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一种基于SSD目标检测算法的安全帽识别视频监控系统
Safety Helmet Recognition Video Surveillance System Based on SSD Target Detection Algorithm

DOI: 10.12677/JSST.2021.94004, PP. 19-25

Keywords: 视频监控技术,SSD目标检测算法,安全帽,Video Surveillance Technology, SSD Target Detection Algorithm, Safety Helmet

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Abstract:

视频监控技术源自人工智能的一个分支。它可以使用一台计算机,来自动分析视频图像源,从中识别并提取有用的关键信息,并自动控制机器执行相应的操作。本文是一种基于SSD目标检测算法的视频监视系统,用于识别安全帽的特定数据。目的是能够以更智能的方式进行巡逻和对事件做出响应,而无需投入大量人力资源停留在显示器前。
Video surveillance technology comes from a branch of artificial intelligence. It can use a computer to automatically analyze the video image source, identify and extract useful key information, and automatically control the machine to perform corresponding operations. This paper is a video surveillance system based on SSD target detection algorithm, which is used to identify the specific data of safety helmet. The goal is to patrol and respond to events in a more intelligent way without investing a lot of human resources in front of the display.

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