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A Discrete Scheme for Computing Image’s Weighted Gaussian Curvature

Yuanhao Gong, Wenming Tang, Lebin Zhou, Lantao Yu, Guoping Qiu

202118 citationsDOI

Abstract

Weighted Gaussian curvature is an important smoothness measurement for images. However, its conventional computation scheme has low performance, low accuracy and requires that the input image must be second order differentiable. To tackle these three issues, we propose a novel discrete computation scheme for the weighted Gaussian curvature. Our scheme does not require the second order differentiability. Moreover, our scheme is more accurate, has smaller support region and computationally more efficient than the conventional schemes. Therefore, our scheme holds promise for a large range of applications where the weighted Gaussian curvature is needed, for example, image smoothing, cartoon texture decomposition, optical flow estimation, etc.

Topics & Concepts

SmoothingDifferentiable functionSmoothnessGaussian curvatureCurvatureComputationGaussianComputer scienceAlgorithmScheme (mathematics)Gaussian blurGaussian processImage (mathematics)MathematicsImage processingArtificial intelligenceComputer visionImage restorationMathematical analysisGeometryQuantum mechanicsPhysicsMedical Image Segmentation TechniquesAdvanced Image Processing TechniquesImage Enhancement Techniques
A Discrete Scheme for Computing Image’s Weighted Gaussian Curvature | Litcius