自适应和随机样本决策的顺序融合,以控制验证误差

Vishnu Priya Nallagatla, V. Chandran
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引用次数: 2

摘要

融合技术已经获得了相当大的关注,以实现性能改进与生物识别。虽然多样本融合架构减少了误拒绝,但也增加了误接受。这种对性能的影响还取决于后续尝试的性质,即随机或自适应。本文提出了错误率的表达式,并通过实验评估了基于HMM的数字依赖说话人模型的文本依赖说话人验证的多样本融合架构。结合相关建模的分析表明,与随机重复的样本相比,自适应样本的使用提高了整体融合性能。对于使用数字字符串的文本依赖说话人验证系统,七个实例与三个随机样本的顺序决策融合可以将验证系统的总体误差降低26%,对于自适应样本可以进一步降低6%。这种分析在处理顺序融合决策架构中的随机和自适应多重表现方面是新颖的,也适用于其他生物识别模式,如指纹和笔迹样本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential fusion of decisions from adaptive and random samples for controlled verification errors
Fusion techniques have received considerable attention for achieving performance improvement with biometrics. While a multi-sample fusion architecture reduces false rejects, it also increases false accepts. This impact on performance also depends on the nature of subsequent attempts, i.e., random or adaptive. Expressions for error rates are presented and experimentally evaluated in this work by considering the multi-sample fusion architecture for text-dependent speaker verification using HMM based digit dependent speaker models. Analysis incorporating correlation modeling demonstrates that the use of adaptive samples improves overall fusion performance compared to randomly repeated samples. For a text dependent speaker verification system using digit strings, sequential decision fusion of seven instances with three random samples is shown to reduce the overall error of the verification system by 26% which can be further reduced by 6% for adaptive samples. This analysis novel in its treatment of random and adaptive multiple presentations within a sequential fused decision architecture, is also applicable to other biometric modalities such as finger prints and handwriting samples.
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