebri Dehar University Kebri Dehar Somali Ethiopia

4. Centre of Research Impact and Outcome, Chitkara University Institute of Engineering and Technology Chitkara University Rajpura Punjab India

5. Division of Research and Development Lovely Professional University Phagwara Punjab India

Abstract

AbstractIn automatic facial expression recognition (AFER) systems, modelling the spatio‐temporal feature information in a specific manner, coalescing, and its effective utilization is challenging. The state‐of‐the‐art studies have examined integrating multiple features to enhance the recognition rate of AFER systems. However, the feature variations between expressive and neutral face images are not fully explored to identify the expression class. The proposed research presents an innovative approach to AFER by modelling appearance variations in both expressive and neutral face images. The prominent contributions of the work are developing a novel and hybrid feature space by integrating the discriminative feature distribution derived from expressive and neutral face images; preserving the highly discriminative latent feature distribution using autoencoders. Local binary pattern (LBP) and histogram of oriented gradients (HOG) are the feature descriptors employed to derive the discriminative texture and shape information, respectively. The component‐based approach is employed, wherein the features are derived from the salient facial regions instead of the whole face. The three‐stage stacked deep convolutional autoencoder (SDCA) and multi‐class support vector machine (MSVM) are employed to address dimensionality reduction and classification, respectively. The efficacy of the proposed model is substantiated by empirical findings, which establish its superiority in terms of accuracy in AFER tasks on widely recognized benchmark datasets.

Publisher

Institution of Engineering and Technology (IET)

Reference27 articles.

1. Kumar N.H.N. Patil C.M. Jain A.K. Susheesh K.V. Mahadevaswamy:A comprehensive study on geometric appearance and deep feature based methods for automatic facial expression recognition. In:Proceedings of the 2022 Fourth International Conference on Cognitive Computing and Information Processing (CCIP) pp.1–6.IEEE Piscataway NJ(2022)

2. Durmuolu A. Kahraman Y.:Facial expression recognition using geometric features. In:Proceedings of the International Conference on Systems Signals and Image Processing. pp.1–5.IEEE Piscataway NJ(2016)

3. Action unit classification for facial expression recognition using active learning and SVM

4. Deep Facial Expression Recognition: A Survey

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