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We Know Where We Don't Know: 3D Bayesian CNNs for Credible Geometric
  Uncertainty

We Know Where We Don't Know: 3D Bayesian CNNs for Credible Geometric Uncertainty

23 October 2019
T. LaBonte
Carianne Martinez
S. Roberts
    UQCV
    3DV
ArXivPDFHTML

Papers citing "We Know Where We Don't Know: 3D Bayesian CNNs for Credible Geometric Uncertainty"

6 / 6 papers shown
Title
A Review of Bayesian Uncertainty Quantification in Deep Probabilistic Image Segmentation
A Review of Bayesian Uncertainty Quantification in Deep Probabilistic Image Segmentation
M. Valiuddin
R. V. Sloun
C.G.A. Viviers
Peter H. N. de With
Fons van der Sommen
UQCV
96
1
0
25 Nov 2024
GaIA: Graphical Information Gain based Attention Network for Weakly
  Supervised Point Cloud Semantic Segmentation
GaIA: Graphical Information Gain based Attention Network for Weakly Supervised Point Cloud Semantic Segmentation
Min Seok Lee
Seok Woo Yang
S. W. Han
3DPC
24
21
0
02 Oct 2022
Leveraging Stochastic Predictions of Bayesian Neural Networks for Fluid
  Simulations
Leveraging Stochastic Predictions of Bayesian Neural Networks for Fluid Simulations
Maximilian Mueller
Robin Greif
Frank Jenko
Nils Thuerey
24
3
0
02 May 2022
A Survey of Uncertainty in Deep Neural Networks
A Survey of Uncertainty in Deep Neural Networks
J. Gawlikowski
Cedrique Rovile Njieutcheu Tassi
Mohsin Ali
Jongseo Lee
Matthias Humt
...
R. Roscher
Muhammad Shahzad
Wen Yang
R. Bamler
Xiaoxiang Zhu
BDL
UQCV
OOD
66
1,112
0
07 Jul 2021
Simple and Scalable Predictive Uncertainty Estimation using Deep
  Ensembles
Simple and Scalable Predictive Uncertainty Estimation using Deep Ensembles
Balaji Lakshminarayanan
Alexander Pritzel
Charles Blundell
UQCV
BDL
278
5,695
0
05 Dec 2016
Dropout as a Bayesian Approximation: Representing Model Uncertainty in
  Deep Learning
Dropout as a Bayesian Approximation: Representing Model Uncertainty in Deep Learning
Y. Gal
Zoubin Ghahramani
UQCV
BDL
287
9,167
0
06 Jun 2015
1