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A user-specific and selective multimodal biometric fusion strategy by ranking subjects

机译:通过对主题进行排名的特定于用户的选择性多模式生物特征融合策略

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The recognition performance of a biometric system varies significantly from one enrolled user to another. As a result, there is a need to tailor the system to each user. This study investigates a relatively new fusion strategy that is both user-specific and selective. By user-specific, we understand that each user in a biometric system has a different set of fusion parameters that have been tuned specifically to a given enrolled user. By selective, we mean that only a subset of modalities may be chosen for fusion. The rationale for this is that if one biometric modality is sufficiently good to recognize a user, fusion by multimodal biometrics would not be necessary, we advance the state of the art in user-specific and selective fusion in the following ways: (1) provide thorough analyses of (a) the effect of pre-processing the biometric output (prior to applying a user-specific score normalization procedure) in order to improve its central tendency and (b) the generalisation ability of user-specific parameters; (2) propose a criterion to rank the users based solely on a training score dataset in such a way that the obtained rank order will maximally correlate with the rank order that is obtained if it were to be computed on the test set; and, (3) experimentally demonstrate the performance gain of a user-specific and -selective fusion strategy across fusion data sets at different values of "pruning rate" that control the percentage of subjects for whom fusion is not required. Fifteen sets of multimodal fusion experiments carried out on the XM2VTS score-level benchmark database show that even though our proposed user-specific and -selective fusion strategy, its performance compares favorably with the conventional fusion system that considers all information.
机译:生物统计系统的识别性能从一个已注册的用户到另一个已注册的用户有很大不同。结果,需要针对每个用户定制系统。这项研究调查了一种相对新的融合策略,该策略既针对用户又针对特定用户。通过特定用户,我们了解到生物识别系统中的每个用户都有一组不同的融合参数,这些参数已针对特定的注册用户进行了专门调整。通过选择性,我们的意思是只能选择一种形式的子集进行融合。这样做的理由是,如果一个生物特征识别方式足以识别用户,那么通过多模态生物特征识别进行融合将是不必要的,我们将通过以下方式推动针对特定用户和选择性融合的技术发展:(1)提供彻底分析(a)预处理生物特征输出的效果(在应用用户特定分数归一化程序之前),以改善其集中趋势;以及(b)用户特定参数的泛化能力; (2)提出一种仅基于训练得分数据集对用户进行排名的标准,以使所获得的排名顺序与如果要在测试集上计算得出的排名顺序最大相关; (3)实验证明,在“修剪率”的不同值上,特定于用户的选择性融合策略在融合数据集上的性能提高,这些值控制不需要融合的对象的百分比。在XM2VTS分数级别基准数据库上进行的十五组多峰融合实验表明,即使我们提出的针对用户和选择性的融合策略,其性能也比考虑所有信息的常规融合系统优越。

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