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Associative Memory based on clustered Neural Networks: Improved model and architecture for Oriented Edge Detection

机译:基于聚类神经网络的联想记忆:面向边缘检测的改进模型和体系结构

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Associative Memories (AM) are storage devices that allow addressing content from part of it, in opposition of classical index-based memories. This property makes them promising candidates for various search challenges including pattern detection in images. Clustered based Neural Networks (CbNN) allow efficient design of AM by providing fast pattern retrieval, especially when implemented in hardware. In particular, they can be used to store and next quickly identify oriented edges in images. However, current models of CbNN only provide good performances when facing erasures in the inputs. This paper introduces several improvements to the CbNN model in order to cope with intrusion and additive noises. Namely, we change the initialization of neurons to account for precise information depending on Euclidean distance. We also update the activation rules accordingly, resulting in an efficient handling of various types of input noise. To complete this paper, associated hardware architectures are presented along with the proposed computation models and those are compared with the existing CbNN implementation. Synthesis results show that among them, several divide the cost of that implementation by 3 while increasing the maximal frequency by 25%.
机译:关联存储器(AM)是允许从其中部分地址的存储设备,以反对基于索引的存储器的反对。此属性使其具有广泛的候选人,以获得各种搜索挑战,包括图像中的模式检测。基于集群的神经网络(CBNN)允许通过提供快速模式检索来实现AM的高效设计,尤其是在硬件中实现时。特别地,它们可用于存储和接下来快速识别图像中的面向边缘。然而,当面对输入中的擦除时,CBNN的当前模型仅提供良好的性能。本文介绍了CBNN模型的几种改进,以应对入侵和添加剂噪声。即,根据欧几里德距离,我们改变神经元的初始化以解释精确的信息。我们还相应地更新激活规则,导致有效处理各种类型的输入噪声。为了完成本文,将相关的硬件架构以及所提出的计算模型呈现,与现有CBNN实现进行比较。合成结果表明,其中几个将该实施的成本除以3,同时将最大频率提高25%。

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