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Papers/Deep Ordinal Regression with Label Diversity

Deep Ordinal Regression with Label Diversity

Axel Berg, Magnus Oskarsson, Mark O'Connor

2020-06-29regressionAge EstimationHead Pose EstimationHistorical Color Image Dating
PaperPDFCode(official)

Abstract

Regression via classification (RvC) is a common method used for regression problems in deep learning, where the target variable belongs to a set of continuous values. By discretizing the target into a set of non-overlapping classes, it has been shown that training a classifier can improve neural network accuracy compared to using a standard regression approach. However, it is not clear how the set of discrete classes should be chosen and how it affects the overall solution. In this work, we propose that using several discrete data representations simultaneously can improve neural network learning compared to a single representation. Our approach is end-to-end differentiable and can be added as a simple extension to conventional learning methods, such as deep neural networks. We test our method on three challenging tasks and show that our method reduces the prediction error compared to a baseline RvC approach while maintaining a similar model complexity.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingUTKFaceMAE4.55Randomized Bins
Pose EstimationBIWIMAE (trained with BIWI data)2.54Direct Regression
Face ReconstructionUTKFaceMAE4.55Randomized Bins
3DBIWIMAE (trained with BIWI data)2.54Direct Regression
3DUTKFaceMAE4.55Randomized Bins
3D Face ModellingUTKFaceMAE4.55Randomized Bins
3D Face ReconstructionUTKFaceMAE4.55Randomized Bins
Historical Color Image DatingHCIMAE0.67Label Diversity
Age EstimationUTKFaceMAE4.55Randomized Bins
1 Image, 2*2 StitchiBIWIMAE (trained with BIWI data)2.54Direct Regression

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