Intrusion Countermeasure System
Abstract
The project titled "Intrusion Countermeasure
System" presents an innovative solution aimed at
enhancing security measures in restricted areas through
the prevention of unauthorized access and trespassing.
Leveraging cutting-edge technologies such as Intrusion
Countermeasure System and mobile robotics, this system
integrates multiple components to achieve its objective.
Machine learning algorithms, powered by OpenCV, are
utilized for motion capture and face detection, enabling
accurate recognition and response to human presence. On
the hardware front, the system employs Arduino for
robust control, along with motors, motor drivers, and
cameras to facilitate seamless operations. The integration
of ROS2 SLAM (Simultaneous Localization and Mapping)
and navigation further enhances the system's capabilities,
allowing for real-time mapping and autonomous
navigation within the secured environment. The result is a
comprehensive defence system that not only identifies
potential intruders but also takes swift and intelligent
action, thereby fortifying security in sensitive areas. This
project exemplifies the potential for advanced technology
to redefine security measures and safeguard critical
locations effectively.
Keywords:
—Intrusion Countermeasure System, Machine Learning, Mobile Robotics, Open CVPublished
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Copyright (c) 2024 International Journal on Emerging Research Areas

This work is licensed under a Creative Commons Attribution 4.0 International License.
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