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Detecting Abnormal Behavior Events and Gatherings in Public Spaces Using
Deep Learning: A Systematic Review
Abstract
Public security is a crucial aspect of maintaining social order.
Although crime rates in western cultures may be considered socially
acceptable, it is important to continually improve security measures to
prevent potential risks. With the advancements in artificial
intelligence methods, particularly in deep learning and computer vision,
it has become possible to detect abnormal event patterns in groups of
people. This paper presents a systematic review of deep learning
techniques employed for identifying gatherings of people and detecting
anomalous events to enhance public security. Some of the open research
areas are identified, including the lack of works addressing multiple
cases of anomalies in large concentrations of people, which leaves open
an important avenue for future scientific work.