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Three-Dimensional Image Model with Motion Recovery Features
Svetlana Mijakovska, Igor Nedelkovski
Faculty of Bitola Ivo Ribar Lola bb, 7000 Bitola Macedonia
Abstract: Using 3D modelling, we have generated the video content. The structure and motion recovery features of the 3D modelling from the video are presented and our aim is to find the optimum algorithm that fits the features to develop the 3D model from many images. To explain the building exterior, we have created features using the required algorithms to use the triangular polygonal mesh.
Keywords: 3D Modelling, 3D Model, Video, Epipolar Geometry, Structure from Motion (SfM), RANSAC, MLESAC, MSAC, Least Square Three-Dimensional Image Model with Motion Recovery Features
DOI:https://doi.org/10.6025/jmpt/2023/14/2/46-52
Full_Text   PDF 623 KB   Download:   88  times
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