利用深度学习减少数据冗余和分析视频

Ishika Gupta, Himanshu Soni, M. Maheshwari, S. Puntambekar, Ankit Saxena
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引用次数: 0

摘要

长期以来,视频监控一直被用于跟踪保护脆弱的区域,如银行、百货公司、高速公路、人群密集的地方和边界。传统上,视频火花是由人工操作员在网络上处理的,而且现在使用的监控技术增加了许多摄像机,使存储设备过载,具有大量数据,并且使您的人工操作员正确跟踪视频变得相当棘手。在本文中,我们提供了一种补救措施,以消除冗余数据从监控过程中使用运动检测算法。除此之外,我们现在对视频进行事物检测,使其易于人工操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Data Redundancy and Analysing Video Using Deep Learning
Video surveillance has for ages been used to track protection delicate areas such as banks, department stores and highways and crowded people places and boundaries. Traditionally the video sparks are processed on the web by human operators and also the increase in many cameras from the now utilized surveillance technologies overload the storage devices with substantial quantities of data and make it rather tricky for your human operators to correctly track the videos. Inside this paper, we offer a remedy to eliminate redundant data from the surveillance procedures using a movement detection algorithm. In addition to that, we now apply thing detection about videos to form them that they can be easily processed from the human operators.
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