Andrew Fitzgibbon
Microsoft
262 Papers
3.4K Citations
Andrew Fitzgibbon is an academic researcher from Microsoft. The author has contributed to research in topics: Computer science & Pose. The author has an hindex of 72, co-authored 255 publications. Previous affiliations of Andrew Fitzgibbon include University of Oxford & University of Edinburgh.
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Papers
•Posted Content
Hybrid VAE: Improving Deep Generative Models using Partial Observations.
TL;DR: It is shown that such a combination is beneficial because the unlabeled data acts as a data-driven form of regularization, allowing generative models trained on few labeled samples to reach the performance of fully-supervised generative model trained on much larger datasets.
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Patent
Online camera calibration
Andrew Fitzgibbon,Antonio Criminisi,Srikumar Ramalingam +2 more
- 22 May 2007
TL;DR: In this paper, a prior distribution of camera parameters for a family of cameras is estimated and used to obtain accurate calibration results for individual cameras of the camera family even where the calibration is carried out online, in an environment which is structure-poor.
11
Patent
In-Scene Editing of Image Sequences
Andrew Fitzgibbon,Toby Sharp +1 more
- 19 Jan 2007
TL;DR: In this paper, a simple, easy-to-use system is described for achieving in-scene editing, where a user specifies projection constraints by making 2D actions on one or more images in the image sequence.
10
Lack-of-fit Detection using the Run-distribution Test
Andrew Fitzgibbon,Robert B. Fisher +1 more
- 02 May 1994
TL;DR: An effective method of testing the lack-of-fit of a parametric model to data, with applications to computer vision, is presented.
What can pictures tell us about web pages?: improving document search using images
Sergio Rodriguez-Vaamonde,Lorenzo Torresani,Andrew Fitzgibbon +2 more
- 28 Jul 2013
TL;DR: This paper presents a Web-scalable system that exploits a pure text-based search engine to find an initial set of candidate documents for a given query, then, the candidate set is reranked using visual information extracted from the images contained in the pages.
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