Robots in complex multi-agent environments should reason about the intentions of observed and currently unobserved agents. In this paper, we present a new learning-based method for prediction and planning in complex multi-agent environments where the states of the other agents are partially-observed. Our approach, Active Visual Planning (AVP), uses high-dimensional observations to learn a flow-based generative model of multi-agent joint trajectories, including unobserved agents that may be revealed in the near future, depending on the robot's actions. Our predictive model is implemented using deep neural networks that map raw observations to future detection and pose trajectories and is learned entirely offline using a dataset of recorded o...
Abstract. When robots work alongside humans for performing collab-orative tasks, they need to be abl...
Abstract—Our goal is to enable robots to produce mo-tion that is suitable for human-robot collaborat...
Understanding activities of people in a monitored environment is a topic of active research, motivat...
142 pagesAs we move towards fully autonomous robotic systems, one of the key challenges is the integ...
My research activity focuses on the integration of acting, learning and planning. The main objective...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Building autonomous agents that learn to make predictions and take actions in sequential environment...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
We train embodied neural networks to plan and navigate unseen complex 3D environments, emphasising r...
Robots frequently face complex tasks that require more than one action, where sequential decision-ma...
Autonomous robotic systems are becoming an increasingly viable solution to many of the world's compl...
Predicting the future state of a scene with moving objects is a task that humans handle with ease. T...
This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs)....
Abstract. Applying multiagent systems in real world scenarios requires some essential research quest...
We present a novel approach for decreasing state uncertainty in planning prior to solving the planni...
Abstract. When robots work alongside humans for performing collab-orative tasks, they need to be abl...
Abstract—Our goal is to enable robots to produce mo-tion that is suitable for human-robot collaborat...
Understanding activities of people in a monitored environment is a topic of active research, motivat...
142 pagesAs we move towards fully autonomous robotic systems, one of the key challenges is the integ...
My research activity focuses on the integration of acting, learning and planning. The main objective...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
Building autonomous agents that learn to make predictions and take actions in sequential environment...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
We train embodied neural networks to plan and navigate unseen complex 3D environments, emphasising r...
Robots frequently face complex tasks that require more than one action, where sequential decision-ma...
Autonomous robotic systems are becoming an increasingly viable solution to many of the world's compl...
Predicting the future state of a scene with moving objects is a task that humans handle with ease. T...
This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs)....
Abstract. Applying multiagent systems in real world scenarios requires some essential research quest...
We present a novel approach for decreasing state uncertainty in planning prior to solving the planni...
Abstract. When robots work alongside humans for performing collab-orative tasks, they need to be abl...
Abstract—Our goal is to enable robots to produce mo-tion that is suitable for human-robot collaborat...
Understanding activities of people in a monitored environment is a topic of active research, motivat...