Live Metric 3D Reconstruction on Mobile Phones

Computer Vision(2013)

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摘要
In this paper, we propose a complete on-device 3D reconstruction pipeline for mobile monocular hand-held devices, which generates dense 3D models with absolute scale on-site while simultaneously supplying the user with real-time interactive feedback. The method fills a gap in current cloud-based mobile reconstruction services as it ensures at capture time that the acquired image set fulfills desired quality and completeness criteria. In contrast to existing systems, the developed framework offers multiple innovative solutions. In particular, we investigate the usability of the available on-device inertial sensors to make the tracking and mapping process more resilient to rapid motions and to estimate the metric scale of the captured scene. Moreover, we propose an efficient and accurate scheme for dense stereo matching which allows to reduce the processing time to interactive speed. We demonstrate the performance of the reconstruction pipeline on multiple challenging indoor and outdoor scenes of different size and depth variability.
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关键词
cloud computing,image matching,image reconstruction,mobile handsets,stereo image processing,absolute scale on-site,capture time,cloud-based mobile reconstruction services,completeness criteria,dense 3D model generation,dense stereo matching,depth variability,indoor scene,interactive speed,live metric 3D reconstruction,mapping process,mobile monocular handheld devices,mobile phones,on-device 3D reconstruction pipeline,on-device inertial sensor usability,outdoor scene,processing time reduction,quality criteria,real-time interactive feedback,tracking process
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