Enhancing Situational Awareness in Surveillance: Leveraging Data
Visualization Techniques for Machine Learning-based Video Analytics Outcomes
- URL: http://arxiv.org/abs/2312.05629v1
- Date: Sat, 9 Dec 2023 18:32:44 GMT
- Title: Enhancing Situational Awareness in Surveillance: Leveraging Data
Visualization Techniques for Machine Learning-based Video Analytics Outcomes
- Authors: Babak Rahimi Ardabili, Shanle Yao, Armin Danesh Pazho, Lauren Bourque,
Hamed Tabkhi
- Abstract summary: This study thoroughly examines data representation and visualization techniques tailored for AI surveillance data within current infrastructures.
It delves into essential data metrics, methods for situational awareness, and various visualization techniques.
The results emphasize the crucial impact of visualizing AI surveillance data on emergency handling, public health protocols, crowd control, resource distribution, predictive modeling, city planning, and informed decision-making.
- Score: 2.1374208474242815
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The pervasive deployment of surveillance cameras produces a massive volume of
data, requiring nuanced interpretation. This study thoroughly examines data
representation and visualization techniques tailored for AI surveillance data
within current infrastructures. It delves into essential data metrics, methods
for situational awareness, and various visualization techniques, highlighting
their potential to enhance safety and guide urban development. This study is
built upon real-world research conducted in a community college environment,
utilizing eight cameras over eight days. This study presents tools like the
Occupancy Indicator, Statistical Anomaly Detection, Bird's Eye View, and
Heatmaps to elucidate pedestrian behaviors, surveillance, and public safety.
Given the intricate data from smart video surveillance, such as bounding boxes
and segmented images, we aim to convert these computer vision results into
intuitive visualizations and actionable insights for stakeholders, including
law enforcement, urban planners, and social scientists. The results emphasize
the crucial impact of visualizing AI surveillance data on emergency handling,
public health protocols, crowd control, resource distribution, predictive
modeling, city planning, and informed decision-making.
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