Joint Multi-Layer Segmentation and Reconstruction for Free-Viewpoint Video Applications

Current state-of-the-art image-based scene reconstruction techniques are capable of generating high-fidelity 3D models when used under controlled capture conditions. However, they are often inadequate when used in more challenging environments such as sports scenes with moving cameras. Algorithms mu...

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Veröffentlicht in:International journal of computer vision 2011-05, Vol.93 (1), p.73-100
Hauptverfasser: Guillemaut, Jean-Yves, Hilton, Adrian
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Hilton, Adrian
description Current state-of-the-art image-based scene reconstruction techniques are capable of generating high-fidelity 3D models when used under controlled capture conditions. However, they are often inadequate when used in more challenging environments such as sports scenes with moving cameras. Algorithms must be able to cope with relatively large calibration and segmentation errors as well as input images separated by a wide-baseline and possibly captured at different resolutions. In this paper, we propose a technique which, under these challenging conditions, is able to efficiently compute a high-quality scene representation via graph-cut optimisation of an energy function combining multiple image cues with strong priors. Robustness is achieved by jointly optimising scene segmentation and multiple view reconstruction in a view-dependent manner with respect to each input camera. Joint optimisation prevents propagation of errors from segmentation to reconstruction as is often the case with sequential approaches. View-dependent processing increases tolerance to errors in through-the-lens calibration compared to global approaches. We evaluate our technique in the case of challenging outdoor sports scenes captured with manually operated broadcast cameras as well as several indoor scenes with natural background. A comprehensive experimental evaluation including qualitative and quantitative results demonstrates the accuracy of the technique for high quality segmentation and reconstruction and its suitability for free-viewpoint video under these difficult conditions.
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subjects Accuracy
Algorithms
Applied sciences
Artificial Intelligence
Calibration
Cameras
Computer Imaging
Computer Science
Computer science
control theory
systems
Errors
Exact sciences and technology
Hypotheses
Image Processing and Computer Vision
Mathematical models
Optimization
Pattern Recognition
Pattern Recognition and Graphics
Pattern recognition. Digital image processing. Computational geometry
Reconstruction
Segmentation
Vision
title Joint Multi-Layer Segmentation and Reconstruction for Free-Viewpoint Video Applications
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