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ASYMPTOTICALLY STABLE MULTI-VALUED MANY-TO-MANY ASSOCIATIVE MEMORY NEURAL NETWORK AND ITS APPLICATION IN IMAGE RETRIEVAL

机译:渐近稳定多值多对多联想记忆神经网络及其在图像检索中的应用

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摘要

As an important artificial neural network, associative memory model can be employed to mimic human thinking and machine intelligence. In this paper, first, a multi-valued many-to-many Gaussian associative memory model (M~3GAM) is proposed by introducing the Gaussian unidirectional associative memory model (GUAM) and Gaussian bidirectional associative memory model (GBAM) into Hattori et al's multi-module associative memory model ((MMA)~2). Second, the M~3GAM's asymptotical stability is proved theoretically in both synchronous and asynchronous update modes, which ensures that the stored patterns become the M~3GAM's stable points. Third, by substituting the general similarity metric for the negative squared Euclidean distance in M~3GAM, the generalized multivalued many-to-many Gaussian associative memory model (GM~3GAM) is presented, which makes the M~3GAM become its special case. Finally, we investigate the M~3GAM's application in association-based image retrieval, and the computer simulation results verify the M~3GAM's robust performance.
机译:作为重要的人工神经网络,联想记忆模型可用于模仿人类的思维和机器智能。本文首先通过将高斯单向联想记忆模型(GUAM)和高斯双向联想记忆模型(GBAM)引入Hattori等人的研究中,提出了多值多对多高斯联想记忆模型(M〜3GAM)。多模块关联内存模型((MMA)〜2)。其次,从理论上证明了在同步更新和异步更新模式下M〜3GAM的渐近稳定性,这确保了存储的模式成为M〜3GAM的稳定点。第三,用通用相似度量代替M〜3GAM中的负平方欧氏距离,提出了广义的多值多对多高斯联想记忆模型(GM〜3GAM),这使得M〜3GAM成为特例。最后,我们研究了M〜3GAM在基于关联的图像检索中的应用,计算机仿真结果验证了M〜3GAM的鲁棒性能。

著录项

  • 来源
    《Neural Network World》 |2013年第2期|169-189|共21页
  • 作者单位

    School of Computer, Nanjing University of Posts and Telecommunications,Key Laboratory of Broadband Wireless Communication & Sensor Network Technology, Ministry of Education;

    School of Computer, Nanjing University of Posts and Telecommunications,Key Laboratory of Broadband Wireless Communication & Sensor Network Technology, Ministry of Education;

    School of Computer, Nanjing University of Posts and Telecommunications;

    School of Computer, Nanjing University of Posts and Telecommunications;

    Key Laboratory of Broadband Wireless Communication & Sensor Network Technology, Ministry of Education;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Artificial neural network; associative memory model; asymptotical stability; similarity metric; association-based image retrieval;

    机译:人工神经网络;联想记忆模型无症状的稳定性;相似度基于关联的图像检索;

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