索引多模态生物特征数据库的编码方案

A. Gyaourova, A. Ross
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引用次数: 37

摘要

在生物识别系统中,与输入数据相关联的身份是通过与数据库中的每个条目进行比较来确定的。这种详尽的匹配过程增加了系统的响应时间,并可能增加错误识别的比率。缩小潜在身份列表的方法将允许输入数据与较少数量的身份进行匹配。我们描述了一种基于为每个注册身份生成索引代码的大型多模态生物特征数据库的索引方法。在所提出的方法中,首先将输入的生物特征数据与一小组参考图像进行匹配。随后的匹配分数集用作索引代码。然后利用三种不同的融合技术对多模态索引码进行集成,以进一步提高索引性能。在嵌合人脸和指纹双峰数据库上的实验表明,在100%的命中率下,搜索空间减少了76%。这些结果表明,索引有可能大大提高多模态生物识别系统的响应时间,而不会影响识别的准确性。
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A coding scheme for indexing multimodal biometric databases
In biometric identification systems, the identity associated with the input data is determined by comparing it against every entry in the database. This exhaustive matching process increases the response time of the system and, potentially, the rate of erroneous identification. A method that narrows the list of potential identities will allow the input data to be matched against a smaller number of identities. We describe a method for indexing large-scale multimodal biometric databases based on the generation of an index code for each enrolled identity. In the proposed method, the input biometric data is first matched against a small set of reference images. The set of ensuing match scores is used as an index code. The index codes of multiple modalities are then integrated using three different fusion techniques in order to further improve the indexing performance. Experiments on a chimeric face and fingerprint bimodal database indicate a 76% reduction in the search space at 100% hit rate. These results suggest that indexing has the potential to substantially improve the response time of multimodal biometric systems without compromising the accuracy of identification.
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