Korthals T, Leitner J, Rückert U. Coordinated Heterogeneous Distributed Perception based on Latent Space Representation. CoRR. 2018.We investigate a reinforcement approach for distributed sensing based on the latent space derived from multi-modal deep generative models. Our contribution provides insights to the following benefits: Detections can be exchanged effectively between robots equipped with uni-modal sensors due to a shared latent representation of information that is trained by a Variational Auto Encoder (VAE). Sensor-fusion can be applied asynchronously due to the generative feature of the VAE. Deep Q-Networks (DQNs) are trained to minimize uncertainty in latent space by coordinating robots to a Point-of-Interest (PoI) where their...
Information gathering in a partially observable environment can be formulated as a reinforcement lea...
Korthals T, Hesse M, Leitner J, Melnik A, Rückert U. Jointly Trained Variational Autoencoder for Mul...
In many applications in robotics, there exist teams of robots operating in dynamic environments requ...
We present a novel approach of multi-modal deep generative models and apply this to coordinated hete...
Deep reinforcement learning is becoming increasingly popular for robot control algorithms, with the ...
In this work, we mathematically model the collaborative semantic perception problem with derive its ...
International audienceIn this paper, we tackle the problem of multimodal learning for autonomous rob...
In this paper, sensor network scenarios are considered where the underlying signals of interest exhi...
In this paper, we confront the problem of applying reinforcement learning to agents that perceive th...
Machine learning is one of the most promising fields of study nowadays. It is applied to various typ...
This paper introduces a sensor management approach that integrates distributed Bayesian inference (D...
Abstract – This paper introduces a sensor manage-ment approach that integrates distributed Bayesian ...
Reinforcement learning is the area of machine learning concerned with learning which actions to exec...
Creating soft robots with sophisticated, autonomous capabilities requires these systems to possess r...
Korthals T, Rudolph D, Leitner J, Hesse M, Rückert U. Multi-Modal Generative Models for Learning Epi...
Information gathering in a partially observable environment can be formulated as a reinforcement lea...
Korthals T, Hesse M, Leitner J, Melnik A, Rückert U. Jointly Trained Variational Autoencoder for Mul...
In many applications in robotics, there exist teams of robots operating in dynamic environments requ...
We present a novel approach of multi-modal deep generative models and apply this to coordinated hete...
Deep reinforcement learning is becoming increasingly popular for robot control algorithms, with the ...
In this work, we mathematically model the collaborative semantic perception problem with derive its ...
International audienceIn this paper, we tackle the problem of multimodal learning for autonomous rob...
In this paper, sensor network scenarios are considered where the underlying signals of interest exhi...
In this paper, we confront the problem of applying reinforcement learning to agents that perceive th...
Machine learning is one of the most promising fields of study nowadays. It is applied to various typ...
This paper introduces a sensor management approach that integrates distributed Bayesian inference (D...
Abstract – This paper introduces a sensor manage-ment approach that integrates distributed Bayesian ...
Reinforcement learning is the area of machine learning concerned with learning which actions to exec...
Creating soft robots with sophisticated, autonomous capabilities requires these systems to possess r...
Korthals T, Rudolph D, Leitner J, Hesse M, Rückert U. Multi-Modal Generative Models for Learning Epi...
Information gathering in a partially observable environment can be formulated as a reinforcement lea...
Korthals T, Hesse M, Leitner J, Melnik A, Rückert U. Jointly Trained Variational Autoencoder for Mul...
In many applications in robotics, there exist teams of robots operating in dynamic environments requ...