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FPGA Implementation of Handwritten Number Recognition using Artificial Neural Network

机译:基于人工神经网络的手写体数字识别的FPGA实现

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Implementation of Deep Learning and Machine Learning Algorithms is always a challenge as they consume a lot of resources and power. In this paper, we have presented a very simple yet efficient way for creating an IP (intellectual property) core for Handwritten Number Recognition for FPGAs. The proposed ANN was verified and compared with several ANN networks on MATLAB, which gave the accuracy of about 99.38%. This network was implemented on Xilinx Zybo board XC7Z010CLG400-1. The total area covered by the IP block is 27.9%. The IP created is efficient and uses fewer resources thus suitable for other embedded applications.
机译:深度学习和机器学习算法的实现始终是一个挑战,因为它们会消耗大量资源和功能。在本文中,我们提出了一种非常简单而有效的方法来创建用于FPGA的手写数字识别的IP(知识产权)核。对提出的人工神经网络进行了验证,并与MATLAB上的几种人工神经网络进行了比较,其准确性约为99.38%。该网络是在Xilinx Zybo板XC7Z010CLG400-1上实现的。 IP块覆盖的总面积为27.9%。创建的IP是高效的,使用的资源较少,因此适用于其他嵌入式应用程序。

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