High-resolution Surface Reconstruction based on Multi-level Implicit Surface from Multiple Range Images
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概要
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Sensing the 3D shape of a dynamic scene is not a trivial problem, but it is useful for various applications. Recently, sensing systems have been improved and are now capable of high sampling rates. However, particularly for dynamic scenes, there is a limit to improving the resolution at high sampling rates. In this paper, we present a method for improving the resolution of a 3D shape reconstructed from multiple range images acquired from a moving target. In our approach, the alignment and surface estimation problems are solved in a simultaneous estimation framework. Together with the use of an adaptive multi-level implicit surface for shape representation, this allows us to calculate the alignment by using shape features and surface estimation according to the amount of movement of the point clouds for each range image. By doing so, this approach realized simultaneous estimation more precisely than a scheme involving mere alternating estimation of shape and alignment. We present results of experiments for evaluating the reconstruction accuracy with different point cloud densities and noise levels.
- Information and Media Technologies 編集運営会議の論文
著者
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Ishikawa Masatoshi
Graduate School Of Information Science And Technology The University Of Tokyo
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ISHIKAWA Masatoshi
Graduate School of Information Science and Technology, The University of Tokyo
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Watanabe Yoshihiro
Graduate School of Information Science and Technology, the University of Tokyo
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Noguchi Shohei
Graduate School of Information Science and Technology, the University of Tokyo
関連論文
- A Dynamically Reconfigurable SIMD Processor for a vision Chip
- High-resolution Surface Reconstruction based on Multi-level Implicit Surface from Multiple Range Images
- High-resolution Surface Reconstruction based on Multi-level Implicit Surface from Multiple Range Images