用于监控视频异常检测的膨胀三维卷积网络

R. Yadav, Rajiv Ranjan Kumar
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摘要

在最新技术的干预下,所有城市都变得越来越智能,基础设施每天都在升级。这些基础设施向我们提供关键信息。随着人工智能的普及,人们需要一个实时系统来帮助发现犯罪。监控平台的信息可能包括异常和常规视频。我们提出了一种基于弱标注训练视频的异常事件识别系统,以便在发现异常行为时采取相应的措施。为了提取特征,我们部署了I3D-Resnet-50,这是一种深度残差模型。使用Kinetics视频动作数据集来训练该网络。我们的数据集中有13个独特的异常。犯罪、袭击、射击、入室行窃、偷窃、监狱、打架、盗窃、破门而入、炸弹、刑事损害、酷刑和交通事故都是不寻常的事件。本文提出的视觉异常检测方法在检测的正确性和查全率方面取得了显著的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inflated 3D Convolution Network for Detecting Anomalies in Surveillance Videos
All cities are getting smart with the intervention of latest technologies, there infrastructure is getting upgraded with each day. Critical informations is provided to us by these infrastructures.With the rise in popularity of AI, there is a requirement for a real-time system that can aid in spotting crimes as they occur.The surveillance platform’s information may include both aberrant and conventional footage. We propose developing an aberrant event identification system based on weakly annotated training videos, and so when such behaviour is discovered, suitable action may be taken.For extraction of features, we deployed I3D-Resnet-50, a deep deep residual model. The Kinetics video action dataset was used to train this network. There are 13 unique abnormalities in our dataset. Crime, Attack, Firing, Burglaries, Thieving, Prison, Fight, Thefts, Breaking and entering, Bomb, Criminal damage, Torture, and Traffic Accident are all unusual incidents. The proposed approach for visual anomaly detection achieves considerable improvements in terms of correctness and recall.
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