首页> 外文会议>The Second International Conference on Information Systems Sciences(ICISS'2008)(第二届信息与系统科学国际会议)论文集 >STRIP SURFACE DEFECT RECOGNITION USING MARKING WINNER IN SELF-ORGANIZING NEURAL NETWORK BASED ON IMAGE INFORMATION
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STRIP SURFACE DEFECT RECOGNITION USING MARKING WINNER IN SELF-ORGANIZING NEURAL NETWORK BASED ON IMAGE INFORMATION

机译:基于图像信息的自组织神经网络中基于标记Winner的条带缺陷识别

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High-quality strip as automotive, household electrical appliances and other industries important raw materials, the surface quality is unable to meet the demand of users. The ultimate goal is Zero defect. Currently, as to surface defect of strip steel, it is difficult to accurately and effectively recognize which kind of defect and how serious defect on the strip steel. It is also the first step to import the surface quality of strip steel, in this paper, we propose a practical scheme self-organizing neural network (SOFM), which could prevent the situation of linear Indivisible or multi irregular space clustering error. The SOFM is an unsupervised learning algorithm of Artificial Neural Network (ANN). It allows the data organized onto a feature graph while conserving most of the topological characters of the original data space. In order to get multi subspace clustering, the SOFM is not unsupervised in this paper. The SOFM with winner neuron marking method is given. An example is presented in paper to illustrate the advantage of this method.
机译:优质带钢作为汽车,家用电器等行业的重要原料,其表面质量无法满足用户的需求。最终目标是零缺陷。目前,对于带钢的表面缺陷,很难准确有效地识别出带钢的缺陷类型和严重程度。这也是导入带钢表面质量的第一步,本文提出了一种实用的自组织神经网络方案(SOFM),可以防止线性不可分或多重不规则空间聚类错误的发生。 SOFM是人工神经网络(ANN)的无监督学习算法。它允许将数据组织到特征图上,同时保留原始数据空间的大多数拓扑特征。为了获得多个子空间聚类,本文对SOFM进行了监督。给出了具有胜利者神经元标记方法的SOFM。论文中给出了一个例子来说明这种方法的优势。

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