Development of a Hybrid Swarm Intelligence Convolution Neural Network for Object Detection and Tracking

Authors

  • Kareem, Afiss Emiola Department of Computer Science, Faculty of Natural & Applied Sciences, Lead City University, Ibadan, Oyo State, Nigeria. Author
  • Ajayi, Wumi Department of Computer Science, Faculty of Natural & Applied Sciences, Lead City University, Ibadan, Oyo State, Nigeria. Author

Abstract

In this work, a Hybrid Particle Swarm Optimization Convolution Neural Network (CNN-HPSO) technique was developed to improve computational efficiency in terms of processing time and accuracy for object detection and tracking. The video datasets (MP4 and AVi video formats) used were pre-processed and then segmented. An Enhanced Particle Swarm Optimization (HPSO) was formulated from standard PSO and was applied to Convolution Neural Network (CNN) to form CNN-HPSO technique which was used for object tracking. The work was implemented with CNN-HPSO, CNN-PSO and CNN using MatLab R2016 software. The average results of CNN-HPSO, CNN-PSO and CNN on the videos with MP4 format yielded processing time, and accuracy of 165.89s, 97.08%; 179.52s, 94.25%, and 189.19s, 89.95%, respectively. For the videos in AVi format, CNN-HPSO, CNN-PSO and CNN produced similar average results with processing time and accuracy of 185.09s, 96.62%; 198.24s, 94.83%; and 216.59s, 91.30%, respectively. The findings revealed that the developed technique was highly computational efficient in terms of processing time and accuracy and can be used for solving other related optimization problems.

Keywords:

Deep Learning Algorithms, Computer Vision, Moving Objects, Video Frame, Object Segmentation

Downloads

Download data is not yet available.

Downloads

Identifier

Article Stats

Viewed: 267 times
Downloaded: 55 times

Published

2024-02-29

Issue

Section

Articles

How to Cite

Kareem, Afiss Emiola, & Ajayi, Wumi. (2024). Development of a Hybrid Swarm Intelligence Convolution Neural Network for Object Detection and Tracking. Journal of African Resilience and Advancement Research, 3(2). https://hummingbirdjournals.com/jarar/article/view/123

Share

PlumX

Most read articles by the same author(s)

1 2 3 4 5 6 7 8 > >>