Client’s Need

  1. Improved road safety by monitoring drowsiness while driving in public transport.

  2. Accurate detection of drowsiness indicators, including facial expressions, eye movements, and face orientation, in real-time. Integration with Amazon ALEXA. 

Goals of the project

  1. Develop a deep learning-based system for accurate drowsiness detection in drivers.

  2. Implement real-time monitoring and alerting on the Android platform.

  3. Integrate voice-enabled features using AWS Alexa for convenient driver interaction and communication.

  4. Voice enabled driver interaction for alerts, breaks and safety advice. 

Our Approach

  • Utilize EfficientNet deep learning model for drowsiness indicators such as facial expressions, eye movements, and face orientation.

  • Implement Andriod library ”ML Kit” for face orientation and expression detection to enhance accuracy and efficiency.

  • Integrate the solution on the Android platform for real-time monitoring and alerting.

  • Integrate AWS Alexa for voice-enabled interaction, enhancing user convenience and system effectiveness.

Outcome

  1. 97% accuracy in drowsiness detection.

  2. Enhanced driver safety, reduced accident risks.

  3. Easy scalability and deployment as its based on Andriod.

  4. Implemented a highly convenient voice-enabled user interface.

  5. Ensured minimal driver distraction while interacting with the system.

Published:
September 28, 2024
Category:
Edge Computing
Client:
Oceanthemes