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Crossing domains with the inductive transfer encoder: Case study in keystroke biometrics

机译:感应转移编码器跨领域:按键生物识别技术案例研究

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Keystroke biometric samples are often collected under various conditions, such as different device types, increasing levels of practice through repetition, and subject impairment. Cross-domain comparisons, in which query samples are collected under different conditions than the template, generally lead to degraded performance. The difficulty in comparing samples from different domains can be viewed as an inductive transfer learning problem, in which general knowledge of the mapping between a source and target domain can be applied to increase task performance, such as verification accuracy, by transferring source domain samples to the target domain. In this light, we propose the inductive transfer encoder, which utilizes pairwise correspondences from an independent dataset to learn a general transformation between domains. When the transformation is applied to template samples in the source domain, and query samples are in the target domain, increased verification performance is observed. We evaluate four different strategies for establishing the pairwise correspondences between source and target domains, and two cross-domain problems: low vs high practice levels and one vs two typing hands. Empirical results demonstrate that the inductive transfer encoder captures general rules that can be applied to transfer source domain samples to the target domain.
机译:击键生物特征样本通常是在各种条件下收集的,例如不同的设备类型,通过重复进行的练习水平提高以及受试者受损。跨域比较(其中在与模板不同的条件下收集查询样本)通常会导致性能下降。比较来自不同域的样本的困难可以看作是归纳转移学习问题,其中可以通过将源域样本转移到源域和目标域之间,来应用对源域和目标域之间的映射的一般知识来提高任务性能,例如验证准确性。目标域。有鉴于此,我们提出了感应式传输编码器,该编码器利用来自独立数据集的成对对应关系来学习域之间的一般转换。当将转换应用于源域中的模板样本,而查询样本位于目标域中时,可以观察到提高的验证性能。我们评估了四种不同的策略来建立源域和目标域之间的成对对应关系,以及两个跨域问题:实践水平偏低或偏高,打字习惯相对于两只手。实验结果表明,归纳传输编码器捕获了可用于将源域样本传输到目标域的一般规则。

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