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AI群像人脸识别驱动的工地班前教育智能监管系统

Research on a Pre-shift Education Supervision System for Construction Sites Based on AI Group Facial Recognition Technology

  • 摘要: 建筑工地安全风险高,班前安全教育是预防事故的关键环节。然而,传统教育方式依赖人工点名与纸质记录,存在效率低、易出错、监督难等问题。为解决上述问题,本文设计并实现了一套基于AI群像人脸识别技术的班前教育智能监管系统。该系统集成摄像头模块、数据采集模块、语音识别模块、记录生成模块与预警模块,通过人群聚集触发算法与卷积神经网络实现自动身份核验,并实时采集语音与环境数据,实现教育内容的结构化存储与自动报告生成。进一步地,将该系统应用于广州市越秀区瑶台村旧改工程。应用结果表明:在正常光线下,人脸识别准确率达100%,平均响应时间为1.8 s,数据质量指数(DQI)为0.92;在低光与雨天条件下,识别率分别为91%与68%,DQI仍高于0.75,综合预警指数(CWI)未超过阈值0.3,系统表现出良好的鲁棒性。通过50名工人参与的实际场景测试,系统有效防止了代打卡行为,教育记录规范化程度提升约40%,预估年度可节省人工管理成本约15万元。本研究表明,该系统能显著提升班前教育的自动化与标准化水平,为建筑工地安全教育管理提供了可行的技术解决方案。

     

    Abstract: High safety risks exist at construction sites, making pre-shift safety education a critical measure for accident prevention. However, traditional education methods relying on manual roll calls and paper records suffer from low efficiency, error-proneness, and difficulties in supervision. To address these issues, this paper designs and implements an intelligent pre-shift education supervision system based on AI facial recognition technology for crowds. The system integrates a camera module, data acquisition module, voice recognition module, record generation module, and early warning module. It employs a crowd aggregation triggering algorithm and convolutional neural networks to achieve automatic identity verification, while collecting voice and environmental data in real time to enable structured storage of educational content and automatic report generation. The system was further applied in the reconstruction project of Yaotai Village, Yuexiu District, Guangzhou. The application demonstrates that under normal lighting conditions, the system achieves a facial recognition accuracy rate of 100% with an average response time of 1.8 seconds and a Data Quality Index (DQI) of 0.92. Under low-light and rainy conditions, the recognition rates are 91% and 68%, respectively, while the DQI remains above 0.75, and the Comprehensive Warning Index (CWI) does not exceed the threshold of 0.3, indicating good system robustness. In a practical scenario test involving 50 workers, the system effectively prevented attendance fraud, improved the standardization of education records by approximately 40%, and is estimated to save about 150,000 yuan in annual labor management costs. This study demonstrates that the system significantly enhances the automation and standardization level of pre-shift education, providing a feasible technical solution for safety education management at construction sites.

     

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