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Joint 3D Layout and Depth Prediction from a Single Indoor Panorama Image

机译:从单个室内全景图像联合3D布局和深度预测

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In this paper, we propose a method which jointly learns the layout prediction and depth estimation from a single indoor panorama image. Previous methods have considered layout prediction and depth estimation from a single panorama image separately. However, these two tasks are tightly intertwined. Leveraging the layout depth map as an intermediate representation, our proposed method outperforms existing methods for both panorama layout prediction and depth estimation. Experiments on the challenging real-world dataset of Stanford 2D-3D demonstrate that our approach obtains superior performance for both the layout prediction tasks (3D IoU: 85.81% v.s. 79.79%) and the depth estimation (Abs Rel: 0.068 v.s. 0.079).
机译:在本文中,我们提出了一种共同学习从单个室内全景图像的布局预测和深度估计的方法。以前的方法已经考虑了单独的全景图像的布局预测和深度估计。但是,这两个任务紧密交织在一起。利用布局深度图作为中间表示,我们所提出的方法优于全景布局预测和深度估计的现有方法。关于斯坦福2D-3D的挑战现实世界数据集的实验表明,我们的方法对布局预测任务(3D IOU:85.81%V.S.79.79%)和深度估计(ABS rel:0.068 V.S.079)获得了卓越的性能。

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