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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >RBF-based neurodynamic nearest neighbor classification in real pattern space
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RBF-based neurodynamic nearest neighbor classification in real pattern space

机译:实模式空间中基于RBF的神经动力学最近邻分类

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摘要

Superposition of radial basis functions centered at given prototype patterns constitutes one of the most suitable energy forms for gradient systems that perform nearest neighbor classification with real-valued static prototypes. It is shown in this paper that a continuous-time dynamical neural network model, employing a radial basis function and a sigmoid multi-layer perceptron sub-networks, is capable of maximizing such an energy form locally, thus performing almost perfectly nearest neighbor classification, when initiated by a distorted pattern. The proposed design scheme allows for explicit representation of prototype patterns as network parameters, as well as augmenting additional or forgetting existing memory patterns. The dynamical classification scheme implemented by the network eliminates all comparisons, which are the vital steps of the conventional nearest neighbor classification process. The performance of the proposed network model is demonstrated on binary and gray-scale image reconstruction applications. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:以给定的原型模式为中心的径向基函数的叠加构成最适合于使用实值静态原型执行最近邻分类的梯度系统的能量形式之一。本文表明,采用径向基函数和S形多层感知器子网络的连续时间动态神经网络模型能够局部最大化这种能量形式,从而执行几乎完美的最近邻分类。由扭曲的模式启动时。提出的设计方案允许将原型模式显式表示为网络参数,以及增加其他内存模式或遗忘现有内存模式。网络实现的动态分类方案消除了所有比较,这是常规最近邻居分类过程的关键步骤。在二进制和灰度图像重建应用中证明了所提出的网络模型的性能。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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