基于脉冲模式RBFNN的边缘检测系统在virtex V平台上的硬件实现

Amir Gargouri, M. Krid, D. Sellami Masmoudi
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引用次数: 3

摘要

本文提出了一种新的RBFNN结构。神经网络在嵌入式系统中的有效性提供了重构的可能性和解决方案的通用性。实际上,由于芯片上的参数更新,同一个集成系统可以近似任何输入输出函数。RBF神经网络是神经网络的一个子集,在减小网络规模方面具有很大的潜力。脉冲模式神经网络用简单的频率乘法器代替传统的巨大乘法器,大大减少了硬件资源。作为应用,我们提出了一种基于Canny算子的边缘检测RBF网络,这是图像处理的一个重要步骤。在Wang图像数据库上,得到了可接受的边缘检测近似,平均泛化误差为(4604%)。在FPGA virtex V平台上进行了设计综合,实现结果表明,工作频率为445,295 MHz,具有较好的实时应用性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hardware implementation of pulse mode RBFNN based edge detection system on virtex V platform
In this paper, we have proposed a new architecture of RBFNN. Neural network efficiency in embedded systems offers the possibility of reconfiguration and the genericity of the solution. Indeed, the same integrated system can approximate any input-output function thanks to the parameters update on the chip. RBF neural networks constitute a subset of the neuronal networks, which has a great potential in reducing the size of the network. Pulse mode neural networks reduce significantly hardware resources by replacing the conventional huge multiplier by a simple frequency multiplier. As application, we approximate with the proposed RBF network, a Canny operator based edge detection, which is an important step in image processing. Acceptable edge detection approximation was done, with a mean generalization error of (4,604 %) on the Wang image database. Moreover, a design synthesis on FPGA virtex V platform was done, the results of implementation lead to an operating frequency of 445,295 MHz, which offers real time application performances.
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