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Optimization of a hardware implementation for Pulse Coupled neural Networks for image applications

机译:用于图像应用的脉冲耦合神经网络的硬件实现的优化

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Pulse Coupled Neural Networks are a very useful tool for image processing and visual applications, since it has the advantages of being invariant to image changes as rotation, scale, or certain distortion. Among other characteristics, the PCNN changes a given image input into a temporal representation which can be easily later analyzed for pattern recognition. The structure of a PCNN though, makes it necessary to determine all of its parameters very carefully in order to function optimally, so that the responses to the kind of inputs it will be subjected are clearly discriminated allowing for an easy and fast post-processing yielding useful results. This tweaking of the system is a taxing process.rnIn this paper we analyze and compare two methods for modeling PCNNs. A purely mathematical model is programmed and a similar circuital model is also designed. Both are then used to determine the optimal values of the several parameters of a PCNN: gain, threshold, time constants for feed-in and threshold and linking leading to an optimal design for image recognition. The results are compared for usefulness, accuracy and speed, as well as the performance and time requirements for fast and easy design, thus providing a tool for future ease of management of a PCNN for different tasks.
机译:脉冲耦合神经网络是图像处理和视觉应用的非常有用的工具,因为它具有随旋转,缩放或某些变形而不变的图像变化的优点。除其他特征外,PCNN将给定的图像输入更改为时间表示,以后可以轻松对其进行分析以进行模式识别。但是,PCNN的结构使得必须非常仔细地确定其所有参数,以使其发挥最佳功能,以便清楚地区分对将要经受的输入类型的响应,从而可以轻松快速地进行后处理有用的结果。该系统的调整是一个繁重的过程。在本文中,我们分析和比较了两种建模PCNN的方法。对纯数学模型进行了编程,还设计了类似的电路模型。然后将两者用于确定PCNN几个参数的最佳值:增益,阈值,馈电和阈值的时间常数以及链接,从而导致图像识别的最佳设计。比较了结果的有用性,准确性和速度,以及快速简便设计的性能和时间要求,从而为将来轻松管理不同任务的PCNN提供了一种工具。

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