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Quality dependent multimodal fusion of face and iris biometrics

机译:面部和虹膜生物特征识别的质量依赖型多模态融合

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Although iris is known as the most accurate and face as the most accepted in biometrics, these distinct modalities encounter variability in data in real-world applications. Such limitation can be overcome by a multimodal system based on both traits. Additionally, by conditioning the multimodal fusion on quality, useful information can be extracted from lower quality measures rather than rejecting them out of hand. This paper suggests a dynamic weighted sum fusion that exploits an iris occlusion-based quality metric while combining unimodal scores. Instead of incorporating the quality of the gallery and probe images separately, a single quality metric for each gallery-probe comparison was used. Two strategies for integrating this metric into score-level fusion were explored. Experiments on the IV2 multimodal database including multiple variabilities proved that the proposed method improves some best current non quality-based fusion schemes by more than 30% in terms of Equal Error Rates.
机译:尽管虹膜在生物识别中被认为是最准确的,而脸部也是最被接受的,但是在现实应用中,这些截然不同的方式在数据中会遇到变化。可以通过基于两个特征的多峰系统来克服这种局限性。此外,通过对多峰融合进行质量限制,可以从较低质量的度量中提取有用的信息,而不是一味地拒绝它们。本文提出了一种动态加权和融合,该融合利用基于虹膜遮挡的质量度量,同时结合了单峰评分。代替单独合并画廊和探测图像的质量,对于每个画廊-探针比较使用单个质量度量。探索了将该指标整合到分数级融合中的两种策略。在具有多个可变性的IV2多峰数据库上进行的实验证明,该方法将当前一些最佳的基于非质量的融合方案的均等错误率提高了30%以上。

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