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Mirror3D: Depth Refinement for Mirror Surfaces

Authors :
Tan, Jiaqi
Lin, Weijie
Chang, Angel X.
Savva, Manolis
Publication Year :
2021

Abstract

Despite recent progress in depth sensing and 3D reconstruction, mirror surfaces are a significant source of errors. To address this problem, we create the Mirror3D dataset: a 3D mirror plane dataset based on three RGBD datasets (Matterport3D, NYUv2 and ScanNet) containing 7,011 mirror instance masks and 3D planes. We then develop Mirror3DNet: a module that refines raw sensor depth or estimated depth to correct errors on mirror surfaces. Our key idea is to estimate the 3D mirror plane based on RGB input and surrounding depth context, and use this estimate to directly regress mirror surface depth. Our experiments show that Mirror3DNet significantly mitigates errors from a variety of input depth data, including raw sensor depth and depth estimation or completion methods.<br />Comment: Paper presented at CVPR 2021. For code, data and pretrained models, see https://3dlg-hcvc.github.io/mirror3d/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.06629
Document Type :
Working Paper