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首页> 外文期刊>Journal of Advanced Computational Intelligence >The application of hybrid evolving connectionist systems to image classification
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The application of hybrid evolving connectionist systems to image classification

机译:混合进化连接系统在图像分类中的应用

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摘要

This paper presents a methodology for image classification of both spatial and spectral data with the use of hybrid evolving fuzzy neural networks (EFuNNS). EFuNNs are five layer sparsely connected networks. EFuNNs contain dynamic structures that evolve by growing and pruning of neurons and connections. EFuNNS merge three supervised classification methods: connectionism, fuzzy logic, and case-based reasoning. By merging these strategies, this new structure is capable of learning and generalising from a small sample set of large attribute vectors as well as from large sample sets and small feature vectors. Two case studies data are used to demonstrate the effectiveness of the methodology. First, an environmental remote sensing application, and second, large scale images of fl-nit for automated grading. The proposed methodology provides fast and accurate adaptive learning for image classification. It is also applicable for on-line, real-time learning and classification.
机译:本文提出了一种使用混合进化模糊神经网络(EFuNNS)对空间和光谱数据进行图像分类的方法。 EFuNN是五层稀疏连接的网络。 EFuNN包含动态结构,该结构通过神经元和连接的生长和修剪而演变。 EFuNNS合并了三种监督分类方法:连接主义,模糊逻辑和基于案例的推理。通过合并这些策略,此新结构能够从大属性向量的小样本集以及大样本集和小特征向量中学习和概括。两个案例研究数据用于证明该方法的有效性。首先是环境遥感应用程序,其次是用于自动分级的绒毛大比例图像。所提出的方法为图像分类提供了快速而准确的自适应学习。它也适用于在线实时学习和分类。

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