AI RESEARCH

Multimodal Models Meet Presentation Attack Detection on ID Documents

arXiv CS.CV

ArXi:2603.29422v1 Announce Type: new The integration of multimodal models into Presentation Attack Detection (PAD) for ID Documents represents a significant advancement in biometric security. Traditional PAD systems rely solely on visual features, which often fail to detect sophisticated spoofing attacks. This study explores the combination of visual and textual modalities by utilizing pre-trained multimodal models, such as Paligemma, Llava, and Qwen, to enhance the detection of presentation attacks on ID Documents.