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Implementation of integral transforms on the general purpose CNN neuroprocessor

机译:关于通用CNN神经过程的整体变换的实现

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The Cellular Neural Network Universal Machine (CNN-UM) is a novel neuroprocessor algorithmically programmable having real time and supercomputer power implemented in a single VLSI chip. The local CNN connectivity provides an useful computation paradigm when the problem can be reformulated as a well-defined task where the signal values are placed on a regular 2D grid (i.e., image processing), and the direct interaction between signal values are limited within a local neighborhood. This paper demonstrates how the CNN-UM architecture can be applied to perform global operations like Integral/Wavelet Transformations, in such a way that we can deliver this architecture from the use of alternative ones when nonlocal operations are needed. Lastly, examples are given to highlight the main steps of the method.
机译:蜂窝神经网络通用机器(CNN-UM)是一种新型神经过程,具有在单个VLSI芯片中实现的实时和超级计算机功率的实时可编程。当问题可以重新重新格式化为信号值的明确任务时,本地CNN连接提供了有用的计算范例,其中信号值放置在常规2D网格(即,图像处理)上,并且信号值之间的直接交互受到限制地方社区。本文演示了如何应用CNN-UM架构来执行整体/小波变换等全局操作,以便我们可以在需要非识别操作时从使用替代方案中提供此架构。最后,给出了示例来突出显示该方法的主要步骤。

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