首页> 外文期刊>Intelligent automation and soft computing >A MIXTURE OF MULTILAYER PERCEPTRON EXPERTS NETWORK FOR MODELING FACE/NONFACE RECOGNITION IN CORTICAL FACE PROCESSING REGIONS
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A MIXTURE OF MULTILAYER PERCEPTRON EXPERTS NETWORK FOR MODELING FACE/NONFACE RECOGNITION IN CORTICAL FACE PROCESSING REGIONS

机译:皮质面加工区域中人脸/非人脸识别建模的多层感知器专家网络的混合物

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摘要

Recent studies in neurobiology and especially in neuroimaging report that a gating mechanism prior to face processing levels of human visual system, facilitates the faceonfacc recognition task. In accordance to these biological evidences, we propose a facconfacc recognition model which makes use of mixture of experts network. In order to improve the faceonface recognition accuracy, the outputs of the expert networks are combined using a gating network. A novel structure, which is the use of multilayer perceptrons (MLPs) in forming the expert networks, is introduced. The learning algorithm is modified to be adapted with the MLP networks. The results reveal that using a mixture of simple MLPs is much more beneficial, in many respects, as it shows more certainty at its output and is also easier to train than a single, but complex, MLP.
机译:神经生物学,特别是神经影像学方面的最新研究报告说,在人类视觉系统的面部处理水平之前,门控机制有助于面部/ nonfacc识别任务。根据这些生物学证据,我们提出了利用专家网络混合的facc / nonfacc识别模型。为了提高面部/非面部识别精度,使用门控网络将专家网络的输出进行组合。介绍了一种新颖的结构,即使用多层感知器(MLP)形成专家网络。修改学习算法以使其适合MLP网络。结果表明,在多个方面,使用简单MLP的混合物比在单个但复杂的MLP上显示出更多的确定性,并且更易于训练,因此在许多方面都更加有益。

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