Symmetry (Oct 2020)

Matrix Expression of Convolution and Its Generalized Continuous Form

  • Young Hee Geum,
  • Arjun Kumar Rathie,
  • Hwajoon Kim

DOI
https://doi.org/10.3390/sym12111791
Journal volume & issue
Vol. 12, no. 11
p. 1791

Abstract

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In this paper, we consider the matrix expression of convolution, and its generalized continuous form. The matrix expression of convolution is effectively applied in convolutional neural networks, and in this study, we correlate the concept of convolution in mathematics to that in convolutional neural network. Of course, convolution is a main process of deep learning, the learning method of deep neural networks, as a core technology. In addition to this, the generalized continuous form of convolution has been expressed as a new variant of Laplace-type transform that, encompasses almost all existing integral transforms. Finally, we would, in this paper, like to describe the theoretical contents as detailed as possible so that the paper may be self-contained.

Keywords