Face recognition technology for video surveillance integrated with particle swarm optimization algorithm

With the rapid development of video surveillance technology, face recognition has become an important security and surveillance tool. To improve the accuracy and applicability of face recognition in video surveillance, this study improved the Inertia Weight (IW) and Learning Factor (LF) based on the...

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Main Author: You Qian
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2024-01-01
Series:International Journal of Intelligent Networks
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666603024000149
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author You Qian
author_facet You Qian
author_sort You Qian
collection DOAJ
description With the rapid development of video surveillance technology, face recognition has become an important security and surveillance tool. To improve the accuracy and applicability of face recognition in video surveillance, this study improved the Inertia Weight (IW) and Learning Factor (LF) based on the Particle Swarm Optimization (PSO) algorithm. Support Vector Machine (SVM) algorithm and Local Binary Mode (LBP) were used to optimize the processing. The results showed that the optimal solution could be obtained after 10 iterations, and the recognition accuracy reached 92.3%. When the number of iterations reached 40, the recognition accuracy inertia weight reached 99.7%. The average operating time of the original PSO algorithm and the optimized PSO algorithm was 26.3 s and 24.7 s, respectively. This shows that the optimization algorithm not only improves the recognition accuracy, but also shortens the operation time, and enhances the convergence performance and robustness to varying degrees. The improved model can improve the recognition rate of video surveillance system, indicating that the optimization algorithm has great application potential in the video surveillance face recognition.
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spelling doaj.art-c257ca936edd4a94aeb89b88c0d981092024-03-06T05:28:52ZengKeAi Communications Co., Ltd.International Journal of Intelligent Networks2666-60302024-01-015145153Face recognition technology for video surveillance integrated with particle swarm optimization algorithmYou Qian0School of IFLYTEK Data Science, Chongqing City Vocational College, Yongchuan, Chongqing, 402160, ChinaWith the rapid development of video surveillance technology, face recognition has become an important security and surveillance tool. To improve the accuracy and applicability of face recognition in video surveillance, this study improved the Inertia Weight (IW) and Learning Factor (LF) based on the Particle Swarm Optimization (PSO) algorithm. Support Vector Machine (SVM) algorithm and Local Binary Mode (LBP) were used to optimize the processing. The results showed that the optimal solution could be obtained after 10 iterations, and the recognition accuracy reached 92.3%. When the number of iterations reached 40, the recognition accuracy inertia weight reached 99.7%. The average operating time of the original PSO algorithm and the optimized PSO algorithm was 26.3 s and 24.7 s, respectively. This shows that the optimization algorithm not only improves the recognition accuracy, but also shortens the operation time, and enhances the convergence performance and robustness to varying degrees. The improved model can improve the recognition rate of video surveillance system, indicating that the optimization algorithm has great application potential in the video surveillance face recognition.http://www.sciencedirect.com/science/article/pii/S2666603024000149PSOSVMLBPFace recognitionFeature extractionOptimization model
spellingShingle You Qian
Face recognition technology for video surveillance integrated with particle swarm optimization algorithm
International Journal of Intelligent Networks
PSO
SVM
LBP
Face recognition
Feature extraction
Optimization model
title Face recognition technology for video surveillance integrated with particle swarm optimization algorithm
title_full Face recognition technology for video surveillance integrated with particle swarm optimization algorithm
title_fullStr Face recognition technology for video surveillance integrated with particle swarm optimization algorithm
title_full_unstemmed Face recognition technology for video surveillance integrated with particle swarm optimization algorithm
title_short Face recognition technology for video surveillance integrated with particle swarm optimization algorithm
title_sort face recognition technology for video surveillance integrated with particle swarm optimization algorithm
topic PSO
SVM
LBP
Face recognition
Feature extraction
Optimization model
url http://www.sciencedirect.com/science/article/pii/S2666603024000149
work_keys_str_mv AT youqian facerecognitiontechnologyforvideosurveillanceintegratedwithparticleswarmoptimizationalgorithm