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A Fusion-Based Approach to Enhancing Multi-Modal Biometric Recognition System Failure Prediction and Overall Performance

机译:基于融合的方法来提高多模态生物识别系统故障预测和整体性能的方法

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Competing notions of biometric recognition system failure prediction have emerged recently, which can roughly be categorized as quality and non-quality based approaches. Quality, while well correlated overall with recognition performance, is a weaker indication of how the system will perform in a particular instance - something of primary importance for critical installations, screening areas, and surveillance posts. An alternative approach, incorporating a Failure Prediction Receiver Operator Characteristic (FPROC) analysis has been proposed to overcome the limitations of the quality approach, yielding accurate predictions on a per instance basis. In this paper, we develop a full multi-modal recognition system integrating an FPROC fusion-based failure prediction engine. Four different fusion techniques to enhance failure prediction are developed and evaluated for this system. We present results for the NIST BSSR1 multi-modal data set, and a larger "chimera" set also composed of data from BSSR1. Our results show a significant improvement in recognition performance with the fusion approach, over the baseline recognition results and previous fusion approaches.
机译:最近出现了生物识别系统故障预测的竞争概念,其可以大致被分类为质量和基于非质量的方法。质量,虽然具有识别性能的整体良好相关,但是系统如何在特定实例中执行系统的较弱指示 - 对于关键安装,筛选区域和监视职位的主要重要性。已经提出了一种包含失败预测接收器操作员特征(FPROC)分析的替代方法来克服质量方法的局限性,从均匀地产生精确的预测。在本文中,我们开发了一种全部多模态识别系统,集成了基于FPROC融合的故障预测引擎。为该系统开发和评估了四种不同的融合技术来增强故障预测。我们为NIST BSSR1多模态数据集提供了结果,并且还由BSSR1的数据组成的更大的“嵌合”集。我们的结果表明,通过基线识别结果和先前的融合方法,具有融合方法的识别性能显着提高。

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