HGCN-GJS: Hierarchical Graph Convolutional Network with Groupwise Joint
Sampling for Trajectory Prediction
- URL: http://arxiv.org/abs/2009.07140v3
- Date: Fri, 15 Sep 2023 13:44:53 GMT
- Title: HGCN-GJS: Hierarchical Graph Convolutional Network with Groupwise Joint
Sampling for Trajectory Prediction
- Authors: Yuying Chen, Congcong Liu, Xiaodong Mei, Bertram E. Shi and Ming Liu
- Abstract summary: In this work, we propose a hierarchical graph convolutional network, HGCN-GJS, for trajectory prediction.
We introduce a novel joint sampling scheme for modeling the joint distribution of multiple pedestrians in the future trajectories.
We demonstrate the performance of our network on several trajectory prediction datasets, achieving state-of-the-art results on all datasets considered.
- Score: 14.57655217378212
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate pedestrian trajectory prediction is of great importance for
downstream tasks such as autonomous driving and mobile robot navigation. Fully
investigating the social interactions within the crowd is crucial for accurate
pedestrian trajectory prediction. However, most existing methods do not capture
group level interactions well, focusing only on pairwise interactions and
neglecting group-wise interactions. In this work, we propose a hierarchical
graph convolutional network, HGCN-GJS, for trajectory prediction which well
leverages group level interactions within the crowd. Furthermore, we introduce
a novel joint sampling scheme for modeling the joint distribution of multiple
pedestrians in the future trajectories. Based on the group information, this
scheme associates the trajectory of one person with the trajectory of other
people in the group, but maintains the independence of the trajectories of
outsiders. We demonstrate the performance of our network on several trajectory
prediction datasets, achieving state-of-the-art results on all datasets
considered.
Related papers
- EPG-MGCN: Ego-Planning Guided Multi-Graph Convolutional Network for
Heterogeneous Agent Trajectory Prediction [0.0]
This paper proposes a ego-planning guided multi-graph convolutional network (EPG-MGCN) to predict the trajectories of heterogeneous agents.
EPG-MGCN first models the social interactions by employing four graph topologies.
Finally, a category-specific gated recurrent unit (CS-GRU) encoder-decoder is designed to generate future trajectories for each specific type of agents.
arXiv Detail & Related papers (2023-03-29T21:14:05Z) - FJMP: Factorized Joint Multi-Agent Motion Prediction over Learned
Directed Acyclic Interaction Graphs [8.63314005149641]
We propose FJMP, a Factorized Joint Motion Prediction framework for interactive driving scenarios.
FJMP produces more accurate and scene-consistent joint trajectory predictions than non-factorized approaches.
FJMP ranks 1st on the multi-agent test leaderboard of the INTERACTION dataset.
arXiv Detail & Related papers (2022-11-27T18:59:17Z) - Learning Pedestrian Group Representations for Multi-modal Trajectory
Prediction [16.676008193894223]
GP-Graph has collective group representations for effective pedestrian trajectory prediction in crowded environments.
A key idea of GP-Graph is to model both individual-wise and group-wise relations as graph representations.
We propose group pooling&unpooling operations to represent a group with multiple pedestrians as one graph node.
arXiv Detail & Related papers (2022-07-20T14:58:13Z) - RSG-Net: Towards Rich Sematic Relationship Prediction for Intelligent
Vehicle in Complex Environments [72.04891523115535]
We propose RSG-Net (Road Scene Graph Net): a graph convolutional network designed to predict potential semantic relationships from object proposals.
The experimental results indicate that this network, trained on Road Scene Graph dataset, could efficiently predict potential semantic relationships among objects around the ego-vehicle.
arXiv Detail & Related papers (2022-07-16T12:40:17Z) - Multiclass-SGCN: Sparse Graph-based Trajectory Prediction with Agent
Class Embedding [12.839645409931407]
Trajectory prediction of road users in real-world scenarios is challenging because their movement patterns are complex.
Previous pedestrian-oriented works have been successful in modelling the complex interactions among pedestrians, but fail in predicting trajectories when other types of road users are involved.
We propose Multiclass-SGCN, a sparse graph convolution network based approach for multi-class trajectory prediction.
arXiv Detail & Related papers (2022-06-30T13:28:53Z) - TRiPOD: Human Trajectory and Pose Dynamics Forecasting in the Wild [77.59069361196404]
TRiPOD is a novel method for predicting body dynamics based on graph attentional networks.
To incorporate a real-world challenge, we learn an indicator representing whether an estimated body joint is visible/invisible at each frame.
Our evaluation shows that TRiPOD outperforms all prior work and state-of-the-art specifically designed for each of the trajectory and pose forecasting tasks.
arXiv Detail & Related papers (2021-04-08T20:01:00Z) - SGCN:Sparse Graph Convolution Network for Pedestrian Trajectory
Prediction [64.16212996247943]
We present a Sparse Graph Convolution Network(SGCN) for pedestrian trajectory prediction.
Specifically, the SGCN explicitly models the sparse directed interaction with a sparse directed spatial graph to capture adaptive interaction pedestrians.
visualizations indicate that our method can capture adaptive interactions between pedestrians and their effective motion tendencies.
arXiv Detail & Related papers (2021-04-04T03:17:42Z) - LaneRCNN: Distributed Representations for Graph-Centric Motion
Forecasting [104.8466438967385]
LaneRCNN is a graph-centric motion forecasting model.
We learn a local lane graph representation per actor to encode its past motions and the local map topology.
We parameterize the output trajectories based on lane graphs, a more amenable prediction parameterization.
arXiv Detail & Related papers (2021-01-17T11:54:49Z) - Implicit Latent Variable Model for Scene-Consistent Motion Forecasting [78.74510891099395]
In this paper, we aim to learn scene-consistent motion forecasts of complex urban traffic directly from sensor data.
We model the scene as an interaction graph and employ powerful graph neural networks to learn a distributed latent representation of the scene.
arXiv Detail & Related papers (2020-07-23T14:31:25Z) - CoMoGCN: Coherent Motion Aware Trajectory Prediction with Graph
Representation [12.580809204729583]
We propose a novel framework, coherent motion aware graph convolutional network (CoMoGCN), for trajectory prediction in crowded scenes with group constraints.
Our method achieves state-of-the-art performance on several different trajectory prediction benchmarks, and the best average performance among all benchmarks considered.
arXiv Detail & Related papers (2020-05-02T09:10:30Z) - It Is Not the Journey but the Destination: Endpoint Conditioned
Trajectory Prediction [59.027152973975575]
We present Predicted Conditioned Network (PECNet) for flexible human trajectory prediction.
PECNet infers distant endpoints to assist in long-range multi-modal trajectory prediction.
We show that PECNet improves state-of-the-art performance on the Stanford Drone trajectory prediction benchmark by 20.9% and on the ETH/UCY benchmark by 40.8%.
arXiv Detail & Related papers (2020-04-04T21:27:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.