Image Recognition Technology of Monitoring Intelligent Alarm System Based on Deep Learning

Baofeng Hui, Y. Ma
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Abstract

The early alarm system is a mechanical alarm, which only monitors a single point. As long as an object enters the monitored place, it will send out an alarm signal mechanically and without analysis. In the image processing part, the difference or gray value comparison between the image of the foreign body and the reference image is mainly carried out to obtain the foreign body, and the obtained foreign body is segmented and edge detected to calculate the parameters such as the area, perimeter and proportional characteristics of the foreign body, and the foreign body is identified and classified by understanding the parameters, so as to further judge whether the foreign body is harmful or not. In recent years, with the rapid development of big data technology application, deep learning has maintained a strong development trend, and has realized large-scale promotion and application in important fields such as data processing, image recognition and text understanding. This paper discusses the image recognition technology of deep learning in monitoring intelligent alarm system, and further studies how to effectively recognize video images and strengthen monitoring intelligent alarm system.
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基于深度学习的监控智能报警系统图像识别技术
早期报警系统是一种机械报警,只监控单点。只要有物体进入监控场所,就会机械地发出报警信号,无需分析。在图像处理部分,主要进行异物图像与参考图像的差值或灰度值比较,获取异物,并对获得的异物进行分割和边缘检测,计算出异物的面积、周长、比例特征等参数,通过对参数的了解对异物进行识别和分类;从而进一步判断异物是否有害。近年来,随着大数据技术应用的快速发展,深度学习保持了强劲的发展态势,并在数据处理、图像识别、文本理解等重要领域实现了大规模推广应用。本文探讨了深度学习图像识别技术在监控智能报警系统中的应用,并进一步研究了如何有效识别视频图像,加强监控智能报警系统。
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