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Hough Transform for Detecting Space Curves in Digital 3D Models

Chiara Romanengo, Silvia Biasotti, Bianca Falcidieno

2022Journal of Mathematical Imaging and Vision15 citationsDOIOpen Access PDF

Abstract

Abstract We present and analyse the Hough transform (HT) to recognise and approximate space curves in digital models, a problem that is not currently addressed by the standard HT. Our method works on meshes and point clouds and applies to models even incomplete or affected by noise, thus being suitable for the analysis of digital models deriving from 3D scans. In our approach we take advantage of a recent HT formulation for algebraic curves to define both parametric and implicit space curve representations. We also provide a comparative analysis of the HT-based method when dealing with both curve representations, discussing the computational performance and the approximation accuracy of both strategies.

Topics & Concepts

Hough transformPolygon meshSpace (punctuation)Point (geometry)Computer scienceParametric statisticsPoint cloudParametric equationMathematicsAlgorithmParameter spaceNoise (video)Curve fittingArtificial intelligenceGeometryImage (mathematics)Machine learningStatisticsOperating systemImage and Object Detection Techniques3D Surveying and Cultural HeritageImage Processing and 3D Reconstruction
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