基于边缘智能的水文监测站图像识别监测系统设计

Liwu Tan, Xianzhe Yao, Yuan Long, Zhizheng Zhang, Zhiwei Li, Yan Li
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引用次数: 0

摘要

在水文监测站的安全监测中,通过智能监测,可以利用目标检测算法,避免人工监管带来的不必要的麻烦。然而,目标识别的准确性和时延问题一直是安防监控中的矛盾。SSD目标检测算法是继Faster RCNN和YOLOv1算法之后的最新目标识别算法,结合了两者的优点。该算法比快速的RCNN算法更快,比YOLOv1算法具有更高的精度。本文提出了一种基于超轻型快速通用人脸检测和1mb网络收敛的PSO智能算法,称为PSO- 1mb。该设备部署在边缘节点服务器的水文监测站内或附近,进行计算和处理。本文以测试工作人员是否戴安全帽为例,采用Pytorch环境框架,进行实验模拟。实验结果表明,该模型和算法能够更加准确、快速地检测出头盔特征,能够更好地满足工程要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of Image Recognition Monitoring System of Hydrological Monitoring Station Based on Edge Intelligence
In the safety monitoring of hydrological monitoring stations, the target detection algorithm can be used to avoid unnecessary trouble caused by artificial supervision through intelligent monitoring. However, the accuracy of target recognition and time - delay is always a contradiction in security monitoring. SSD target detection algorithm is the latest target recognition algorithm after Faster RCNN and YOLOv1 algorithm, combining the advantages of both. The algorithm is faster than the fast RCNN algorithm and has higher accuracy than the YOLOv1 algorithm. In this paper, a PSO intelligent algorithm based on hyperlight fast generic face detection and 1mb network convergence is proposed, called PSO-1MB. The device is deployed in or near the hydrologic monitoring station on the edge node server for calculation and processing. In this paper, the test whether the staff wear a hard hat as an example, using the Pytorch environmental framework, experiment simulation. Experimental results show that this model and algorithm can detect helmet features more accurately and quickly, and can better meet the engineering requirements.
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