ConvNets Architecture for Complex Mixed Analogue-Digital Simulations

V. Bonaiuto, F. Sargeni
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Abstract

The Convolutional Neural Networks (ConvNets) with its proper hierarchical structure are known as powerful image-recognition processing architecture. In particular, the ConvNets are well suited for several image processing tasks, such as image classification data set, computer vision and natural language processing. Nevertheless, the implementation of ConvNets requires a large amount of operations as the 2-D convolutional mappings that need a very large computational power. In this paper, the authors will investigate alternative hardware architectures, based on Cellular Neural Networks (CeNNs), in order to improve the overall performances
复杂混合模数仿真的ConvNets体系结构
卷积神经网络(Convolutional Neural Networks, ConvNets)是一种强大的图像识别处理体系结构,具有良好的层次结构。特别是,卷积神经网络非常适合一些图像处理任务,如图像分类数据集、计算机视觉和自然语言处理。然而,卷积神经网络的实现需要大量的运算,因为二维卷积映射需要非常大的计算能力。在本文中,作者将研究基于细胞神经网络(CeNNs)的替代硬件架构,以提高整体性能
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