OmniPhotos: Casual 360° VR Photography with Motion Parallax

Tobias Bertel, Mingze Yuan, Reuben Lindroos, Christian Richardt
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引用次数: 2

Abstract

Until now, immersive 360° VR panoramas could not be captured casually and reliably at the same time as state-of-the-art approaches involve time-consuming or expensive capture processes that prevent the casual capture of real-world VR environments. Existing approaches are also often limited in their supported range of head motion. We introduce OmniPhotos, a novel approach for casually and reliably capturing high-quality 360° VR panoramas. Our approach only requires a single sweep of a consumer 360° video camera as input, which takes less than 3 seconds with a rotating selfie stick. The captured video is transformed into a hybrid scene representation consisting of a coarse scene-specific proxy geometry and optical flow between consecutive video frames, enabling 5-DoF real-world VR experiences. The large capture radius and 360° field of view significantly expand the range of head motion compared to previous approaches. Among all competing methods, ours is the simplest, and fastest by an order of magnitude. We have captured more than 50 OmniPhotos and show video results for a large variety of scenes. We will make our code and datasets publicly available.
OmniPhotos:休闲360°VR摄影与运动视差
到目前为止,身临其境的360°VR全景还不能随意可靠地捕捉到,同时最先进的方法涉及耗时或昂贵的捕捉过程,这阻碍了对真实VR环境的随意捕捉。现有的方法也经常限制其支持的头部运动范围。我们介绍了OmniPhotos,这是一种轻松可靠地捕捉高质量360°VR全景的新方法。我们的方法只需要消费者360°摄像机的一次扫描作为输入,使用旋转自拍杆不到3秒。捕获的视频被转换成混合场景表示,由粗糙的场景特定代理几何图形和连续视频帧之间的光流组成,从而实现5自由度的真实VR体验。与之前的方法相比,大捕获半径和360°视场显着扩大了头部运动的范围。在所有相互竞争的方法中,我们的方法是最简单的,而且速度快了一个数量级。我们已经捕获了50多个OmniPhotos,并展示了各种场景的视频结果。我们将公开我们的代码和数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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