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Papers/ACR Loss: Adaptive Coordinate-based Regression Loss for Fa...

ACR Loss: Adaptive Coordinate-based Regression Loss for Face Alignment

Ali Pourramezan Fard, Mohammad H. Mahoor

2022-03-29Face AlignmentregressionFacial Landmark Detection
PaperPDFCode(official)

Abstract

Although deep neural networks have achieved reasonable accuracy in solving face alignment, it is still a challenging task, specifically when we deal with facial images, under occlusion, or extreme head poses. Heatmap-based Regression (HBR) and Coordinate-based Regression (CBR) are among the two mainly used methods for face alignment. CBR methods require less computer memory, though their performance is less than HBR methods. In this paper, we propose an Adaptive Coordinate-based Regression (ACR) loss to improve the accuracy of CBR for face alignment. Inspired by the Active Shape Model (ASM), we generate Smooth-Face objects, a set of facial landmark points with less variations compared to the ground truth landmark points. We then introduce a method to estimate the level of difficulty in predicting each landmark point for the network by comparing the distribution of the ground truth landmark points and the corresponding Smooth-Face objects. Our proposed ACR Loss can adaptively modify its curvature and the influence of the loss based on the difficulty level of predicting each landmark point in a face. Accordingly, the ACR Loss guides the network toward challenging points than easier points, which improves the accuracy of the face alignment task. Our extensive evaluation shows the capabilities of the proposed ACR Loss in predicting facial landmark points in various facial images.

Results

TaskDatasetMetricValueModel
Facial Recognition and Modelling300WNME_inter-ocular (%, Challenge)5.36EF-3ACR
Facial Recognition and Modelling300WNME_inter-ocular (%, Common)3.36EF-3ACR
Facial Recognition and Modelling300WNME_inter-ocular (%, Full)3.75EF-3ACR
Face Reconstruction300WNME_inter-ocular (%, Challenge)5.36EF-3ACR
Face Reconstruction300WNME_inter-ocular (%, Common)3.36EF-3ACR
Face Reconstruction300WNME_inter-ocular (%, Full)3.75EF-3ACR
3D300WNME_inter-ocular (%, Challenge)5.36EF-3ACR
3D300WNME_inter-ocular (%, Common)3.36EF-3ACR
3D300WNME_inter-ocular (%, Full)3.75EF-3ACR
3D Face Modelling300WNME_inter-ocular (%, Challenge)5.36EF-3ACR
3D Face Modelling300WNME_inter-ocular (%, Common)3.36EF-3ACR
3D Face Modelling300WNME_inter-ocular (%, Full)3.75EF-3ACR
3D Face Reconstruction300WNME_inter-ocular (%, Challenge)5.36EF-3ACR
3D Face Reconstruction300WNME_inter-ocular (%, Common)3.36EF-3ACR
3D Face Reconstruction300WNME_inter-ocular (%, Full)3.75EF-3ACR

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