This paper presents a probabilistic framework to obtain both reliable and fast uncertainty estimates for predictions with Deep Neural Networks (DNNs). Our main contribution is a practical and principled combination of DNNs with sparse Gaussian Processes (GPs). We prove theoretically that DNNs can be seen as a special case of sparse GPs, namely mixtures of GP experts (MoE-GP), and we devise a learning algorithm that brings the derived theory into practice. In experiments from two different robotic tasks – inverse dynamics of a manipulator and object detection on a micro-aerial vehicle (MAV) – we show the effectiveness of our approach in terms of predictive uncertainty, proved scalability, and runtime efficiency on a Jetson TX2. We thus arg...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
The focus in deep learning research has been mostly to push the limits of prediction accuracy. Howev...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...
We propose a simple method that combines neural networks and Gaussian processes. The proposed method...
Neural networks predictions are unreliable when the input sample is out of the training distribution...
Deep learning, in particular neural networks, achieved remarkable success in the recent years. Howev...
Gaussian process [1] and it’s variants of deep structures like deep gaussian processes [2] and convo...
Diversity of environments is a key challenge that causes learned robotic controllers to fail due to ...
Artificial neural networks, including deep neural networks, play a central role in data-driven scien...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
Deep neural networks (DNNs) have excellent representative power and are state of the art classifiers...
Modelling robot dynamics accurately is essential for control, motion optimisation and safe human-rob...
International audienceAs deep learning applications are becoming more and more pervasive in robotics...
Deep learning models such as convolutional neural networks have brought advances in computer vision ...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
The focus in deep learning research has been mostly to push the limits of prediction accuracy. Howev...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...
We propose a simple method that combines neural networks and Gaussian processes. The proposed method...
Neural networks predictions are unreliable when the input sample is out of the training distribution...
Deep learning, in particular neural networks, achieved remarkable success in the recent years. Howev...
Gaussian process [1] and it’s variants of deep structures like deep gaussian processes [2] and convo...
Diversity of environments is a key challenge that causes learned robotic controllers to fail due to ...
Artificial neural networks, including deep neural networks, play a central role in data-driven scien...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
Deep neural networks (DNNs) have excellent representative power and are state of the art classifiers...
Modelling robot dynamics accurately is essential for control, motion optimisation and safe human-rob...
International audienceAs deep learning applications are becoming more and more pervasive in robotics...
Deep learning models such as convolutional neural networks have brought advances in computer vision ...
Recent works show that the data distribution in a network's latent space is useful for estimating cl...
The focus in deep learning research has been mostly to push the limits of prediction accuracy. Howev...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...