This thesis explores deep learning algorithms for environment perception, aimed at enhancing autonomous driving and smart-city infrastructure. Beginning with Vehicle-to-Everything (V2X) technology, it highlights the 5GMETA platform's role in enabling real-time data for applications like parking detection and traffic safety. A novel method for aligning traffic camera images with satellite data improves object geo-location for V2X systems. The thesis also focuses on LiDAR-based perception for high-speed driving, presenting optimized models for 3D detection and effective domain adaptation techniques. Integrating V2X, deep learning, and computer vision, this work advances perception technologies for safer, smarter cities.

Deep Learning Algorithms for Environment Perception / Shrivastav, C.S.. - (2025 Jan 21).

Deep Learning Algorithms for Environment Perception

SHRIVASTAV, CHINMAY SATISH
2025-01-21

Abstract

This thesis explores deep learning algorithms for environment perception, aimed at enhancing autonomous driving and smart-city infrastructure. Beginning with Vehicle-to-Everything (V2X) technology, it highlights the 5GMETA platform's role in enabling real-time data for applications like parking detection and traffic safety. A novel method for aligning traffic camera images with satellite data improves object geo-location for V2X systems. The thesis also focuses on LiDAR-based perception for high-speed driving, presenting optimized models for 3D detection and effective domain adaptation techniques. Integrating V2X, deep learning, and computer vision, this work advances perception technologies for safer, smarter cities.
21-gen-2025
Matematica
Deep Learning
Perception
Smart-city
V2X
Digital Twin
Lidar
Bertogna, Marko
Cavicchioli, Roberto
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/1889/6139
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