2020
DOI: 10.5194/isprs-annals-v-2-2020-161-2020
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Uncertainty Estimation for End-to-End Learned Dense Stereo Matching via Probabilistic Deep Learning

Abstract: Abstract. Motivated by the need to identify erroneous disparity assignments, various approaches for uncertainty and confidence estimation of dense stereo matching have been presented in recent years. As in many other fields, especially deep learning based methods have shown convincing results. However, most of these methods only model the uncertainty contained in the data, while ignoring the uncertainty of the employed dense stereo matching procedure. Additionally modelling the latter, however, is particularly… Show more

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Cited by 5 publications
(2 citation statements)
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“…to identify erroneous disparity estimates in the results. Based on probabilistic convolutional neural networks, Mehltretter (2021) presents a new method for the estimation of aleatoric and epistemic uncertainty (corresponding to stochastic and systematic uncertainty). Instead of relying on features learned from disparity maps only, the corresponding 3D cost volumes are employed.…”
Section: Case Study "Uncertainty Estimation Of 3d Surfaces"mentioning
confidence: 99%
See 1 more Smart Citation
“…to identify erroneous disparity estimates in the results. Based on probabilistic convolutional neural networks, Mehltretter (2021) presents a new method for the estimation of aleatoric and epistemic uncertainty (corresponding to stochastic and systematic uncertainty). Instead of relying on features learned from disparity maps only, the corresponding 3D cost volumes are employed.…”
Section: Case Study "Uncertainty Estimation Of 3d Surfaces"mentioning
confidence: 99%
“…Fig.2Deep learning network for the joint estimation of aleatoric and epistemic uncertainty in dense stereo matching(Mehltretter 2021) …”
mentioning
confidence: 99%