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arxiv: 1812.08350 · v2 · pith:W45BC7OTnew · submitted 2018-12-20 · 📡 eess.IV · cs.CV

Plug-and-Play: Improve Depth Estimation via Sparse Data Propagation

classification 📡 eess.IV cs.CV
keywords depthsparsedepthsmoduleconsistentgivenmodelplug-and-play
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We propose a novel plug-and-play (PnP) module for improving depth prediction with taking arbitrary patterns of sparse depths as input. Given any pre-trained depth prediction model, our PnP module updates the intermediate feature map such that the model outputs new depths consistent with the given sparse depths. Our method requires no additional training and can be applied to practical applications such as leveraging both RGB and sparse LiDAR points to robustly estimate dense depth map. Our approach achieves consistent improvements on various state-of-the-art methods on indoor (i.e., NYU-v2) and outdoor (i.e., KITTI) datasets. Various types of LiDARs are also synthesized in our experiments to verify the general applicability of our PnP module in practice. For project page, see https://zswang666.github.io/PnP-Depth-Project-Page/

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  1. Radar-Guided Polynomial Fitting for Metric Depth Estimation

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    POLAR converts scaleless monocular depth maps to metric scale via radar-guided polynomial fitting and first-derivative regularization, claiming 24.9% MAE and 33.2% RMSE gains over prior methods on three datasets.