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Hidden Markov Models for feature-level fusion of biometrics on mobile devices

机译:在移动设备上进行生物识别的特征级融合的隐马尔可夫模型

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Although biometrics have forayed into the mobile world, most current approaches rely on a single biometric modality. This limits their recognition accuracy in uncontrolled conditions. For example, performance of face and voice recognition systems may suffer in poorly lit and noisy settings, respectively. Integration of identifying information from multiple biometric modalities can help solve this problem; high-quality identifying information in one modality can compensate for the absence of such information in a modality affected by uncontrolled conditions. In this paper, we present a novel multimodal biometric scheme that uses Hidden Markov Models to consolidate data from face and voice biometrics at the feature level. An implementation on the Samsung Galaxy S5 (SG5) phone using a dataset of face and voice samples captured using SG5 in real-world operating conditions, yielded 4.18% and 9.71% higher recognition accuracy than face and voice single-modality systems, respectively.
机译:尽管生物识别技术已经涉足移动世界,但是大多数当前方法都依赖于单一的生物识别方式。这限制了它们在不受控制的条件下的识别精度。例如,面部和语音识别系统的性能可能分别在光线不足和嘈杂的设置中受到影响。整合来自多种生物特征识别信息的信息可以帮助解决这个问题;一种方式中的高质量识别信息可以弥补不受控制条件影响的一种方式中此类信息的缺失。在本文中,我们提出了一种新颖的多模式生物特征识别方案,该方案使用隐马尔可夫模型在特征级别上整合了来自面部和语音生物特征识别的数据。在三星Galaxy S5(SG5)手机上使用在实际操作条件下使用SG5捕获的面部和语音样本的数据集实现,其识别准确度分别比面部和语音单模态系统高4.18 \%和9.71 \%。 。

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