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3DAirSig: A Framework for Enabling In-Air Signatures Using a Multi-Modal Depth Sensor

机译:3DAirSig:使用多模式深度传感器启用空中签名的框架

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摘要

In-air signature is a new modality which is essential for user authentication and access control in noncontact mode and has been actively studied in recent years. However, it has been treated as a conventional online signature, which is essentially a 2D spatial representation. Notably, this modality bears a lot more potential due to an important hidden depth feature. Existing methods for in-air signature verification neither capture this unique depth feature explicitly nor fully explore its potential in verification. Moreover, these methods are based on heuristic approaches for fingertip or hand palm center detection, which are not feasible in practice. Inspired by the great progress in deep-learning-based hand pose estimation, we propose a real-time in-air signature acquisition method which estimates hand joint positions in 3D using a single depth image. The predicted 3D position of fingertip is recorded for each frame. We present four different implementations of a verification module, which are based on the extracted depth and spatial features. An ablation study was performed to explore the impact of the depth feature in particular. For matching, we employed the most commonly used multidimensional dynamic time warping (MD-DTW) algorithm. We created a new database which contains 600 signatures recorded from 15 different subjects. Extensive evaluations were performed on our database. Our method, called 3DAirSig, achieved an equal error rate (EER) of 0.46%. Experiments showed that depth itself is an important feature, which is sufficient for in-air signature verification.
机译:空中签名是一种新形式,对于非接触模式下的用户身份验证和访问控制必不可少,并且近年来已得到积极研究。但是,它已被视为常规的在线签名,它实质上是2D空间表示。值得注意的是,由于重要的隐藏深度功能,这种模式具有更多的潜力。现有的空中签名验证方法既不能明确地捕捉到这一独特的深度特征,也无法充分挖掘其在验证中的潜力。此外,这些方法基于用于指尖或手掌中心检测的启发式方法,在实践中不可行。受基于深度学习的手势估计的巨大进步的启发,我们提出了一种实时空中签名获取方法,该方法可以使用单个深度图像来估算3D中的手关节位置。记录每个帧的指尖的预测3D位置。我们基于所提取的深度和空间特征,提出了四种不同的验证模块实施方式。进行了消融研究,以特别探索深度特征的影响。为了进行匹配,我们采用了最常用的多维动态时间规整(MD-DTW)算法。我们创建了一个新数据库,其中包含来自15个不同主题的600个签名。在我们的数据库上进行了广泛的评估。我们的方法称为3DAirSig,实现了 < mrow> 0.46 %。实验表明,深度本身是一项重要功能,足以进行空中签名验证。

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