Deep Learning Based Crime Detection from Surveillance Videos
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ASTU
Abstract
The primary objective of deep learning-based crime detection is enhancing public security
through active identification of criminal activities. Traditional surveillance systems rely on
human operation of live video streams manually, which is time-consuming and prone to human
error. To address this, new algorithms such as YOLOv8n and YOLOv11n have been designed
as efficient crime detection automation with enhanced accuracy and speed. YOLOv8n and
YOLOv11n, both object detection-capable, are particularly trained to rummage through
massive databases of surveillance footage and flag abnormal activity or behavior. With the
capability to learn patterns and signatures from labeled crime-related data, the models possess
the potential to identify potential threats with high levels of accuracy. The performance of the
models is measured by metrics like Mean Average Precision (mAP), Precision, and Recall.
YOLOv8n scores 0.993 in, precision, 0.993 mAP. Meanwhile, YOLOv11n is an improvement
on its previous model, with a recorded precision 0.995, mAP of 0.995 and better accuracy as
well as faster processing for criminal detection activities. Finally, the integration of YOLOv8n
and YOLOv11n in crime detection systems will revolutionize public security through the
identification and prevention of crime. These deep learning models significantly enhance
surveillance and provide security personnel with an effective tool to manage criminal behavior.
However, concerns regarding data availability, computation power, and ethics need to be
addressed to ensure effective and ethical use of this technology.
