Micro-Facial Expression Recognition in Video Based on Optimal Convolutional Neural Network (MFEOCNN) Algorithm
S. D. Lalitha, K. K. Thyagharajan

TL;DR
This paper introduces an optimized convolutional neural network approach for recognizing micro-facial expressions in videos, achieving high accuracy by selecting optimal features with a modified lion optimization algorithm.
Contribution
The novel integration of modified lion optimization for feature selection with CNN for micro-facial expression recognition enhances accuracy and reduces computational time.
Findings
Achieved 99.2% recognition accuracy.
Outperformed existing methods like MFEDRL and CNN+LO.
Reduced false recognition rates.
Abstract
Facial expression is a standout amongst the most imperative features of human emotion recognition. For demonstrating the emotional states facial expressions are utilized by the people. In any case, recognition of facial expressions has persisted a testing and intriguing issue with regards to PC vision. Recognizing the Micro-Facial expression in video sequence is the main objective of the proposed approach. For efficient recognition, the proposed method utilizes the optimal convolution neural network. Here the proposed method considering the input dataset is the CK+ dataset. At first, by means of Adaptive median filtering preprocessing is performed in the input image. From the preprocessed output, the extracted features are Geometric features, Histogram of Oriented Gradients features and Local binary pattern features. The novelty of the proposed method is, with the help of Modified Lion…
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Taxonomy
Methodspc · Convolution
