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Dive into the research topics where Theophane Weber is active.

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Featured researches published by Theophane Weber.


Science | 2018

Neural scene representation and rendering

S. M. Ali Eslami; Danilo Jimenez Rezende; Frederic Besse; Fabio Viola; Ari S. Morcos; Marta Garnelo; Avraham Ruderman; Andrei A. Rusu; Ivo Danihelka; Karol Gregor; David P. Reichert; Lars Buesing; Theophane Weber; Oriol Vinyals; Dan Rosenbaum; Neil C. Rabinowitz; Helen King; Chloe Hillier; Matt Botvinick; Daan Wierstra; Koray Kavukcuoglu; Demis Hassabis

A scene-internalizing computer program To train a computer to “recognize” elements of a scene supplied by its visual sensors, computer scientists typically use millions of images painstakingly labeled by humans. Eslami et al. developed an artificial vision system, dubbed the Generative Query Network (GQN), that has no need for such labeled data. Instead, the GQN first uses images taken from different viewpoints and creates an abstract description of the scene, learning its essentials. Next, on the basis of this representation, the network predicts what the scene would look like from a new, arbitrary viewpoint. Science, this issue p. 1204 A computer vision system predicts how a 3D scene looks from any viewpoint after just a few 2D views from other viewpoints. Scene representation—the process of converting visual sensory data into concise descriptions—is a requirement for intelligent behavior. Recent work has shown that neural networks excel at this task when provided with large, labeled datasets. However, removing the reliance on human labeling remains an important open problem. To this end, we introduce the Generative Query Network (GQN), a framework within which machines learn to represent scenes using only their own sensors. The GQN takes as input images of a scene taken from different viewpoints, constructs an internal representation, and uses this representation to predict the appearance of that scene from previously unobserved viewpoints. The GQN demonstrates representation learning without human labels or domain knowledge, paving the way toward machines that autonomously learn to understand the world around them.


neural information processing systems | 2015

Gradient estimation using stochastic computation graphs

John Schulman; Nicolas Heess; Theophane Weber; Pieter Abbeel


neural information processing systems | 2016

Attend, infer, repeat: fast scene understanding with generative models

S. M. Ali Eslami; Nicolas Heess; Theophane Weber; Yuval Tassa; David Szepesvari; Koray Kavukcuoglu; Geoffrey E. Hinton


neural information processing systems | 2017

Imagination-Augmented Agents for Deep Reinforcement Learning

Sébastien Racanière; Theophane Weber; David P. Reichert; Lars Buesing; Arthur Guez; Danilo Jimenez Rezende; Adrià Puigdomènech Badia; Oriol Vinyals; Nicolas Heess; Yujia Li; Razvan Pascanu; Peter Battaglia; Demis Hassabis; David Silver; Daan Wierstra


arXiv: Computer Vision and Pattern Recognition | 2017

Visual Interaction Networks.

Nicholas Watters; Andrea Tacchetti; Theophane Weber; Razvan Pascanu; Peter Battaglia; Daniel Zoran


neural information processing systems | 2017

Visual Interaction Networks: Learning a Physics Simulator from Video

Nicholas Watters; Daniel Zoran; Theophane Weber; Peter Battaglia; Razvan Pascanu; Andrea Tacchetti


arXiv: Artificial Intelligence | 2017

Learning model-based planning from scratch.

Razvan Pascanu; Yujia Li; Oriol Vinyals; Nicolas Heess; Lars Buesing; Sébastien Racanière; David P. Reichert; Theophane Weber; Daan Wierstra; Peter Battaglia


arXiv: Learning | 2018

Learning and Querying Fast Generative Models for Reinforcement Learning.

Lars Buesing; Theophane Weber; Sébastien Racanière; S. M. Ali Eslami; Danilo Jimenez Rezende; David P. Reichert; Fabio Viola; Frederic Besse; Karol Gregor; Demis Hassabis; Daan Wierstra


Behavioral and Brain Sciences | 2017

Building machines that learn and think for themselves

Matthew Botvinick; David G. T. Barrett; Peter Battaglia; Nando de Freitas; Darshan Kumaran; Joel Z. Leibo; Timothy P. Lillicrap; Joseph Modayil; Shakir Mohamed; Neil C. Rabinowitz; Danilo Jimenez Rezende; Adam Santoro; Tom Schaul; Christopher Summerfield; Greg Wayne; Theophane Weber; Daan Wierstra; Shane Legg; Demis Hassabis


neural information processing systems | 2015

Reinforced Variational Inference

Theophane Weber; Nicolas Heess; A Eslami; J Schulman; D Wingate; David Silver

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Daan Wierstra

Dalle Molle Institute for Artificial Intelligence Research

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Peter Battaglia

Massachusetts Institute of Technology

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Oriol Vinyals

University of California

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