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Eric Brachmann

Researcher at Heidelberg University

Publications -  45
Citations -  4437

Eric Brachmann is an academic researcher from Heidelberg University. The author has contributed to research in topics: Pose & RANSAC. The author has an hindex of 22, co-authored 40 publications receiving 2972 citations. Previous affiliations of Eric Brachmann include Dresden University of Technology.

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Book ChapterDOI

Learning 6D Object Pose Estimation Using 3D Object Coordinates

TL;DR: This work addresses the problem of estimating the 6D Pose of specific objects from a single RGB-D image by presenting a learned, intermediate representation in form of a dense 3D object coordinate labelling paired with a dense class labelling.
Proceedings ArticleDOI

Uncertainty-Driven 6D Pose Estimation of Objects and Scenes from a Single RGB Image

TL;DR: A regularized, auto-context regression framework is developed which iteratively reduces uncertainty in object coordinate and object label predictions and an efficient way to marginalize object coordinate distributions over depth is introduced to deal with missing depth information.
Proceedings ArticleDOI

DSAC — Differentiable RANSAC for Camera Localization

TL;DR: In this article, a differentiable version of RANSAC, called DSAC, is applied to the problem of camera localization, where deep learning has so far failed to improve on traditional approaches.
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DSAC - Differentiable RANSAC for Camera Localization

TL;DR: DSAC is applied to the problem of camera localization, where deep learning has so far failed to improve on traditional approaches, and it is demonstrated that by directly minimizing the expected loss of the output camera poses, robustly estimated by RANSAC, it achieves an increase in accuracy.
Proceedings ArticleDOI

Learning Less is More - 6D Camera Localization via 3D Surface Regression

TL;DR: In this paper, a fully convolutional neural network (FCN) is used to predict the 6D camera pose from a single RGB image in a given 3D environment, and the network is prepended to a new end-to-end trainable pipeline.