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FroDO: From Detections to 3D Objects

Authors :
Li, Kejie
Rünz, Martin
Tang, Meng
Ma, Lingni
Kong, Chen
Schmidt, Tanner
Reid, Ian
Agapito, Lourdes
Straub, Julian
Lovegrove, Steven
Newcombe, Richard
Publication Year :
2020

Abstract

Object-oriented maps are important for scene understanding since they jointly capture geometry and semantics, allow individual instantiation and meaningful reasoning about objects. We introduce FroDO, a method for accurate 3D reconstruction of object instances from RGB video that infers object location, pose and shape in a coarse-to-fine manner. Key to FroDO is to embed object shapes in a novel learnt space that allows seamless switching between sparse point cloud and dense DeepSDF decoding. Given an input sequence of localized RGB frames, FroDO first aggregates 2D detections to instantiate a category-aware 3D bounding box per object. A shape code is regressed using an encoder network before optimizing shape and pose further under the learnt shape priors using sparse and dense shape representations. The optimization uses multi-view geometric, photometric and silhouette losses. We evaluate on real-world datasets, including Pix3D, Redwood-OS, and ScanNet, for single-view, multi-view, and multi-object reconstruction.<br />Comment: To be published in CVPR 2020. The first two authors contributed equally

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2005.05125
Document Type :
Working Paper