1. What have the authors contributed in "Accelerating convolutional neural network using discrete orthogonal transforms" ?
In this paper, the authors present the use of spectral domain beyond the Fourier transform for computing convolution operations.. First, the authors review how the domains produced by the Fourier, Hartley and Cosine transforms, which are part of a family of discrete orthogonal transforms, have been used in the literature to design different deep neural network architectures.. Then, the authors investigate how each of these transforms can be used to design CNN models as an alternative to the spatial domain convolution to speedup computation.. A detailed comparative study of these transforms in terms of their learning capabilities and computational complexity is presented.
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2. What have the authors stated for future works in "Accelerating convolutional neural network using discrete orthogonal transforms" ?
In future work, the authors intend to investigate and benchmark the performance of DOTs by considering pooling layers on the spectral domain.
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![Figure 10: LENET-5 architecture, model designed to solve the digit recognition problem [9].](/figures/figure-10-lenet-5-architecture-model-designed-to-solve-the-1v6u7bgj.png)

