Multi-modal aggression identification using Convolutional Neural Network and Binary Particle Swarm Optimization

Future Generation Computer Systems - Tập 118 - Trang 187-197 - 2021
Kirti Kumari1, Jyoti Prakash Singh1, Yogesh K. Dwivedi2, Nripendra P. Rana3
1National Institute of Technology Patna, Patna, India
2School of Management, Swansea University, Bay Campus, Swansea, UK
3School of Management, University of Bradford, Bradford, UK

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