基于KLT和卡尔曼滤波的ATM监控系统可疑人类活动识别

S. Nandyal, S. Angadi
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引用次数: 2

摘要

在当今时代,计算机视觉领域的一个活跃研究领域是在视频监控下识别人类活动。为了解决可疑活动,敏感和公共场所,如学校,学院,珠宝店,火车站,寺庙,银行等可以使用视频监控进行监控。长时间跟踪这样的公共场所,既费神又费时。一个这样的区域是自动柜员机(ATM),由监控系统监控。提出了一种智能监控系统,将基于实时的人类行为进行分类,并将其分为正常和异常活动,以确保ATM机的安全性,并可以引起不同级别的报警。本文提出了一种利用卡尔曼滤波和KLT (Kanade-Lucas-Tomasi)跟踪算法来检测和监控ATM视频监控中可疑或非可疑的人类行为的实时系统。在一个实时ATM监控数据库上进行了实验研究。
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Recognition of Suspicious Human Activities using KLT and Kalman Filter for ATM Surveillance System
one of the active research areas in the field of Computer Vision in today's era is recognizing human activity under video surveillance. To resolve suspicious activity, sensitive and public places such as school, college, jewellery store, railway stations, a temple, bank, etc. can be monitored using video surveillance. It is mind-numbing and time-consuming to track such public areas for a long time. One such area is the Automated Teller Machine (ATM), monitored by a surveillance system. An intelligent monitoring system is proposed to classify real-time based human behaviour and categories them into regular and unusual activities to ensure the safety aspect of ATM and can cause different levels of alarm. This paper proposes a real-time system using the Kalman Filter and the Kanade-Lucas-Tomasi (KLT) Tracking Algorithm to detect and monitor suspicious or non-suspicious human behaviour for ATM video surveillance. On a real-time ATM Surveillance database, experimental results are carried out.
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