论文标题
强大的虹膜表现攻击检测融合了2D和3D信息
Robust Iris Presentation Attack Detection Fusing 2D and 3D Information
论文作者
论文摘要
虹膜传感器的伪像的多样性和不可预测性要求呈现攻击检测方法,这些方法对表现攻击工具的特殊性不可知。本文提出了一种结合观察到的虹膜的二维和三维特性的方法,以解决伪造的某些特性未知的情况,以解决欺骗检测的问题。使用二进制统计图像特征(BSIF)提取2D(纹理)虹膜特征,并使用分类器集合来提供与2D模式相关的决策。 3D(形状)虹膜特征是通过光度计立体声方法从仅在两个不同角度捕获下的两个图像中重建的,如许多当前的商业IRIS识别传感器。正常向量的图用于评估观察到的虹膜表面的凸度。这两种方法的组合已被应用于检测受试者是否佩戴纹理隐形眼镜以掩盖其身份。使用NDCLD'15数据集和新收集的NDIRIS3D数据集进行了广泛的实验表明,在各种开放式测试方案下,该提出的方法非常强大,并且它在相同的方案中优于所有可用的开源IRIS PAD方法。源代码和新准备的基准与本文一起提供。
Diversity and unpredictability of artifacts potentially presented to an iris sensor calls for presentation attack detection methods that are agnostic to specificity of presentation attack instruments. This paper proposes a method that combines two-dimensional and three-dimensional properties of the observed iris to address the problem of spoof detection in case when some properties of artifacts are unknown. The 2D (textural) iris features are extracted by a state-of-the-art method employing Binary Statistical Image Features (BSIF) and an ensemble of classifiers is used to deliver 2D modality-related decision. The 3D (shape) iris features are reconstructed by a photometric stereo method from only two images captured under near-infrared illumination placed at two different angles, as in many current commercial iris recognition sensors. The map of normal vectors is used to assess the convexity of the observed iris surface. The combination of these two approaches has been applied to detect whether a subject is wearing a textured contact lens to disguise their identity. Extensive experiments with NDCLD'15 dataset, and a newly collected NDIris3D dataset show that the proposed method is highly robust under various open-set testing scenarios, and that it outperforms all available open-source iris PAD methods tested in identical scenarios. The source code and the newly prepared benchmark are made available along with this paper.