Inspiration

The Active Alert system was inspired by the need to prevent crimes before they occur. By leveraging advanced technologies like artificial intelligence and machine learning, we aimed to create a proactive solution that detects anomalies and alerts authorities in real-time, enabling swift action to prevent potential crimes.

What it does

Active Alert is a comprehensive crime anomaly detection system that uses AI-powered sensors and machine learning algorithms to detect and prevent potential crimes. The system performs the following functions:

•⁠ ⁠Weapon Detection: Identifies weapons such as guns, knives, and explosives using AI-powered sensors and computer vision algorithms. ⁠Real-time Alerts: Sends immediate alerts to authorities via a mobile app, enabling prompt response and prevention of potential crimes. ⁠Incident Reporting: Allows authorities to report incidents and provide additional context, enhancing the system's learning and improvement. •⁠ ⁠Integration with Existing Systems: Seamlessly integrates with existing security infrastructure, such as CCTV cameras and alarm systems, to enhance overall security.

How we built it

Active Alert was built using:

•⁠ ⁠Python for data processing •⁠ ⁠Deep learning framework YOLO •⁠ ⁠Deep learning model CNN (Convolutional neural network)

Challenges we ran into

During development, we faced several challenges, including:

•⁠ ⁠Ensuring high accuracy in weapon detection •⁠ ⁠Addressing false positives and false negatives •⁠ ⁠Integrating with existing law enforcement systems and infrastructure •⁠ ⁠Ensuring scalability and reliability

Accomplishments that we're proud of

we are proud that our application can detect various weapons with 92% accuracy

What's next for Untitled

Our future plans include:

•⁠ ⁠Expanding Active Alert to more cities and countries •⁠ ⁠Integrating with additional data sources, such as social media and surveillance cameras •⁠ ⁠Enhancing the system to detect other types of anomalies, such as suspicious behavior

Built With

Share this project:

Updates