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Printed Photos Attacks Dataset

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NIAID Data Ecosystem2026-05-02 收录
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https://zenodo.org/record/15067890
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Description: The Printed Photos Attacks Dataset is a specialize resource design for the development and evaluation of liveness detection systems aimed at combating facial spoofing attempts. This dataset includes a comprehensive collection of videos that feature both authentic facial presentations and spoof attempts using print 2D photographs. By incorporating both real and fake faces, it provides a robust foundation for training and testing advanced facial recognition and anti-spoofing algorithms. This dataset is particularly valuable for researchers and developers focus on enhancing biometric security systems. It introduces a novel method for learning and extracting distinctive facial features to effectively differentiate between genuine and spoofed inputs. The approach leverages deep neural networks (DNNs) and sophisticate biometric techniques, which have been shown to significantly improve the accuracy and reliability of liveness detection in various applications. Download Dataset Key features of the dataset include: Diverse Presentation Methods: The dataset contains a range of facial presentations, including genuine facial videos and spoof videos create using high-quality print photographs. This diversity is essential for developing algorithms that can generalize across different types of spoofing attempts. High-Resolution Videos: The videos in the dataset are capture in high resolution, ensuring that even subtle facial features and movements are visible, aiding in the accurate detection of spoofing. Comprehensive Annotations: Each video is meticulously annotate with labels indicating whether the facial presentation is genuine or spoofed. Additionally, the dataset includes metadata such as the method of spoofing and environmental conditions, providing a rich context for algorithm development. Unseen Spoof Detection: One of the unique aspects of this dataset is its emphasis on detecting unseen spoofing cues. The dataset is design to challenge algorithms to identify and adapt to new types of spoofing methods that may not have been encounter during the training phase. Versatile Application: The dataset is suitable for a wide range of applications, including access control systems, mobile device authentication, and other security-sensitive environments where facial recognition is deploy. This dataset is sourced from Kaggle.
创建时间:
2025-03-22
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