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Improving Classification with Class-Independent Quality Measures: Q-stack in Face Verification

机译:通过独立独立质量措施改善分类:Q-Stack在面部验证中

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Existing approaches to classification with signal quality measures make a clear distinction between the single- and multiple classifier scenarios. This paper presents an uniform approach to dichotomization based on the concept of stacking, Q-stack, which makes use of class-independent signal quality measures and baseline classifier scores in order to improve classification in uni- and multimodal systems alike. In this paper we demonstrate the application of Q-stack on the task of biometric identity verification using face images and associated quality measures. We show that the use of the proposed technique allows for reducing the error rates below those of baseline classifiers in single- and multi-classifier scenarios. We discuss how Q-stack can serve as a generalized framework in any single, multiple, and multimodal classifier ensemble.
机译:使用信号质量措施进行分类的现有方法在单个和多种分类器方案之间清晰地区分。本文基于堆叠,Q堆叠的概念提出了一种统一的二分法化方法,它利用了独立于独立的信号质量测量和基线分类器分数,以改善单级和多模式系统中的分类。在本文中,我们通过面部图像和相关的质量措施展示了Q-stack对生物识别验证任务的应用。我们表明,使用所提出的技术允许在单分类器场景中降低基线分类器的误差率。我们讨论如何用作任何单个,多个和多模式分类器集合中的Q-stact作为广义框架。

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