Litcius/Paper detail

B-Spline Texture Coefficients Estimator for Screen Content Image Super-Resolution

Byeonghyun Pak, Jaewon Lee, Kyong Hwan Jin

202313 citationsDOI

Abstract

Screen content images (SCIs) include many informative components, e.g., texts and graphics. Such content creates sharp edges or homogeneous areas, making a pixel distribution of SCI different from the natural image. Therefore, we need to properly handle the edges and textures to minimize information distortion of the contents when a display device's resolution differs from SCIs. To achieve this goal, we propose an implicit neural representation using B-splines for screen content image super-resolution (SCI SR) with arbitrary scales. Our method extracts scaling, translating, and smoothing parameters of B-splines. The followed multilayer perceptron (MLP) uses the estimated B-splines to recover high-resolution SCI. Our network outperforms both a transformer-based reconstruction and an implicit Fourier representation method in almost upscaling factor, thanks to the positive constraint and compact support of the B-spline basis. Moreover, our SR results are recognized as correct text letters with the highest confidence by a pre-trained scene text recognition network. Source code is available at https://github.com/ByeongHyunPak/btc.

Topics & Concepts

Computer scienceArtificial intelligenceSmoothingComputer visionB-splineSpline (mechanical)PixelGraphicsSource codePattern recognition (psychology)Computer graphics (images)MathematicsOperating systemEngineeringStructural engineeringMathematical analysisAdvanced Image Processing TechniquesImage and Signal Denoising MethodsAdvanced Vision and Imaging