Visual Learning Lab Heidelberg

12 posts

Visual Learning Lab Heidelberg banner
Visual Learning Lab Heidelberg

Visual Learning Lab Heidelberg

@LabHeidelberg

Visual Learning Lab at Heidelberg University with Carsten Rother

Heidelberg, Germany Inscrit le Eylül 2018
23 Abonnements74 Abonnés
Visual Learning Lab Heidelberg retweeté
Eric Brachmann
Eric Brachmann@eric_brachmann·
Two papers accepted to @ICCV19! Neural-Guided RANSAC (NG-RANSAC): A neural network guiding RANSAC data point selection, and Expert Sample Consensus (ESAC): An ensemble of scene coordinate experts for scalable camera re-localization. #ICCV2019 #ComputerVision #DeepLearning
English
2
8
49
0
Visual Learning Lab Heidelberg retweeté
Eric Brachmann
Eric Brachmann@eric_brachmann·
This years @ICCV19 comes with the 5th (!) International Workshop on Recovering 6D Object Pose (R6D). Past iterations were incredible, and YOU can be an active part of the current one :) Submit a paper until 11th August! More info: cmp.felk.cvut.cz/sixd/workshop_… #ICCV2019 #ICCV19 #ICCV
Eric Brachmann tweet media
English
0
9
18
0
Visual Learning Lab Heidelberg retweeté
Eric Brachmann
Eric Brachmann@eric_brachmann·
Update for NG-RANSAC as requested by #ICCV2019 reviewers. In particular, we included a better comparison to USAC.
English
2
4
24
0
Visual Learning Lab Heidelberg retweeté
Eric Brachmann
Eric Brachmann@eric_brachmann·
What to do if your re-localization method works for small environments but not big ones? Cut it into small pieces of course! Straight forward, but interesting implications if you still want to train everything jointly and end-to-end. #ICCV2019 #ICCV19 #ICCV #DeepLearning
English
1
8
16
0
Visual Learning Lab Heidelberg retweeté
Eric Brachmann
Eric Brachmann@eric_brachmann·
We've published @pytorch code of Differentiable RANSAC for a toy problem: fitting lines. A CNN learns to predict points (middle) to which we robustly fit lines, trained end2end with DSAC. Right: A CNN which learns to predict line parameters directly. Code: github.com/vislearn/DSACL…
English
1
61
191
0