Implementation Guidelines for Image Processing with Convolutional Neural Networks

Florian Bordes, E. Schikuta
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引用次数: 0

Abstract

The domain of image processing technologies comprises many methods and algorithms for the analysis of signals, representing data sets, as photos or videos. In this paper we present a discussion and analysis, on the one hand, of classical image processing methods, as Fourier transformation, and, on the other hand, of neural networks. Specifically we focus on multi-layer and convolutional neural networks and give guidelines how images can be analyzed effectively and efficiently. To speed up the performance we identify various parallel software and hardware environments and evaluate, how parallelism can be used to improve performance of neural network operations. Based on our findings we derive several guidelines for applying different parallelization approaches on various sequential and parallel hardware infrastructure.
卷积神经网络图像处理的实现指南
图像处理技术领域包括许多方法和算法,用于分析表示数据集的信号,如照片或视频。在本文中,我们一方面讨论和分析经典的图像处理方法,如傅里叶变换,另一方面讨论和分析神经网络。我们特别关注多层和卷积神经网络,并给出如何有效和高效地分析图像的指导方针。为了提高性能,我们识别了各种并行软件和硬件环境,并评估了如何使用并行性来提高神经网络操作的性能。根据我们的发现,我们得出了在各种顺序和并行硬件基础设施上应用不同并行化方法的几个指导原则。
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