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Open AccessJournal ArticleDOI

Intelligent facial emotion recognition using moth-firefly optimization

TLDR
The proposed evolutionary fireflies algorithm exploits the spiral search behaviour of moths and attractiveness search actions of fireflies to mitigate premature convergence of the Levy-flight firefly algorithm (LFA) and the moth-flame optimization (MFO) algorithm.
Abstract
A descriptor combining LBP, LGBP and LBPV is proposed for feature extraction.Moth-firefly optimization is proposed for feature selection.It mitigates premature convergence of FA and MFO algorithms.Simulated Annealing is also used to further improve the most promising solution.It outperforms other optimization and facial expression recognition methods. In this research, we propose a facial expression recognition system with a variant of evolutionary firefly algorithm for feature optimization. First of all, a modified Local Binary Pattern descriptor is proposed to produce an initial discriminative face representation. A variant of the firefly algorithm is proposed to perform feature optimization. The proposed evolutionary firefly algorithm exploits the spiral search behaviour of moths and attractiveness search actions of fireflies to mitigate premature convergence of the Levy-flight firefly algorithm (LFA) and the moth-flame optimization (MFO) algorithm. Specifically, it employs the logarithmic spiral search capability of the moths to increase local exploitation of the fireflies, whereas in comparison with the flames in MFO, the fireflies not only represent the best solutions identified by the moths but also act as the search agents guided by the attractiveness function to increase global exploration. Simulated Annealing embedded with Levy flights is also used to increase exploitation of the most promising solution. Diverse single and ensemble classifiers are implemented for the recognition of seven expressions. Evaluated with frontal-view images extracted from CK+, JAFFE, and MMI, and 45-degree multi-view and 90-degree side-view images from BU-3DFE and MMI, respectively, our system achieves a superior performance, and outperforms other state-of-the-art feature optimization methods and related facial expression recognition models by a significant margin.

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Citations
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Journal ArticleDOI

An efficient chaotic mutative moth-flame-inspired optimizer for global optimization tasks

TL;DR: The proposed CLSGMFO can serve as an effective and efficient computer-aided tool for financial prediction and demonstrate that the proposed learning scheme can offer a superior kernel extreme learning machine model with excellent predictive performance.
Journal ArticleDOI

Intelligent facial emotion recognition based on stationary wavelet entropy and Jaya algorithm

TL;DR: This team proposed a novel intelligent emotion recognition system that used stationary wavelet entropy to extract features, and employed a single hidden layer feedforward neural network as the classifier, and introduced the Jaya algorithm.
Journal ArticleDOI

Grey Wolf optimisation-based feature selection and classification for facial emotion recognition

TL;DR: An effective performance analysis of the proposed as well as the conventional methods such as convolutional neural network, NN-Levenberg-Marquardt, N nN-Gradient Descent, N N-Evolutionary Algorithm, Nn-firefly, and N n-Particle Swarm Optimisation is provided by evaluating few performance measures and thereby, the effectiveness of the suggested strategy over the conventional method is validated.
Journal ArticleDOI

EEG-based emotion recognition using an end-to-end regional-asymmetric convolutional neural network

TL;DR: An end-to-end Regional-Asymmetric Convolutional Neural Network (RACNN) for emotion recognition, which consists of temporal, regional and asymmetric feature extractors, which can capture the discriminative information between left and right hemispheres of the brain.
References
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Journal ArticleDOI

Optimization by Simulated Annealing

TL;DR: There is a deep and useful connection between statistical mechanics and multivariate or combinatorial optimization (finding the minimum of a given function depending on many parameters), and a detailed analogy with annealing in solids provides a framework for optimization of very large and complex systems.
Proceedings ArticleDOI

Particle swarm optimization

TL;DR: A concept for the optimization of nonlinear functions using particle swarm methodology is introduced, and the evolution of several paradigms is outlined, and an implementation of one of the paradigm is discussed.
Book

Adaptation in natural and artificial systems

TL;DR: Names of founding work in the area of Adaptation and modiication, which aims to mimic biological optimization, and some (Non-GA) branches of AI.
Journal ArticleDOI

A comparative study of texture measures with classification based on featured distributions

TL;DR: This paper evaluates the performance both of some texture measures which have been successfully used in various applications and of some new promising approaches proposed recently.
Book

Nature-Inspired Metaheuristic Algorithms

Xin-She Yang
TL;DR: This book reviews and introduces the state-of-the-art nature-inspired metaheuristic algorithms in optimization, including genetic algorithms, bee algorithms, particle swarm optimization, simulated annealing, ant colony optimization, harmony search, and firefly algorithms.
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