
Next-Gen Autonomous Driving Perception
Integrating Deep Learning & Multimodal LLMs for Enhanced Road Safety
This research advances autonomous vehicle intelligence by combining deep learning with Multimodal Large Language Models (MLLMs) to create more robust road perception systems.
- Achieved 99.8% accuracy in traffic sign recognition using ResNet-50 architecture
- Developed an integrated framework combining specialized models for comprehensive road awareness
- Successfully implemented robust lane detection capabilities for complex driving environments
- Demonstrated how multimodal approaches improve autonomous navigation safety
This engineering breakthrough has significant implications for AV development, addressing critical safety challenges in real-world driving conditions while establishing a foundation for more reliable autonomous transportation systems.