2021
DOI: 10.48550/arxiv.2104.11653
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MULTICAST: MULTI Confirmation-level Alarm SysTem based on CNN and LSTM to mitigate false alarms for handgun detection in video-surveillance

Roberto Olmos,
Siham Tabik,
Francisco Perez-Hernandez
et al.

Abstract: Despite the constant advances in computer vision, integrating modern single-image detectors in real-time handgun alarm systems in video-surveillance is still debatable. Using such detectors still implies a high number of false alarms and false negatives. In this context, most existent studies select one of the latest single-image detectors and train it on a better dataset or use some preprocessing, post-processing or data-fusion approach to further reduce false alarms. However, none of these works tried to exp… Show more

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Cited by 2 publications
(2 citation statements)
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“…Method Reason for False Alarm [126] Deep learning Alarms are recognized as abnormal when unknown or new normality appears [121] Neural network What is considered an anomaly today may not be considered an anomaly tomorrow due to the lack of data [161] Deep learning Post-incident alarm triggering occurs from training crowd safety analysis on only human movement [116,118] In order not to create false alarms in the healthcare system, it is necessary to use a human observer [162] Intruders may deliberately trigger false alarms by covering or tampering with cameras Blockchain smart contracts, multi-factor authentication, and multi-class deep learning can be used to mitigate false alarms. Smart contracts deployed on a blockchain help reduce false alarms by providing a decentralized peer review and tamper-resistant framework for alarm management.…”
Section: Systemmentioning
confidence: 99%
“…Method Reason for False Alarm [126] Deep learning Alarms are recognized as abnormal when unknown or new normality appears [121] Neural network What is considered an anomaly today may not be considered an anomaly tomorrow due to the lack of data [161] Deep learning Post-incident alarm triggering occurs from training crowd safety analysis on only human movement [116,118] In order not to create false alarms in the healthcare system, it is necessary to use a human observer [162] Intruders may deliberately trigger false alarms by covering or tampering with cameras Blockchain smart contracts, multi-factor authentication, and multi-class deep learning can be used to mitigate false alarms. Smart contracts deployed on a blockchain help reduce false alarms by providing a decentralized peer review and tamper-resistant framework for alarm management.…”
Section: Systemmentioning
confidence: 99%
“…Therefore, intelligent systems are developed by researchers for the automatic detection of risk situations or threats involving firearms [9,10]. The intelligent systems are effective in the situations such as terrorist attacks, gunfire incidents on school grounds, mass shooting, and handgun attacks [11,12]. This article uses HIPSO-SVM model for improving the performance of weapon detection and the major contributions are listed below:…”
Section: Introductionmentioning
confidence: 99%