Applied Mathematics and Nonlinear Sciences (Jan 2024)

Research on the Application of Intelligent Recognition Technology in the Prediction of Violation Behaviour at Electricity Work Sites

  • Gao Chunhui,
  • Qi Daboer,
  • Gao Apeng,
  • Ning Jing,
  • Qiu Kaiyi,
  • He Wei,
  • Chen Guangliang

DOI
https://doi.org/10.2478/amns-2024-0365
Journal volume & issue
Vol. 9, no. 1

Abstract

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To realize the safe operation of electric power site, this paper proposes an intelligent recognition technology to automatically identify violations. This study successfully constructs a face detection model for power operation sites by combining deep convolutional neural networks and target detection algorithms. A three-way connected feature pyramid structure containing a neuron self-processing module is adopted, and an accuracy test is completed using a Tri-FPN-based target detection network, significantly improving recognition accuracy. In this paper, we also utilized the on-site images collected by video surveillance equipment, combined with CNN algorithm and HOG feature extraction technology to effectively identify the violations and provide early warning of the breaches of the personnel at the power operation site. MAP curves evaluated the detection performance, and the results showed that the head recognition rate was up to 0.9913, and the accuracy rate of all violations exceeded 0.9350.The high accuracy of CNN-based feature fusion extraction algorithm in the recognition of violations of personnel at the site of electric power operation provides effective technical support to ensure personnel safety.

Keywords