Dense Uncertainty Estimation via an Ensemble-based Conditional Latent
Variable Model
- URL: http://arxiv.org/abs/2111.11055v1
- Date: Mon, 22 Nov 2021 08:54:10 GMT
- Title: Dense Uncertainty Estimation via an Ensemble-based Conditional Latent
Variable Model
- Authors: Jing Zhang, Yuchao Dai, Mehrtash Harandi, Yiran Zhong, Nick Barnes,
Richard Hartley
- Abstract summary: We argue that the aleatoric uncertainty is an inherent attribute of the data and can only be correctly estimated with an unbiased oracle model.
We propose a new sampling and selection strategy at train time to approximate the oracle model for aleatoric uncertainty estimation.
Our results show that our solution achieves both accurate deterministic results and reliable uncertainty estimation.
- Score: 68.34559610536614
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Uncertainty estimation has been extensively studied in recent literature,
which can usually be classified as aleatoric uncertainty and epistemic
uncertainty. In current aleatoric uncertainty estimation frameworks, it is
often neglected that the aleatoric uncertainty is an inherent attribute of the
data and can only be correctly estimated with an unbiased oracle model. Since
the oracle model is inaccessible in most cases, we propose a new sampling and
selection strategy at train time to approximate the oracle model for aleatoric
uncertainty estimation. Further, we show a trivial solution in the dual-head
based heteroscedastic aleatoric uncertainty estimation framework and introduce
a new uncertainty consistency loss to avoid it. For epistemic uncertainty
estimation, we argue that the internal variable in a conditional latent
variable model is another source of epistemic uncertainty to model the
predictive distribution and explore the limited knowledge about the hidden true
model. We validate our observation on a dense prediction task, i.e.,
camouflaged object detection. Our results show that our solution achieves both
accurate deterministic results and reliable uncertainty estimation.
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