Abstract

Facial expressions are indispensable in human cognitive behaviors since it can instantly reveal human emotions. Therefore, in this study, Multiple Convolutional Neural Networks using Improved Fuzzy Integral (MCNNs-IFI) were proposed for recognizing facial emotions. Since effective facial expression features are difficult to design; deep learning CNN is used in the study. Each CNN has its own advantages and disadvantages, thus combining multiple CNNs can yield superior results. Moreover, multiple CNNs combined with improved fuzzy integral, in which its fuzzy density value is optimized through particle swarm optimization (PSO), overcomes the majority decision drawback in the traditional voting method. Two Multi-PIE and CK+ databases and three main CNN structures, namely AlexNet, GoogLeNet, and LeNet, were used in the experiments. To verify the results, a cross-validation method was used, and experimental results indicated that the proposed MCNNs-IFI exhibited 12.84% higher accuracy than that of the three CNNs.

Highlights

  • In 2016, when a computer program won the Google DeepMind Challenge, people started having a different understanding of artificial intelligence (AI)

  • To evaluate the proposed MCNNs-IFI method, emotional expressions were used as classification targets, and three convolutional neural network (CNN) were selected for combination, namely LeNet [1], AlexNet [3], and GoogLeNet [4]

  • The proposed MCNNs-IFI was implemented for recognizing facial emotions

Read more

Summary

Introduction

In 2016, when a computer program won the Google DeepMind Challenge, people started having a different understanding of artificial intelligence (AI). AI is no longer just a sci-fi plot in a movie but is being implemented around us. The key technology of AlphaGo is deep learning and it has become more prominent than the original terminology. Deep learning is used in image recognition. More people are investing in convolutional neural network (CNN). The origin of CNN can be traced back to 1998

Objectives
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call