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Cloud basis function neural network: A modified RBF network architecture for holistic facial expression recognition

机译:云基函数神经网络:改进的RBF网络架构,用于整体面部表情识别

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The paper presents novel modifications to radial basis functions (RBFs) and a neural network based classifier for holistic recognition of the six universal facial expressions from static images. The new basis functions, called cloud basis functions (CBFs) use a different feature weighting, derived to emphasize features relevant to class discrimination. Further, these basis functions are designed to have multiple boundary segments, rather than a single boundary as for RBFs. These new enhancements to the basis functions along with a suitable training algorithm allow the neural network to better learn the specific properties of the problem domain. The proposed classifiers have demonstrated superior performance compared to conventional RBF neural networks as well as several other types of holistic techniques used in conjunction with RBF neural networks. The CBF neural network based classifier yielded an accuracy of 96.1%, compared to 86.6%, the best accuracy obtained from all other conventional RBF neural network based classification schemes tested using the same database. (c) 2007 Elsevier Ltd. All rights reserved.
机译:本文提出了对径向基函数(RBF)的新颖修改和基于神经网络的分类器,用于从静态图像中全面识别六个通用面部表情。被称为云基础函数(CBF)的新基础函数使用不同的特征加权,以强调与类歧视相关的特征。此外,这些基本函数被设计为具有多个边界段,而不是像RBF那样具有单个边界。这些对基础函数的新增强以及合适的训练算法使神经网络可以更好地学习问题域的特定属性。与传统的RBF神经网络以及与RBF神经网络结合使用的其他几种整体技术相比,拟议的分类器已展现出卓越的性能。基于CBF神经网络的分类器的准确性为96.1%,而使用同一数据库测试的所有其他基于常规RBF神经网络的分类方案的最佳准确性为86.6%。 (c)2007 Elsevier Ltd.保留所有权利。

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