Publication:

A General Framework for Uncertainty Estimation in Deep Learning

Date

Date

Date
2020
Journal Article
Published version

Citations

Citation copied

Loquercio, A., Segu, M., & Scaramuzza, D. (2020). A General Framework for Uncertainty Estimation in Deep Learning. IEEE Robotics and Automation Letters, 5(2), 3153–3160. https://doi.org/10.1109/lra.2020.2974682

Abstract

Abstract

Abstract

Neural networks predictions are unreliable when the input sample is out of the training distribution or corrupted by noise. Being able to detect such failures automatically is fundamental to integrate deep learning algorithms into robotics. Current approaches for uncertainty estimation of neural networks require changes to the network and optimization process, typically ignore prior knowledge about the data, and tend to make over-simplifying assumptions which underestimate uncertainty. To address these limitations, we propose a novel

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608 since deposited on 2021-01-27
Acq. date: 2025-11-12

Views

169 since deposited on 2021-01-27
Acq. date: 2025-11-12

Additional indexing

Creators (Authors)

  • Loquercio, Antonio
    affiliation.icon.alt
  • Segu, Mattia
    affiliation.icon.alt
  • Scaramuzza, Davide
    affiliation.icon.alt

Journal/Series Title

Journal/Series Title

Journal/Series Title

Volume

Volume

Volume
5

Number

Number

Number
2

Page range/Item number

Page range/Item number

Page range/Item number
3153

Page end

Page end

Page end
3160

Item Type

Item Type

Item Type
Journal Article

Dewey Decimal Classifikation

Dewey Decimal Classifikation

Dewey Decimal Classifikation

Scope

Scope

Scope
Discipline-based scholarship (basic research)

Language

Language

Language
English

Publication date

Publication date

Publication date
2020

Date available

Date available

Date available
2021-01-27

ISSN or e-ISSN

ISSN or e-ISSN

ISSN or e-ISSN
2377-3766

OA Status

OA Status

OA Status
Green

Other Identification Number

Other Identification Number

Other Identification Number
merlin-id:20306

Metrics

Downloads

608 since deposited on 2021-01-27
Acq. date: 2025-11-12

Views

169 since deposited on 2021-01-27
Acq. date: 2025-11-12

Citations

Citation copied

Loquercio, A., Segu, M., & Scaramuzza, D. (2020). A General Framework for Uncertainty Estimation in Deep Learning. IEEE Robotics and Automation Letters, 5(2), 3153–3160. https://doi.org/10.1109/lra.2020.2974682

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Files
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Files

Files

Files
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