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Template Optimization in Cellular Neural Networks Using Gradient Based Approaches

机译:基于梯度方法的细胞神经网络模板优化

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Cellular neural networks were used with success in the past decades and helped laying the foundations of neural net-work applications in image processing. In the last few years convolutional networks have appeared and helped in the solution of complex practical problems. Meanwhile programming templates of cellular neural networks were designed by analytical methods, gradient based optimization is applied popularly in convolutional networks. In this paper we will demonstrate how these methods can be exploited using cellular networks and how they can be used to implement classification and feature extraction tasks, both with standard and memristive cell dynamics.
机译:在过去的几十年中,蜂窝神经网络与成功一起使用,并帮助铺设了图像处理中神经网络工作的基础。在过去的几年中,卷积网络已经出现并帮助解决了复杂的实际问题。同时采用分析方法设计了蜂窝神经网络的编程模板,梯度基于梯度的优化在卷积网络中普遍存在。在本文中,我们将演示如何使用蜂窝网络利用这些方法以及如何使用标准和忆内单元动态来实现分类和特征提取任务。

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