TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/FacePoseNet: Making a Case for Landmark-Free Face Alignment

FacePoseNet: Making a Case for Landmark-Free Face Alignment

Feng-Ju Chang, Anh Tuan Tran, Tal Hassner, Iacopo Masi, Ram Nevatia, Gerard Medioni

2017-08-24Face AlignmentFace RecognitionFace VerificationFacial Landmark Detection3D Face AlignmentFace Identification
PaperPDFCodeCodeCodeCode(official)Code

Abstract

We show how a simple convolutional neural network (CNN) can be trained to accurately and robustly regress 6 degrees of freedom (6DoF) 3D head pose, directly from image intensities. We further explain how this FacePoseNet (FPN) can be used to align faces in 2D and 3D as an alternative to explicit facial landmark detection for these tasks. We claim that in many cases the standard means of measuring landmark detector accuracy can be misleading when comparing different face alignments. Instead, we compare our FPN with existing methods by evaluating how they affect face recognition accuracy on the IJB-A and IJB-B benchmarks: using the same recognition pipeline, but varying the face alignment method. Our results show that (a) better landmark detection accuracy measured on the 300W benchmark does not necessarily imply better face recognition accuracy. (b) Our FPN provides superior 2D and 3D face alignment on both benchmarks. Finally, (c), FPN aligns faces at a small fraction of the computational cost of comparably accurate landmark detectors. For many purposes, FPN is thus a far faster and far more accurate face alignment method than using facial landmark detectors.

Results

TaskDatasetMetricValueModel
Facial Recognition and Modelling300WMean Error Rate0.1043FPN
Facial Landmark Detection300WMean Error Rate0.1043FPN
Face Reconstruction300WMean Error Rate0.1043FPN
3D300WMean Error Rate0.1043FPN
3D Face Modelling300WMean Error Rate0.1043FPN
3D Face Reconstruction300WMean Error Rate0.1043FPN

Related Papers

ProxyFusion: Face Feature Aggregation Through Sparse Experts2025-09-24DiffClean: Diffusion-based Makeup Removal for Accurate Age Estimation2025-07-17Non-Adaptive Adversarial Face Generation2025-07-16Attributes Shape the Embedding Space of Face Recognition Models2025-07-15Face mask detection project report.2025-07-02On the Burstiness of Faces in Set2025-06-25Identifying Physically Realizable Triggers for Backdoored Face Recognition Networks2025-06-24SELFI: Selective Fusion of Identity for Generalizable Deepfake Detection2025-06-21