Sustainability and Machine Learning Group
Sustainability and Machine Learning Group
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Learning Dynamic Tasks on a Large-scale Soft Robot in a Handful of Trials
Unlike traditional rigid robots, soft robots offer more flexibility, compliance, and adaptability. They are also typically cheaper to …
Sicelukwanda Zwane
,
Daniel G. Cheney
,
Curtis C Johnson
,
Yicheng Luo
,
Yasemin Bekiroğlu
,
Marc Killpack
,
Marc Deisenroth
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Gaussian Processes on Cellular Complexes
In recent years, there has been considerable interest in developing machine learning models on graphs to account for topological …
Mathieu Alain
,
So Takao
,
Brooks Paige
,
Marc Deisenroth
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URL
Iterated INLA for State and Parameter Estimation in Nonlinear Dynamical Systems
Data assimilation (DA) methods use priors arising from differential equations to robustly interpolate and extrapolate data. Popular …
Rafael Anderka
,
Marc Deisenroth
,
So Takao
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URL
A Unifying Variational Framework for Gaussian Process Motion Planning
To control how a robot moves, motion planning algorithms must compute paths in high-dimensional state spaces while accounting for …
Lucas Cosier
,
Rares Iordan
,
Sicelukwanda Zwane
,
Giovanni Franzese
,
James T. Wilson
,
Marc Deisenroth
,
Alexander Terenin
,
Yasemin Bekiroğlu
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Interpretable Deep Gaussian Processes for Geospatial Tasks
Daniel Augusto de Souza
,
Daniel Giles
,
Marc Deisenroth
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Scalable Data Assimilation with Message Passing
Data assimilation is a core component of numerical weather prediction systems. The large quantity of data processed during assimilation …
Oscar Key
,
So Takao
,
Daniel Giles
,
Marc Deisenroth
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Thin and Deep Gaussian Processes
Gaussian processes (GPs) can provide a principled approach to uncertainty quantification with easy-to-interpret kernel hyperparameters, …
Daniel Augusto de Souza
,
Alexander Nikitin
,
S. T. John
,
Magnus Ross
,
Mauricio A. Álvarez
,
Marc Deisenroth
,
João P. P. Gomes
,
Diego Mesquita
,
César Lincoln Mattos
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Neural Field Movement Primitives for Joint Modelling of Scenes and Motions
This paper presents a novel Learning from Demonstration (LfD) method that uses neural fields to learn new skills efficiently and …
Ahmet Tekden
,
Marc Deisenroth
,
Yasemin Bekiroğlu
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Sliding Touch-based Exploration for Modeling Unknown Object Shape with Multi-finger Hands
Efficient and accurate 3D object shape reconstruction contributes significantly to the success of a robot’s physical interaction …
Yiting Chen
,
Ahmet E. Tekden
,
Marc Deisenroth
,
Yasemin Bekiroğlu
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Safe Trajectory Sampling in Model-based Reinforcement Learning
Model-based reinforcement learning aims to learn a policy to solve a target task by leveraging a learned dynamics model. This approach, …
Sicelukwanda Zwane
,
Denis Hadjivelichkov
,
Yicheng Luo
,
Yasemin Bekiroğlu
,
Dimitrios Kanoulas
,
Marc Deisenroth
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