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Multi-modal identity verification using support vector machines (SVM)

机译:使用支持向量机(SVM)的多模式身份验证

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The contribution of this paper is twofold: (1) to formulate a decision fusion problem that is encountered in the design of a multi-modal identity verification system as a particular classification problem, and (2) to solve this problem by using a support vector machine (SVM). The multi-modal identity verification system under consideration is built of d modalities in parallel, each one delivering as output a scalar number, called a score, stating how well the claimed identity is verified. A fusion module receiving the d scores as input has to take a binary decision: to accept or reject the identity. This fusion problem has been solved using SVMs. The performance of this fusion module has been evaluated and compared with other proposed methods on a multi-modal database containing both vocal and visual modalities.
机译:本文的贡献是双重的:(1)将在多模式身份验证系统的设计中遇到的决策融合问题表述为特定的分类问题,以及(2)通过使用支持向量解决该问题。机器(SVM)。所考虑的多模式身份验证系统由d个模式并行构建,每个模式均输出称为分数的标量数字作为输出,说明标明的身份的验证程度。接收d分数作为输入的融合模块必须做出二进制决定:接受还是拒绝身份。使用SVM解决了此融合问题。该融合模块的性能已经过评估,并与包含语音和视觉模态的多模态数据库上的其他提议方法进行了比较。

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