Master's Thesis
Pedestrian Motion Prediction Using Deep Learning
2021
—Key information
Authors:
Supervisors:
Published in
11/22/2021
Abstract
Pedestrian motion prediction is a task that is relevant for many kinds of intelligent systems, such as autonomous vehicles, social robots, and automated surveillance systems. It can be a very challenging task, due to the fact that humans can be influenced by a plethora of factors. In recent years, two types of cues have been getting more relevance: the presence of physical obstacles, and the existence of social interactions between pedestrians. While there have been methods that incorporate both types of cues, most require extra information such as video images, which may not be readily available. This thesis proposes a novel method, based on Long Short Term Memory, that takes into account obstacles and neighbouring humans to robustly predict pedestrian trajectories. The presence of obstacles is incorporated by integrating the model with Sparse Motion Fields, that learn regions absent of pedestrian motion in an unsupervised way. The existence of interactions is incorporated with a pooling layer that simulates a field of view for each pedestrian. The proposed method is able to outperform several state-of-the-art models on popular pedestrian datasets. To compare the models, there was the use of standard geometric errors, as well as metrics specifically related to static obstacles and dynamic interactions. The experiments also included visualization of method predictions, to provide a different perspective on the performance of trajectory forecasting models. The model implementation and experiments are publicly available and can be accessed at https://github.com/pedro-mgb/pedestrian-arc-lstm-smf.
Publication details
Authors in the community:
Pedro Miguel Gustavo Bilro
ist187100
Supervisors of this institution:
Ana Catarina Fidalgo Barata
ist158472
Fields of Science and Technology (FOS)
electrical-engineering-electronic-engineering-information-engineering - Electrical engineering, electronic engineering, information engineering
Publication language (ISO code)
eng - English
Rights type:
Embargo lifted
Date available:
10/06/2022
Institution name
Instituto Superior Técnico