Towards Infusing Auxiliary Knowledge for Distracted Driver Detection
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Learn about an innovative approach to detecting distracted driving behaviors through a 16-minute research presentation that introduces KiD3, a groundbreaking method combining visual data with auxiliary knowledge. Explore how this framework integrates scene graphs and driver pose information to create comprehensive representations of driver actions, resulting in significant accuracy improvements over traditional vision-only systems. Discover the technical implementation details of a system designed to enhance road safety by reliably identifying various forms of driver distraction, from texting to eating, using in-vehicle camera feeds. Examine the research findings that demonstrate a 13.64% accuracy boost achieved by incorporating semantic relations between scene entities and structural pose configurations into the detection process.
Towards Infusing Auxiliary Knowledge for Distracted Driver Detection