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Rob Fergus

Researcher at New York University

Publications -  175
Citations -  103027

Rob Fergus is an academic researcher from New York University. The author has contributed to research in topics: Object (computer science) & Reinforcement learning. The author has an hindex of 82, co-authored 165 publications receiving 85690 citations. Previous affiliations of Rob Fergus include California Institute of Technology & University of Oxford.

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Training Convolutional Networks with Noisy Labels

TL;DR: An extra noise layer is introduced into the network which adapts the network outputs to match the noisy label distribution and can be estimated as part of the training process and involve simple modifications to current training infrastructures for deep networks.
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Stochastic Pooling for Regularization of Deep Convolutional Neural Networks

TL;DR: In this article, the authors proposed a stochastic pooling method for regularizing large convolutional neural networks, which randomly picks the activation within each pooling region according to a multinomial distribution.
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Depth Map Prediction from a Single Image using a Multi-Scale Deep Network

TL;DR: This paper employs two deep network stacks: one that makes a coarse global prediction based on the entire image, and another that refines this prediction locally, and applies a scale-invariant error to help measure depth relations rather than scale.
Proceedings ArticleDOI

Indoor scene segmentation using a structured light sensor

TL;DR: This paper uses a CRF-based model to evaluate a range of different representations for depth information and proposes a novel prior on 3D location, revealing that the combination of depth and intensity images gives dramatic performance gains over intensity images alone.
Proceedings ArticleDOI

A Bayesian approach to unsupervised one-shot learning of object categories

TL;DR: A Bayesian network formulation for relational shape matching is presented and the new Bethe free energy approach is used to estimate the pairwise correspondences between links of the template graphs and the data.