Nyeong-Ho Shin, Seon-Ho Lee, Chang-Su Kim
A novel ordinal regression algorithm, called moving window regression (MWR), is proposed in this paper. First, we propose the notion of relative rank ($\rho$-rank), which is a new order representation scheme for input and reference instances. Second, we develop global and local relative regressors ($\rho$-regressors) to predict $\rho$-ranks within entire and specific rank ranges, respectively. Third, we refine an initial rank estimate iteratively by selecting two reference instances to form a search window and then estimating the $\rho$-rank within the window. Extensive experiments results show that the proposed algorithm achieves the state-of-the-art performances on various benchmark datasets for facial age estimation and historical color image classification. The codes are available at https://github.com/nhshin-mcl/MWR.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Facial Recognition and Modelling | MORPH album2 (Caucasian) | MAE | 2.13 | MWR |
| Facial Recognition and Modelling | ChaLearn 2015 | MAE | 2.95 | MWR |
| Facial Recognition and Modelling | UTKFace | MAE | 4.37 | MWR |
| Facial Recognition and Modelling | FGNET | MAE | 2.23 | MWR |
| Facial Recognition and Modelling | CACD | MAE | 4.41 | MWR |
| Facial Recognition and Modelling | MORPH Album2 | CS | 95 | MWR |
| Facial Recognition and Modelling | MORPH Album2 | MAE | 2 | MWR |
| Facial Recognition and Modelling | Adience Age | Accuracy (5-fold) | 62.6 | MWR |
| Face Reconstruction | MORPH album2 (Caucasian) | MAE | 2.13 | MWR |
| Face Reconstruction | ChaLearn 2015 | MAE | 2.95 | MWR |
| Face Reconstruction | UTKFace | MAE | 4.37 | MWR |
| Face Reconstruction | FGNET | MAE | 2.23 | MWR |
| Face Reconstruction | CACD | MAE | 4.41 | MWR |
| Face Reconstruction | MORPH Album2 | CS | 95 | MWR |
| Face Reconstruction | MORPH Album2 | MAE | 2 | MWR |
| Face Reconstruction | Adience Age | Accuracy (5-fold) | 62.6 | MWR |
| 3D | MORPH album2 (Caucasian) | MAE | 2.13 | MWR |
| 3D | ChaLearn 2015 | MAE | 2.95 | MWR |
| 3D | UTKFace | MAE | 4.37 | MWR |
| 3D | FGNET | MAE | 2.23 | MWR |
| 3D | CACD | MAE | 4.41 | MWR |
| 3D | MORPH Album2 | CS | 95 | MWR |
| 3D | MORPH Album2 | MAE | 2 | MWR |
| 3D | Adience Age | Accuracy (5-fold) | 62.6 | MWR |
| 3D Face Modelling | MORPH album2 (Caucasian) | MAE | 2.13 | MWR |
| 3D Face Modelling | ChaLearn 2015 | MAE | 2.95 | MWR |
| 3D Face Modelling | UTKFace | MAE | 4.37 | MWR |
| 3D Face Modelling | FGNET | MAE | 2.23 | MWR |
| 3D Face Modelling | CACD | MAE | 4.41 | MWR |
| 3D Face Modelling | MORPH Album2 | CS | 95 | MWR |
| 3D Face Modelling | MORPH Album2 | MAE | 2 | MWR |
| 3D Face Modelling | Adience Age | Accuracy (5-fold) | 62.6 | MWR |
| 3D Face Reconstruction | MORPH album2 (Caucasian) | MAE | 2.13 | MWR |
| 3D Face Reconstruction | ChaLearn 2015 | MAE | 2.95 | MWR |
| 3D Face Reconstruction | UTKFace | MAE | 4.37 | MWR |
| 3D Face Reconstruction | FGNET | MAE | 2.23 | MWR |
| 3D Face Reconstruction | CACD | MAE | 4.41 | MWR |
| 3D Face Reconstruction | MORPH Album2 | CS | 95 | MWR |
| 3D Face Reconstruction | MORPH Album2 | MAE | 2 | MWR |
| 3D Face Reconstruction | Adience Age | Accuracy (5-fold) | 62.6 | MWR |
| Age Estimation | MORPH album2 (Caucasian) | MAE | 2.13 | MWR |
| Age Estimation | ChaLearn 2015 | MAE | 2.95 | MWR |
| Age Estimation | UTKFace | MAE | 4.37 | MWR |
| Age Estimation | FGNET | MAE | 2.23 | MWR |
| Age Estimation | CACD | MAE | 4.41 | MWR |
| Age Estimation | MORPH Album2 | CS | 95 | MWR |
| Age Estimation | MORPH Album2 | MAE | 2 | MWR |
| Age And Gender Classification | Adience Age | Accuracy (5-fold) | 62.6 | MWR |