Case Study
Monday, June 30
02:30 PM - 02:55 PM
Live in San Francisco
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Interior sensing is a critical aspect of self-driving vehicles, ensuring passenger safety, comfort, and regulatory compliance. However, several technical challenges must be addressed to enable robust and reliable occupant monitoring. This session explores the limitations of current sensor technologies (e.g., cameras, LiDAR, radar), the role of AI and machine learning in improving detection accuracy, and the complexities of fusing data from multiple sensors. Additionally, we will discuss how to ensure interior sensing systems function reliably in diverse environments and tackle cybersecurity and data privacy concerns in real-time monitoring.
Join this session and get to know more about:
• Identifying the limitations of interior sensing technologies in SDVs and their impact on occupant safety and experience
• Leveraging AI and machine learning to enhance occupant detection, behavior analysis, and system adaptability
• Strategies for sensor fusion, environmental adaptability, and addressing cybersecurity challenges in real-time interior monitoring
Strong information technology professional with a Doctor of Philosophy (Ph.D.) focused on Stochastic Estimation and Control Theory. Professional background in Sensor Data Fusion, Signal Processing and Target Tracking with applications in Air Defence and Driver Assistance Systems. Teaching experience in many fields of Control Theory. Expertise in modelling and simulation of dynamic systems and programming in Matlab & Simulink. Strong interpersonal skills, working ethics and result oriented team-work style.