Affective State Based Anomaly Detection in Crowd
To distinguish individuals with dangerous abnormal behaviours from the crowd, human characteristics (e.g., speed and direction of motion, interaction with other people), crowd characteristics (such as flow and density), space available to individuals, etc. must be considered. The paper proposes an a...
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Online Access: | https://doi.org/10.2478/acss-2019-0017 |
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doaj-4f6b3b91e8b94ce891e202590865e4af2021-09-06T19:41:00ZengSciendoApplied Computer Systems2255-86912019-12-0124213414010.2478/acss-2019-0017acss-2019-0017Affective State Based Anomaly Detection in CrowdBaliniskite Glorija0Lavendelis Egons1Pudane Mara2Riga Technical University, Riga, LatviaRiga Technical University, Riga, LatviaRiga Technical University, Riga, LatviaTo distinguish individuals with dangerous abnormal behaviours from the crowd, human characteristics (e.g., speed and direction of motion, interaction with other people), crowd characteristics (such as flow and density), space available to individuals, etc. must be considered. The paper proposes an approach that considers individual and crowd metrics to determine anomaly. An individual’s abnormal behaviour alone cannot indicate behaviour, which can be threatening toward other individuals, as this behaviour can also be triggered by positive emotions or events. To avoid individuals whose abnormal behaviour is potentially unrelated to aggression and is not environmentally dangerous, it is suggested to use emotional state of individuals. The aim of the proposed approach is to automate video surveillance systems by enabling them to automatically detect potentially dangerous situations.https://doi.org/10.2478/acss-2019-0017anomaly detection in crowddangerous anomaly detectionemotional stateperson extraction from crowdsurveillance system automation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Baliniskite Glorija Lavendelis Egons Pudane Mara |
spellingShingle |
Baliniskite Glorija Lavendelis Egons Pudane Mara Affective State Based Anomaly Detection in Crowd Applied Computer Systems anomaly detection in crowd dangerous anomaly detection emotional state person extraction from crowd surveillance system automation |
author_facet |
Baliniskite Glorija Lavendelis Egons Pudane Mara |
author_sort |
Baliniskite Glorija |
title |
Affective State Based Anomaly Detection in Crowd |
title_short |
Affective State Based Anomaly Detection in Crowd |
title_full |
Affective State Based Anomaly Detection in Crowd |
title_fullStr |
Affective State Based Anomaly Detection in Crowd |
title_full_unstemmed |
Affective State Based Anomaly Detection in Crowd |
title_sort |
affective state based anomaly detection in crowd |
publisher |
Sciendo |
series |
Applied Computer Systems |
issn |
2255-8691 |
publishDate |
2019-12-01 |
description |
To distinguish individuals with dangerous abnormal behaviours from the crowd, human characteristics (e.g., speed and direction of motion, interaction with other people), crowd characteristics (such as flow and density), space available to individuals, etc. must be considered. The paper proposes an approach that considers individual and crowd metrics to determine anomaly. An individual’s abnormal behaviour alone cannot indicate behaviour, which can be threatening toward other individuals, as this behaviour can also be triggered by positive emotions or events. To avoid individuals whose abnormal behaviour is potentially unrelated to aggression and is not environmentally dangerous, it is suggested to use emotional state of individuals. The aim of the proposed approach is to automate video surveillance systems by enabling them to automatically detect potentially dangerous situations. |
topic |
anomaly detection in crowd dangerous anomaly detection emotional state person extraction from crowd surveillance system automation |
url |
https://doi.org/10.2478/acss-2019-0017 |
work_keys_str_mv |
AT baliniskiteglorija affectivestatebasedanomalydetectionincrowd AT lavendelisegons affectivestatebasedanomalydetectionincrowd AT pudanemara affectivestatebasedanomalydetectionincrowd |
_version_ |
1717767206734921728 |