METHODS AND SYSTEMS FOR DIVERSITY-AWARE VEHICLE MOTION PREDICTION VIA LATENT SEMANTIC SAMPLING
DRIVE
June 3, 2021
A system and method for generating a predicted vehicle trajectory includes a generative adversarial network configured to receive a trajectory vector of a target vehicle and generate a set of latent state vectors using the received trajectory vector and an artificial neural network. The latent state vectors each comprise a high-level sub-vector, Z. The GAN enforces Zto be correlated to an annotation coding representing semantic categories of vehicle trajectories. The GAN selects a subset, from the set of latent state vectors, using farthest point sampling and generates a predicted vehicle trajectory based on the selected subset of latent state vectors.
Discussion in the ATmosphere