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Quality-Based Conditional Processing in Multi-Biometrics: Application to Sensor Interoperability

机译:基于质量的多生物特征条件处理:在传感器互操作性中的应用

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摘要

As biometric technology is increasingly deployed, it will be common to replace parts of operational systems with newer designs. The cost and inconvenience of reacquiring enrolled users when a new vendor solution is incorporated makes this approach difficult and many applications will require to deal with information from different sources regularly. These interoperability problems can dramatically affect the performance of biometric systems and thus, they need to be overcome. Here, we describe and evaluate the ATVS-UAM fusion approach submitted to the quality-based evaluation of the 2007 BioSecure Multimodal Evaluation Campaign, whose aim was to compare fusion algorithms when biometric signals were generated using several biometric devices in mismatched conditions. Quality measures from the raw biometric data are available to allow system adjustment to changing quality conditions due to device changes. This system adjustment is referred to as quality-based conditional processing. The proposed fusion approach is based on linear logistic regression, in which fused scores tend to be log-likelihood-ratios. This allows the easy and efficient combination of matching scores from different devices assuming low dependence among modalities. In our system, quality information is used to switch between different system modules depending on the data source (the sensor in our case) and to reject channels with low quality data during the fusion. We compare our fusion approach to a set of rule-based fusion schemes over normalized scores. Results show that the proposed approach outperforms all the rule-based fusion schemes. We also show that with the quality-based channel rejection scheme, an overall improvement of 25% in the equal error rate is obtained.
机译:随着生物识别技术的日益普及,用较新的设计替换部分操作系统是很常见的。当采用新的供应商解决方案时,重新招募注册用户的成本和不便性使这种方法变得困难,并且许多应用程序将需要定期处理来自不同来源的信息。这些互操作性问题会极大地影响生物识别系统的性能,因此,需要克服它们。在这里,我们描述并评估了提交给2007 BioSecure Multimodal Evaluation Campaign基于质量的评估的ATVS-UAM融合方法,该方法的目的是比较在不匹配条件下使用多个生物识别设备生成生物识别信号时的融合算法。来自原始生物特征数据的质量度量可用于允许系统调整以适应由于设备更改而导致的质量条件变化。此系统调整称为基于质量的条件处理。所提出的融合方法基于线性逻辑回归,其中融合分数趋于对数似然比。假设模态之间的依赖性低,这允许来自不同设备的匹配分数的容易且有效的组合。在我们的系统中,质量信息用于根据数据源(在本例中为传感器)在不同的系统模块之间切换,并在融合过程中拒绝具有低质量数据的通道。我们将融合方法与标准化分数之上的一组基于规则的融合方案进行比较。结果表明,所提出的方法优于所有基于规则的融合方案。我们还表明,使用基于质量的信道拒绝方案,可以将等错误率整体提高25%。

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