Course Code:
fs3bs
Duration:
2 hours
Overview:
Objective: Introduce the team to AI techniques for sensor fusion, particularly for bridging and integrating data from multiple sensors.
Course Outline:
Agenda:
Introduction to Sensor Fusion (15 minutes)
- Overview of sensor fusion and its importance in AI applications.
- Examples of sensor fusion in future systems.
AI Techniques for Sensor Fusion (15 minutes)
- Introduction to AI algorithms for sensor fusion (e.g., Kalman filters, neural networks).
- Demonstration of a selected algorithm.
Hands-On Exercise: Implementing Sensor Fusion (30 minutes)
- Practical exercise: Use AI to combine data from multiple sensors and improve decision-making.
- Implementing a Kalman filter or a neural network-based sensor fusion model.
Case Study: Sensor Fusion in Action (30 minutes)
- Review of a case study where sensor fusion was successfully applied.
- Practical exercise: Analyze and interpret the results of the sensor fusion model.
Q&A and Future Directions (30 minutes)
- Addressing questions and discussing future trends in AI sensor fusion.
- Exploring additional AI tools and resources for further learning.
Materials Needed:
- Laptops with internet access.
- Access to AI tools and libraries for sensor fusion (e.g., Python libraries, MATLAB).
- Sample sensor data for practical exercises.