首页> 外文会议>IEEE Conference on Virtual Reality and 3D User Interfaces >Real-Time Panoramic Depth Maps from Omni-directional Stereo Images for 6 DoF Videos in Virtual Reality
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Real-Time Panoramic Depth Maps from Omni-directional Stereo Images for 6 DoF Videos in Virtual Reality

机译:虚拟现实中来自6个自由度视频的全方位立体图像的实时全景深度图

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In this paper we present an approach for 6 DoF panoramic videos from omni-directional stereo (ODS) images using convolutional neural networks (CNNs). More specifically, we use CNNs to generate panoramic depth maps from ODS images in real-time. These depth maps would then allow for re-projection of panoramic images thus providing 6 DoF to a viewer in virtual reality (VR). As the boundaries of a panoramic image must touch in order to envelope a viewer, we introduce a border weighted loss function as well as new error metrics specifically tailored for panoramic images. We show experimentally that training with our border weighted loss function improves performance by benchmarking a baseline skip-connected encoder-decoder style network as well as other state-of-the-art methods in depth map estimation from mono and stereo images. Finally, a practical application for VR using real world data is also demonstrated.
机译:在本文中,我们提出了一种使用卷积神经网络(CNN)从全向立体(ODS)图像中提取6个DoF全景视频的方法。更具体地说,我们使用CNN从ODS图像实时生成全景深度图。然后,这些深度图将允许重新投影全景图像,从而为虚拟现实(VR)中的查看器提供6 DoF。由于全景图像的边界必须触摸才能包围观看者,因此我们引入了边界加权损失函数以及专为全景图像量身定制的新误差度量。我们通过实验证明,使用边界加权损失函数进行训练可以通过对基线跳过连接的编码器-解码器样式网络以及其他从单色和立体图像进行深度图估计的最新方法进行基准测试来提高性能。最后,还演示了使用现实世界数据进行VR的实际应用。

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