Robotic grasping is a fundamental skill required for object manipulation...
Detecting objects and estimating their 6D poses is essential for automat...
We introduce a novel deep reinforcement learning (RL) approach called
Mo...
Bayesian deep learning (BDL) is a promising approach to achieve
well-cal...
Learning skills by imitation is a promising concept for the intuitive
te...
Adaptive Mesh Refinement (AMR) is crucial for mesh-based simulations, as...
Mixtures of Experts (MoE) are known for their ability to learn complex
c...
Physical simulations that accurately model reality are crucial for many
...
Recent advances in reinforcement learning (RL) have increased the promis...
In many scenarios, observations from more than one sensor modality are
a...
-based reinforcement learning (ERL) algorithms treat reinforcement
learn...
Improved state space models, such as Recurrent State Space Models (RSSMs...
Humans intuitively solve tasks in versatile ways, varying their behavior...
Movement Primitives (MPs) are a well-known concept to represent and gene...
Variational inference with Gaussian mixture models (GMMs) enables learni...
Sensor fusion can significantly improve the performance of many computer...
Estimating 6D poses of objects is an essential computer vision task. How...
Learning robotic tasks in the real world is still highly challenging and...
Recurrent State-space models (RSSMs) are highly expressive models for
le...
It is well-known that inverse dynamics models can improve tracking
perfo...
Most successful stochastic black-box optimizers, such as CMA-ES, use ran...
In recent decades, advancements in motion learning have enabled robots t...
Meta-learning is widely used in few-shot classification and function
reg...
Retrieving objects from clutters is a complex task, which requires multi...
A long-cherished vision in robotics is to equip robots with skills that ...
The notion of symbiosis has been increasingly mentioned in research on
p...
Forecasting driving behavior or other sensor measurements is an essentia...
Inverse Reinforcement Learning infers a reward function from expert
demo...
Cognitive cooperative assistance in robot-assisted surgery holds the
pot...
Deep Reinforcement Learning (DRL) is a promising approach for teaching r...
The agricultural domain offers a working environment where many human
la...
This paper proposes a differentiable robust LQR layer for reinforcement
...
For robots to work alongside humans and perform in unstructured environm...
While classic control theory offers state of the art solutions in many
p...
Trust region methods are a popular tool in reinforcement learning as the...
Estimating accurate forward and inverse dynamics models is a crucial
com...
This work adds on to the on-going efforts to provide more autonomy to sp...
Many modern methods for imitation learning and inverse reinforcement
lea...
Physically disentangling entangled objects from each other is a problem
...
Modelling highly multi-modal data is a challenging problem in machine
le...
Many methods for machine learning rely on approximate inference from
int...
In order to integrate uncertainty estimates into deep time-series modell...
Trust-region methods have yielded state-of-the-art results in policy sea...
As robots and other intelligent agents move from simple environments and...
Probabilistic representations of movement primitives open important new
...
One main challenge for the design of networks is that traffic load is no...
Recently, deep reinforcement learning (RL) methods have been applied
suc...
Swarm systems constitute a challenging problem for reinforcement learnin...
In this paper, we investigate how to learn to control a group of coopera...
Direct contextual policy search methods learn to improve policy paramete...