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FCNN: Fourier Convolutional Neural Networks

机译:FCNN:傅立叶卷积神经网络

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摘要

The Fourier domain is used in computer vision and machine learning as image analysis tasks in the Fourier domain are analogous to spatial domain methods but are achieved using different operations. Convolutional Neural Networks (CNNs) use machine learning to achieve state-of-the-art results with respect to many computer vision tasks. One of the main limiting aspects of CNNs is the computational cost of updating a large number of convolution parameters. Further, in the spatial domain, larger images take exponentially longer than smaller image to train on CNNs due to the operations involved in convolution methods. Consequently, CNNs are often not a viable solution for large image computer vision tasks. In this paper a Fourier Convolution Neural Network (FCNN) is proposed whereby training is conducted entirely within the Fourier domain. The advantage offered is that there is a significant speed up in training time without loss of effectiveness. Using the proposed approach larger images can therefore be processed within viable computation time. The FCNN is fully described and evaluated. The evaluation was conducted using the benchmark CifarlO and MNIST datasets, and a bespoke fundus retina image dataset. The results demonstrate that convolution in the Fourier domain gives a significant speed up without adversely affecting accuracy. For simplicity the proposed FCNN concept is presented in the context of a basic CNN architecture, however, the FCNN concept has the potential to improve the speed of any neural network system involving convolution.
机译:傅里叶域用于计算机视觉和机器学习,因为傅里叶域中的图像分析任务类似于空间域方法,但是使用不同的操作来实现。卷积神经网络(CNN)使用机器学习来实现许多计算机视觉任务的最新结果。 CNN的主要局限性之一是更新大量卷积参数的计算成本。此外,在空间域中,由于卷积方法中涉及的操作,较大的图像要比较小的图像以指数方式花费更长的时间才能在CNN上进行训练。因此,对于大图像计算机视觉任务,CNN通常不是可行的解决方案。在本文中,提出了傅立叶卷积神经网络(FCNN),从而完全在傅立叶域内进行训练。所提供的优点是可以显着加快培训时间,而不会降低有效性。因此,使用所提出的方法,可以在可行的计算时间内处理较大的图像。对FCNN进行了完整的描述和评估。使用基准Cifar10和MNIST数据集以及定制的眼底视网膜图像数据集进行评估。结果表明,傅立叶域中的卷积可以显着提高速度,而不会对精度产生不利影响。为简单起见,在基本CNN体系结构的上下文中提出了所提出的FCNN概念,但是,FCNN概念具有提高任何涉及卷积的神经网络系统的速度的潜力。

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