用于高能物理的细胞神经网络

X. Vilasís-Cardona
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引用次数: 2

摘要

细胞神经网络(CNN)[1]的主要优势是其并行硬件实现的能力和通用性。最重要的是,在每个单元上添加本地传感器信息的可能性,为在硬件时间内响应大量并行信号处理提供了独特的系统。长期以来,图像处理一直是社区致力于证明cnn卓越性的主要领域。而且,它们仍然没有大规模地用于图像应用程序,可能是因为很少有情况在计算复杂性和短响应时间方面要求如此高,而标准顺序CPU无法提供
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cellular Neural Networks for high energy physics
Cellular Neural Networks (CNN) [1] main assets are quoted to be their capacity for parallel hardware implementation and their universality. On top, the possibility to add the information of a local sensor on every cell, provides a unique system for massive parallel signal processing responding in hardware time. Image processing has been, for a long time, the main field where the community has focussed its efforts to prove the excellence of CNNs. And, still, they are not used at large scale for image applications, probably because few cases are so demanding in terms of computation complexity and short response time not to be afforded by a standard sequential CPU
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