Publication | Open Access
FT-GAN: Face Transformation with Key Points Alignment for Pose-Invariant Face Recognition
13
Citations
29
References
2019
Year
Face DetectionFacial Recognition SystemImage AnalysisKey Points AlignmentEngineeringFacial Expression RecognitionPattern RecognitionFrontal Face SynthesisBiometricsPose-invariant Face RecognitionFace RecognitionGenerative Adversarial NetworkFacial AnimationHuman Image SynthesisDeep LearningFace TransformationComputer VisionSynthetic Image Generation
Face recognition has been comprehensively studied. However, face recognition in the wild still suffers from unconstrained face directions. Frontal face synthesis is a popular solution, but some facial features are missed after synthesis. This paper presents a novel method for pose-invariant face recognition. It is based on face transformation with key points alignment based on generative adversarial networks (FT-GAN). In this method, we introduce CycleGAN for pixel transformation to achieve coarse face transformation results, and these results are refined by key point alignment. In this way, frontal face synthesis is modeled as a two-task process. The results of comprehensive experiments show the effectiveness of FT-GAN.
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