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/FeatherNets: Convolutional Neural Networks as Light as Fea...

FeatherNets: Convolutional Neural Networks as Light as Feather for Face Anti-spoofing

Peng Zhang, Fuhao Zou, Zhiwen Wu, Nengli Dai, Skarpness Mark, Michael Fu, Juan Zhao, Kai Li

2019-04-22Face Anti-Spoofing
PaperPDFCodeCodeCode

Abstract

Face Anti-spoofing gains increased attentions recently in both academic and industrial fields. With the emergence of various CNN based solutions, the multi-modal(RGB, depth and IR) methods based CNN showed better performance than single modal classifiers. However, there is a need for improving the performance and reducing the complexity. Therefore, an extreme light network architecture(FeatherNet A/B) is proposed with a streaming module which fixes the weakness of Global Average Pooling and uses less parameters. Our single FeatherNet trained by depth image only, provides a higher baseline with 0.00168 ACER, 0.35M parameters and 83M FLOPS. Furthermore, a novel fusion procedure with ``ensemble + cascade'' structure is presented to satisfy the performance preferred use cases. Meanwhile, the MMFD dataset is collected to provide more attacks and diversity to gain better generalization. We use the fusion method in the Face Anti-spoofing Attack Detection Challenge@CVPR2019 and got the result of 0.0013(ACER), 0.999(TPR@FPR=10e-2), 0.998(TPR@FPR=10e-3) and 0.9814(TPR@FPR=10e-4).

Results

TaskDatasetMetricValueModel
Depth EstimationSiW-Enroll5AUC98.9FeatherNet
Depth EstimationCelebA-Spoof-Enroll5AUC97.1FeatherNet
Depth EstimationSiW (Protocol 3)ACER31.1FeatherNet
Facial Recognition and ModellingSiW-Enroll5AUC98.9FeatherNet
Facial Recognition and ModellingCelebA-Spoof-Enroll5AUC97.1FeatherNet
Facial Recognition and ModellingSiW (Protocol 3)ACER31.1FeatherNet
Visual OdometrySiW-Enroll5AUC98.9FeatherNet
Visual OdometryCelebA-Spoof-Enroll5AUC97.1FeatherNet
Visual OdometrySiW (Protocol 3)ACER31.1FeatherNet
Face ReconstructionSiW-Enroll5AUC98.9FeatherNet
Face ReconstructionCelebA-Spoof-Enroll5AUC97.1FeatherNet
Face ReconstructionSiW (Protocol 3)ACER31.1FeatherNet
3DSiW-Enroll5AUC98.9FeatherNet
3DCelebA-Spoof-Enroll5AUC97.1FeatherNet
3DSiW (Protocol 3)ACER31.1FeatherNet
3D Face ModellingSiW-Enroll5AUC98.9FeatherNet
3D Face ModellingCelebA-Spoof-Enroll5AUC97.1FeatherNet
3D Face ModellingSiW (Protocol 3)ACER31.1FeatherNet
3D Face ReconstructionSiW-Enroll5AUC98.9FeatherNet
3D Face ReconstructionCelebA-Spoof-Enroll5AUC97.1FeatherNet
3D Face ReconstructionSiW (Protocol 3)ACER31.1FeatherNet
Depth And Camera MotionSiW-Enroll5AUC98.9FeatherNet
Depth And Camera MotionCelebA-Spoof-Enroll5AUC97.1FeatherNet
Depth And Camera MotionSiW (Protocol 3)ACER31.1FeatherNet

Related Papers

InstructFLIP: Exploring Unified Vision-Language Model for Face Anti-spoofing2025-07-16Multi-Modal Face Anti-Spoofing via Cross-Modal Feature Transitions2025-07-08Leveraging Intermediate Features of Vision Transformer for Face Anti-Spoofing2025-05-30Denoising and Alignment: Rethinking Domain Generalization for Multimodal Face Anti-Spoofing2025-05-14FaceShield: Explainable Face Anti-Spoofing with Multimodal Large Language Models2025-05-14Learning Unknown Spoof Prompts for Generalized Face Anti-Spoofing Using Only Real Face Images2025-05-06Generative Classifier for Domain Generalization2025-04-03Optimal Transport-Guided Source-Free Adaptation for Face Anti-Spoofing2025-03-29