SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment
Anomaly detection offers a powerful approach to identifying unusual activities and uncommon behaviors in real-world video scenes. At present, convolutional neural networks (CNN) have been widely used to tackle anomalous events detection, which mainly rely on its stronger ability of feature represent...
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sg-smu-ink.sis_research-69352022-07-26T09:05:29Z SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment CHENG, Hang LIU, Ximeng WANG, Huaxiong FANG, Yan WANG, Meiqing ZHAO, Xiaopeng Anomaly detection offers a powerful approach to identifying unusual activities and uncommon behaviors in real-world video scenes. At present, convolutional neural networks (CNN) have been widely used to tackle anomalous events detection, which mainly rely on its stronger ability of feature representation than traditional hand-crafted features. However, massive video data and high cost of CNN model training are a challenge to achieve satisfactory detection results for resource-limited users. In this paper, we propose a secure video anomaly detection framework (SecureAD) based on CNN. Specifically, we introduce additive secret sharing to design several calculation protocols for achieving safe CNN training and video anomaly detection. Besides, we propose a Bloom filter based fine-grained access control policy to authenticate legitimate users, without leaking the privacy of raw personal attributes. In addition, edge computing instead of cloud computing is integrated into the architecture to reduce response time between servers and users in an outsourced environment. Finally, we prove that the proposed SecureAD achieves secure video anomaly detection without compromising the privacy of the related data. Also, the simulation results demonstrate the effectiveness and security of our SecureAD. 2022-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5932 info:doi/10.1109/TCC.2020.2990946 https://ink.library.smu.edu.sg/context/sis_research/article/6935/viewcontent/SecureAD_av_2020.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Privacy-preserving anomaly detection Bloom filter CNN secret sharing Information Security |
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Privacy-preserving anomaly detection Bloom filter CNN secret sharing Information Security CHENG, Hang LIU, Ximeng WANG, Huaxiong FANG, Yan WANG, Meiqing ZHAO, Xiaopeng SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment |
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Anomaly detection offers a powerful approach to identifying unusual activities and uncommon behaviors in real-world video scenes. At present, convolutional neural networks (CNN) have been widely used to tackle anomalous events detection, which mainly rely on its stronger ability of feature representation than traditional hand-crafted features. However, massive video data and high cost of CNN model training are a challenge to achieve satisfactory detection results for resource-limited users. In this paper, we propose a secure video anomaly detection framework (SecureAD) based on CNN. Specifically, we introduce additive secret sharing to design several calculation protocols for achieving safe CNN training and video anomaly detection. Besides, we propose a Bloom filter based fine-grained access control policy to authenticate legitimate users, without leaking the privacy of raw personal attributes. In addition, edge computing instead of cloud computing is integrated into the architecture to reduce response time between servers and users in an outsourced environment. Finally, we prove that the proposed SecureAD achieves secure video anomaly detection without compromising the privacy of the related data. Also, the simulation results demonstrate the effectiveness and security of our SecureAD. |
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CHENG, Hang LIU, Ximeng WANG, Huaxiong FANG, Yan WANG, Meiqing ZHAO, Xiaopeng |
author_facet |
CHENG, Hang LIU, Ximeng WANG, Huaxiong FANG, Yan WANG, Meiqing ZHAO, Xiaopeng |
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CHENG, Hang |
title |
SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment |
title_short |
SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment |
title_full |
SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment |
title_fullStr |
SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment |
title_full_unstemmed |
SecureAD: A secure video anomaly detection framework on convolutional neural network in edge computing environment |
title_sort |
securead: a secure video anomaly detection framework on convolutional neural network in edge computing environment |
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Institutional Knowledge at Singapore Management University |
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2022 |
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https://ink.library.smu.edu.sg/sis_research/5932 https://ink.library.smu.edu.sg/context/sis_research/article/6935/viewcontent/SecureAD_av_2020.pdf |
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