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Low-complexity CNN with 1D and 2D filters for super-resolution

Jangsoo Park, Jong‐Seok Lee, Donggyu Sim

2020Journal of Real-Time Image Processing21 citationsDOIOpen Access PDF

Abstract

Abstract This paper proposes a low-complexity convolutional neural network (CNN) for super-resolution (SR). The proposed deep-learning model for SR has two layers to deal with horizontal, vertical, and diagonal visual information. The front-end layer extracts the horizontal and vertical high-frequency signals using a CNN with one-dimensional (1D) filters. In the high-resolution image-restoration layer, the high-frequency signals in the diagonal directions are processed by additional two-dimensional (2D) filters. The proposed model consists of 1D and 2D filters, and as a result, we can reduce the computational complexity of the existing SR algorithms, with negligible visual loss. The computational complexity of the proposed algorithm is 71.37%, 61.82%, and 50.78% lower in CPU, TPU, and GPU than the very-deep SR (VDSR) algorithm, with a peak signal-to-noise ratio loss of 0.49 dB.

Topics & Concepts

Computational complexity theoryDiagonalAlgorithmConvolutional neural networkComputer scienceFilter (signal processing)SuperresolutionResolution (logic)Convolution (computer science)Artificial intelligenceNoise (video)Layer (electronics)Image (mathematics)SIGNAL (programming language)Computer visionArtificial neural networkMathematicsMaterials scienceGeometryComposite materialProgramming languageAdvanced Image Processing TechniquesImage Processing Techniques and ApplicationsAdvanced Vision and Imaging
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