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Papers/Learning Probabilistic Ordinal Embeddings for Uncertainty-...

Learning Probabilistic Ordinal Embeddings for Uncertainty-Aware Regression

Wanhua Li, Xiaoke Huang, Jiwen Lu, Jianjiang Feng, Jie zhou

2021-03-25CVPR 2021 1regressionAge EstimationAge And Gender ClassificationHistorical Color Image DatingAesthetics Quality Assessment
PaperPDFCode(official)

Abstract

Uncertainty is the only certainty there is. Modeling data uncertainty is essential for regression, especially in unconstrained settings. Traditionally the direct regression formulation is considered and the uncertainty is modeled by modifying the output space to a certain family of probabilistic distributions. On the other hand, classification based regression and ranking based solutions are more popular in practice while the direct regression methods suffer from the limited performance. How to model the uncertainty within the present-day technologies for regression remains an open issue. In this paper, we propose to learn probabilistic ordinal embeddings which represent each data as a multivariate Gaussian distribution rather than a deterministic point in the latent space. An ordinal distribution constraint is proposed to exploit the ordinal nature of regression. Our probabilistic ordinal embeddings can be integrated into popular regression approaches and empower them with the ability of uncertainty estimation. Experimental results show that our approach achieves competitive performance. Code is available at https://github.com/Li-Wanhua/POEs.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingMORPH album2 (Caucasian)MAE2.35POE
Facial Recognition and ModellingmebeblurfAccuracy60.5POE
Facial Recognition and ModellingmebeblurfMAE0.47POE
Image Quality AssessmentImage Aesthetics datasetAccuracy72.44POE
Image Quality AssessmentImage Aesthetics datasetMAE0.287POE
Face ReconstructionMORPH album2 (Caucasian)MAE2.35POE
Face ReconstructionmebeblurfAccuracy60.5POE
Face ReconstructionmebeblurfMAE0.47POE
3DMORPH album2 (Caucasian)MAE2.35POE
3DmebeblurfAccuracy60.5POE
3DmebeblurfMAE0.47POE
3D Face ModellingMORPH album2 (Caucasian)MAE2.35POE
3D Face ModellingmebeblurfAccuracy60.5POE
3D Face ModellingmebeblurfMAE0.47POE
3D Face ReconstructionMORPH album2 (Caucasian)MAE2.35POE
3D Face ReconstructionmebeblurfAccuracy60.5POE
3D Face ReconstructionmebeblurfMAE0.47POE
Historical Color Image DatingHCIMAE0.67POE
Historical Color Image DatingHCIaccuracy54.68POE
Age EstimationMORPH album2 (Caucasian)MAE2.35POE
Age EstimationmebeblurfAccuracy60.5POE
Age EstimationmebeblurfMAE0.47POE

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