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DAG-Net: Double Attentive Graph Neural Network for Trajectory Forecasting

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Understanding human motion behaviour is a critical task for several possible applications like self-driving cars or social robots, and in general for all those settings where an autonomous agent has to navigate inside a human-centric environment. This is non-trivial because human motion is inherently multi-modal: given a history of human motion paths, there are many plausible ways by which people could move in the future. Additionally, people activities are often driven by goals, e.g. reaching particular locations or interacting with the environment. We address the aforementioned aspects by proposing a new recurrent generative model that considers both single agents' future goals and interactions between different agents. The model exploits a double attention-based graph neural network to collect information about the mutual influences among different agents and to integrate it with data about agents' possible future objectives. Our proposal is general enough to be applied to different scenarios: the model achieves state-of-the-art results in both urban environments and also in sports applications.

Alessio Monti, Alessia Bertugli, Simone Calderara, Rita Cucchiara• 2020

Related benchmarks

TaskDatasetResultRank
Multi-agent Trajectory PredictionFootball Trajectory Dataset (test)
JADE1.01
20
Trajectory PredictionTrajAir 111Days 1.0 (test)
Min ADE (2.0s)0.77
13
Trajectory ForecastingTrajnet++
ADE0.66
5
Trajectory ForecastingBasketball SportVU (20-10)
ADE2.05
4
Trajectory ForecastingBasketball SportVU (20-20)
ADE4.07
4
Trajectory ForecastingBasketball SportVU (ATK)
ADE8.98
4
Trajectory ForecastingBasketball SportVU (DEF)
ADE6.87
4
Trajectory ForecastingBasketball SportVU (20-30)
ADE5.01
4
Trajectory PredictionSDD
ADE0.53
4
Trajectory ForecastingStanford Drone Dataset (test)
ADE0.53
3
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