This research addresses the problem of predicting future agent behaviour in both single and multi agent settings where multiple agents can enter and exit an environment, and the environment can change dynamically. Both short-term and long-term context was captured in the given domain and utilised neural memory networks to use the derived knowledge for the prediction task. The efficacy of the techniques was demonstrated by applying it to aircraft path prediction, passenger movement prediction in crowded railway stations, driverless car steering, predicting next shot location in tennis and for predicting soccer match outcomes
Context-awareness is viewed as one of the most important aspects in the emerging ubiquitous computin...
The ability to forecast human motion, called ``human trajectory forecasting", is a critical requirem...
Autonomous systems deployed in human environments must have the ability to understand and anticipate...
© 2016 IEEE. In this letter, we propose a novel approach for agent motion prediction in cluttered en...
Human motion and behaviour in crowded spaces is influenced by several factors, such as the dynamics ...
To accurately predict future positions of different agents in traffic scenarios is crucial for safel...
Trajectory prediction in urban mixed-traffic zones (a.k. a. shared spaces) is critical for many inte...
Pedestrians and drivers are expected to safely navigate complex urban environments along with severa...
Predicting long-term human motion is challenging due to the non-linearity, multi-modality, and inher...
Autonomous vehicles are expected to drive in complex scenarios with several independent non cooperat...
Understanding human behavior is a key skill for intelligent systems that share physical and emotiona...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Understanding human motion behaviour is a critical task for several possible applications like self-...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Predicting future locations of agents in the scene is an important problem in self-driving. In recen...
Context-awareness is viewed as one of the most important aspects in the emerging ubiquitous computin...
The ability to forecast human motion, called ``human trajectory forecasting", is a critical requirem...
Autonomous systems deployed in human environments must have the ability to understand and anticipate...
© 2016 IEEE. In this letter, we propose a novel approach for agent motion prediction in cluttered en...
Human motion and behaviour in crowded spaces is influenced by several factors, such as the dynamics ...
To accurately predict future positions of different agents in traffic scenarios is crucial for safel...
Trajectory prediction in urban mixed-traffic zones (a.k. a. shared spaces) is critical for many inte...
Pedestrians and drivers are expected to safely navigate complex urban environments along with severa...
Predicting long-term human motion is challenging due to the non-linearity, multi-modality, and inher...
Autonomous vehicles are expected to drive in complex scenarios with several independent non cooperat...
Understanding human behavior is a key skill for intelligent systems that share physical and emotiona...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Understanding human motion behaviour is a critical task for several possible applications like self-...
We introduce a Deep Stochastic IOC1 RNN Encoderdecoder framework, DESIRE, for the task of future pre...
Predicting future locations of agents in the scene is an important problem in self-driving. In recen...
Context-awareness is viewed as one of the most important aspects in the emerging ubiquitous computin...
The ability to forecast human motion, called ``human trajectory forecasting", is a critical requirem...
Autonomous systems deployed in human environments must have the ability to understand and anticipate...