000 01468nam a22001577a 4500
082 _a629.8
100 _aNauman, Muhammad
_918171
245 _aDeep Learning-based Trajectory Prediction for Autonomous Vehicles /
_cMuhammad Nauman
264 _aIslamabad :
_bSMME- NUST;
_c2025.
300 _a54p.
_bSoft Copy
_c30cm
500 _aAutonomous driving heavily relies on accurate trajectory prediction to optimize route planning and enhance vehicle safety. Current deep learning-based trajectory models have demonstrated remarkable success on public datasets but often fall short in real-time applications due to computational limitations in vehicles. In this research, we propose LaneFormer, an optimized trajectory prediction framework designed to balance high predictive accuracy with computational efficiency, ensuring its suitability for real-time deployment in autonomous systems. Our model introduces an efficient attention mechanism to capture complex interactions between agents and road structures, outperforming state-of-the-art methods while using fewer resources. We evaluate LaneFormer on the Argoverse dataset, demonstrating its robustness in predicting future trajectories with competitive metrics across multimodal scenarios.
650 _aMS Robotics and Intelligent Machine Engineering
_9119486
700 _aSupervisor : Dr. Shahbaz Khan
_9125085
856 _uhttp://10.250.8.41:8080/xmlui/handle/123456789/49538
942 _2ddc
_cTHE
999 _c612914
_d612914