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Self-organizing neural network for pattern classification

机译:自组织神经网络用于模式分类

摘要

A neural network includes a plurality of input nodes for receiving the respective elements of the input vector. A copy of all of the elements of the input vector is sent to the next level of nodes in the neural network denoted as intermediate nodes. The intermediate nodes each encode a separate template pattern. They compare the actual input pattern with the template and generate a signal indicative of the difference between the input pattern and the template pattern. Each of the templates encoded in the intermediate nodes has a class associated with it. The difference calculated by the intermediate nodes is passed to an output node for each of the intermediate nodes at a given class. The output node then selects the minimum difference amongst the values sent from the intermediate nodes. This lowest difference for the class represented by the output node is then forwarded to a selector. The selector receives such values from each of the output nodes of all of the classes and then selects that to output value which is a minimum difference. The selector in turn, generates a signal indicative of the class of the intermediate node that sent the smallest difference value.
机译:神经网络包括用于接收输入向量的各个元素的多个输入节点。输入向量所有元素的副本将发送到神经网络中称为中间节点的节点的下一层。每个中间节点编码一个单独的模板模式。他们将实际的输入模式与模板进行比较,并生成一个指示输入模式与模板模式之间差异的信号。中间节点中编码的每个模板都有一个与之关联的类。对于给定类别的每个中间节点,由中间节点计算的差将传递到输出节点。然后,输出节点从中间节点发送的值中选择最小差异。然后,将输出节点表示的类的最低差异转发给选择器。选择器从所有类别的每个输出节点接收此类值,然后选择该值以输出最小差值。选择器继而产生指示发送最小差值的中间节点的类别的信号。

著录项

  • 公开/公告号US5870729A

    专利类型

  • 公开/公告日1999-02-09

    原文格式PDF

  • 申请/专利权人 MITSUBISHI DENKI KABUSHIKI KAISHA;

    申请/专利号US19970867267

  • 发明设计人 FUMIO YODA;

    申请日1997-06-02

  • 分类号G06F15/18;

  • 国家 US

  • 入库时间 2022-08-22 02:08:41

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