Abstract:
Autonomous driving is a hot topic throughout the
world at present. When it comes to autonomous driving, tracking
of road agents like vehicles and pedestrians is always an
important issue to consider as it plays a vital role in trajectory
prediction. Trajectories of road agents are dominated by
various dynamic constraints. Simultaneous Collision Avoidance
and Interaction Modelling (SimCAI) is a novel motion model for
predicting the motion of road agents. It consists of techniques
to avoid collisions between the road agents and to model safety
interactions effectively. This research aimed to enhance trajectory
prediction in traffic videos by optimizing parameter values
and integrating the SimCAI model with a framework called
TrackNPred for comparison purposes. Three machine learning
search algorithms were employed to explore the parameter
space and identify optimal configurations. Integration of SimCAI
with TrackNPred allowed for evaluating and comparing its
performance with Reciprocal Velocity Obstacles (RVO) in realworld
scenarios. The research focused on improving SimCAI
by learning the context-dependent parameter values through
the search algorithms. Additionally, comparison techniques were
employed to evaluate the accuracy of trajectory predictions.
By identifying the best parameter values through the search
algorithms, a reduction in Binary Cross-Entropy (BCE) loss was
observed, indicating improved performance.
Citation:
S. P. Lohanathen, C. Gamage and S. Sooriyaarachchi, "Enhancing trajectory prediction of Simultaneous Collision Avoidance and Interaction modelling through parameter learning using Machine Learning," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 550-555, doi: 10.1109/MERCon60487.2023.10355471.