BiFuse: Monocular 360 Depth Estimation via Bi-Projection Fusion

2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)(2020)

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摘要
Depth estimation from a monocular 360 image is an emerging problem that gains popularity due to the availability of consumer-level 360 cameras and the complete surrounding sensing capability. While the standard of 360 imaging is under rapid development, we propose to predict the depth map of a monocular 360 image by mimicking both peripheral and foveal vision of the human eye. To this end, we adopt a two-branch neural network leveraging two common projections: equirectangular and cubemap projections. In particular, equirectangular projection incorporates a complete field-of-view but introduces distortion, whereas cubemap projection avoids distortion but introduces discontinuity at the boundary of the cube. Thus we propose a bi-projection fusion scheme along with learnable masks to balance the feature map from the two projections. Moreover, for the cubemap projection, we propose a spherical padding procedure which mitigates discontinuity at the boundary of each face. We apply our method to four panorama datasets and show favorable results against the existing state-of-the-art methods.
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关键词
panorama datasets,spherical padding procedure,depth map,complete surrounding sensing capability,consumer-level 360 cameras,monocular 360 image,monocular 360 depth estimation,bi-projection fusion scheme,cubemap projection,equirectangular projection,cubemap projections,equirectangular projections,two-branch neural network,foveal vision,peripheral vision
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