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A DTCNN universal machine based on highly parallel 2-D cellular automata CAM/sup 2/

机译:基于高度并行二维元胞自动机CAM / sup 2 /的DTCNN通用机器

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The discrete-time cellular neural network (DTCNN) is a promising computer paradigm that fuses artificial neural networks with the concept of cellular automaton (CA) and has many applications to pixel-level image processing. Although some architectures have been proposed for processing DTCNN, there are no compact, practical computers that can process real-world images of several hundred thousand pixels at video rates. So, in spite of its great potential, DTCNNs are not being used for image processing outside the laboratory. This paper proposes a DTCNN processing method based on a highly parallel two-dimensional (2-D) cellular automata called CAM/sup 2/. CAM/sup 2/ can attain pixel-order parallelism on a single PC board because it is composed of a content addressable memory (CAM), which makes it possible to embed enormous numbers of processing elements, corresponding to CA cells, onto one VLSI chip. A new mapping method utilizes maskable search and parallel and partial write commands of CAM/sup 2/ to enable high-performance DTCNN processing. Evaluation results show that, on average, CAM/sup 2/ can perform one transition for various DTCNN templates in about 12 microseconds. Also it can perform practical image processing through a combination of DTCNNs and other CA-based algorithms. CAM/sup 2/ is a promising platform for processing DTCNN.
机译:离散时间细胞神经网络(DTCNN)是一种很有前途的计算机范例,它将人工神经网络与细胞自动机(CA)的概念融合在一起,并在像素级图像处理中有许多应用。尽管已经提出了一些用于处理DTCNN的体系结构,但是还没有紧凑,实用的计算机能够以视频速率处理数十万像素的真实图像。因此,尽管DTCNN具有巨大的潜力,但并未在实验室外用于图像处理。本文提出了一种基于高度并行的二维(2-D)细胞自动机CAM / sup 2 /的DTCNN处理方法。 CAM / sup 2 /可以在一块PC板上获得像素顺序的并行性,因为它由内容可寻址存储器(CAM)组成,这使得可以在一个VLSI芯片上嵌入与CA单元相对应的大量处理元件。 。一种新的映射方法利用可屏蔽的搜索以及CAM / sup 2 /的并行和部分写入命令来实现高性能的DTCNN处理。评估结果表明,平均而言,CAM / sup 2 /可以在大约12微秒内对各种DTCNN模板执行一次过渡。它还可以通过结合DTCNN和其他基于CA的算法来执行实际的图像处理。 CAM / sup 2 /是用于处理DTCNN的有前途的平台。

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