基于Grasshopper优化的多模态生物识别系统

Keshav Gupta, G. S. Walia, K. Sharma
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引用次数: 5

摘要

生物识别系统与传统的身份验证系统相比有许多优点,因此非常受欢迎。多模式生物识别系统结合来自多个来源的信息来做出最终决定。分数水平融合结合各个分类器的结果来做出最终决定。然而,大多数生物识别系统都存在个体分类器得分冲突的问题。为了解决这个问题,我们提出了一种新的使用Grasshopper优化的优化分数水平融合,其中对单个分类器进行性能优化,并通过比例冲突再分配规则实现并发解决方案。该系统不需要任何分类器训练,表现出很高的性能。该系统对动态环境具有较强的鲁棒性和较高的可靠性。
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Multimodal Biometric System using Grasshopper Optimization
Biometric systems are need of the day because of their various advantages over traditional authentication systems. Multimodal Biometric systems combine information from multiple sources to reach a final decision. Score level fusion combines outcomes of individual classffiers to make a final decision. However, most of the biometric systems suffer from the issue of score confliction of individual classifiers. To resolve this issue, we have proposed a novel optimized score level fusion using Grasshopper optimization where the performance optimization of individual classffiers is performed and a concurrent solution is achieved by means of proportional conflict redistribution rules. The system does not require any classifier training and exhibits high performance. The proposed system is robust against the dynamic environment and exhibits high reliability.
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