Fused Classification For Differential Face Morphing Detection

2024 IEEE/CVF Winter Conference on Applications of Computer Vision Workshops (WACVW)(2023)

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摘要
Face morphing, a sophisticated presentation attack technique, poses significant security risks to face recognition systems. Traditional methods struggle to detect morphing attacks, which involve blending multiple face images to create a synthetic image that can match different individuals. In this paper, we focus on the differential detection of face morphing and propose an extended approach based on fused classification method for no-reference scenario. We introduce a public face morphing detection benchmark for the differential scenario and utilize a specific data mining technique to enhance the performance of our approach. Experimental results demonstrate the effectiveness of our method in detecting morphing attacks.
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关键词
Morphed Faces,Benchmark,Face Recognition,Face Images,Security Risks,Deep Learning,Convolutional Neural Network,Paired Samples,Binary Classification,Cross-border,Biometric,Generative Adversarial Networks,Discriminative Features,Deep Learning Techniques,Deep Features,Original Label,Deep Representation,Academic Perspective,Face Representation,Face Recognition Task,StyleGAN,Identity Classification,Face Recognition Model
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