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Spectral-based convolutional neural network without multiple spatial-frequency domain switchings

机译:没有多个空间-频域切换的基于谱的卷积神经网络

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Recent researches have shown that spectral representation provides a significant speed-up in the massive computation workload of convolution operations in the inference (feed-forward) algorithm of Convolutional Neural Networks (CNNs). This approach results in reducing the computational complexity of the classification task, which makes spectral-based CNN suitable for implementation on embedded platform that typically has constrained resources. However, a major challenge in this approach is that the mathematical formulation of a nonlinear activation function in spectral (frequency) domain is currently not available; hence, computation of the activation functions in each layer has to be performed in the spatial domain. This results in several spatial-frequency domain switchings that are computationally very costly, and as such, it would be advantageous to strictly stay in the frequency domain. Hence, in this work, a novel Spectral Rectified Linear Unit (SReLU) for the activation function is proposed, that makes it possible for the computations to remain in the frequency domain, and therefore avoids the multiple compute-intensive domain transformations. To further optimize the classification speed of the network, an efficient spectral-based CNN model is presented that uses only the lower frequency components by way of fusing the convolutional and sub-sampling layers. Additionally, we provide and utilize a frequency domain equivalent of the conventional batch normalization layer that results in improving the accuracy of the network. Experimental results indicate that the proposed spectral-based CNN model achieves up to 17.02 x and 3.45 x faster classification speed (without considerable accuracy loss) on AT&T face recognition and MNIST digit/fashion classification datasets, respectively, as compared to the equivalent models in the spatial domain, hence outperforming conventional approaches significantly. (C) 2019 Elsevier B.V. All rights reserved.
机译:最近的研究表明,频谱表示在卷积神经网络(CNN)的推理(前馈)算法中大大提高了卷积运算的大量计算工作量。这种方法可降低分类任务的计算复杂度,从而使基于频谱的CNN适合在资源通常受限的嵌入式平台上实施。但是,这种方法的主要挑战在于,目前尚无法获得频谱(频率)域中非线性激活函数的数学公式。因此,必须在空间域中执行每一层中的激活函数的计算。这导致在计算上非常昂贵的多个空间-频域切换,因此,严格地保持在频域中将是有利的。因此,在这项工作中,提出了一种用于激活函数的新型频谱校正线性单元(SReLU),这使得计算可能保留在频域中,从而避免了多个计算密集型域转换。为了进一步优化网络的分类速度,提出了一种有效的基于频谱的CNN模型,该模型通过融合卷积和子采样层仅使用低频分量。此外,我们提供并利用了与常规批处理规范化层等效的频域,从而提高了网络的准确性。实验结果表明,与基于频谱的CNN模型相比,基于AT&T人脸识别和MNIST数字/时尚分类数据集的分类速度分别提高了17.02倍和3.45倍(没有明显的精度损失)。空间领域,因此明显优于传统方法。 (C)2019 Elsevier B.V.保留所有权利。

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