首页|Towards Domain-agnostic Depth Completion

Towards Domain-agnostic Depth Completion

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Existing depth completion methods are often targeted at a specific sparse depth type and generalize poorly across task do-mains.We present a method to complete sparse/semi-dense,noisy,and potentially low-resolution depth maps obtained by various range sensors,including those in modern mobile phones,or by multi-view reconstruction algorithms.Our method leverages a data-driven pri-or in the form of a single image depth prediction network trained on large-scale datasets,the output of which is used as an input to our model.We propose an effective training scheme where we simulate various sparsity patterns in typical task domains.In addition,we design two new benchmarks to evaluate the generalizability and robustness of depth completion methods.Our simple method shows su-perior cross-domain generalization ability against state-of-the-art depth completion methods,introducing a practical solution to high-quality depth capture on a mobile device.

Monocular depth estimationdepth completionzero-shot generalizationscene reconstructionneural network

Guangkai Xu、Wei Yin、Jianming Zhang、Oliver Wang、Simon Niklaus、Simon Chen、Jia-Wang Bian

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Zhejiang University,Hangzhou 310058,China

DaJiang Technology,Shenzhen 518057,China

Adobe Research,California 95110,USA

University of Oxford,Oxford OX1 2JD,UK

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2024

机器智能研究(英文)
中国科学院自动化所

机器智能研究(英文)

CSTPCDEI
影响因子:0.49
ISSN:2731-538X
年,卷(期):2024.21(4)