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Hierarchical genetic optimization of modular neural networks and their type-2 fuzzy response integrators for human recognition based on multimodal biometry

机译:基于多模态生物识别的模块化神经网络及其2型模糊响应积分器的分层遗传优化

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In this paper we describe the application of a Modular Neural Network (MNN) for iris, ear and voice recognition for a benchmark database. The proposed MNN architecture consists of three modules; iris, ear and voice. Each module is divided into other three sub modules. Each sub module contains different information, this means one third of the database for each sub module. We considered the integration of each biometric measure separately. Later, we proceed to integrate these modules with a fuzzy integrator. Also, we performed optimization of the modular neural networks and the fuzzy integrators using genetic algorithms, and comparisons were made between optimized results and the results without optimization.
机译:在本文中,我们描述了模块化神经网络(MNN)用于虹膜,耳朵和语音识别的基准数据库的应用。拟议的MNN体系结构由三个模块组成;虹膜,耳朵和声音。每个模块分为其他三个子模块。每个子模块包含不同的信息,这意味着每个子模块的数据库的三分之一。我们分别考虑了每种生物计量指标的集成。稍后,我们将这些模块与模糊积分器进行集成。此外,我们使用遗传算法对模块化神经网络和模糊积分器进行了优化,并对优化结果与未经优化的结果进行了比较。

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