Fast depth extraction from a single image

Predicting depth from a single image is an important problem for understanding the 3-D geometry of a scene. Recently, the nonparametric depth sampling (DepthTransfer) has shown great potential in solving this problem, and its two key components are a Scale Invariant Feature Transform (SIFT) flow–bas...

Full description

Bibliographic Details
Main Authors: Lei He, Qiulei Dong, Guanghui Wang
Format: Article
Language:English
Published: SAGE Publishing 2016-11-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881416663370
id doaj-4c2f2909edca45d2922efaf737a1f946
record_format Article
spelling doaj-4c2f2909edca45d2922efaf737a1f9462020-11-25T03:40:53ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142016-11-011310.1177/172988141666337010.1177_1729881416663370Fast depth extraction from a single imageLei He0Qiulei Dong1Guanghui Wang2 Institute of Automation, Chinese Academy of Sciences, Beijing, China Institute of Automation, Chinese Academy of Sciences, Beijing, China Department of Electrical Engineering and Computer Science, University of Kansas, Lawrence, KS, USAPredicting depth from a single image is an important problem for understanding the 3-D geometry of a scene. Recently, the nonparametric depth sampling (DepthTransfer) has shown great potential in solving this problem, and its two key components are a Scale Invariant Feature Transform (SIFT) flow–based depth warping between the input image and its retrieved similar images and a pixel-wise depth fusion from all warped depth maps. In addition to the inherent heavy computational load in the SIFT flow computation even under a coarse-to-fine scheme, the fusion reliability is also low due to the low discriminativeness of pixel-wise description nature. This article aims at solving these two problems. First, a novel sparse SIFT flow algorithm is proposed to reduce the complexity from subquadratic to sublinear. Then, a reweighting technique is introduced where the variance of the SIFT flow descriptor is computed at every pixel and used for reweighting the data term in the conditional Markov random fields. Our proposed depth transfer method is tested on the Make3D Range Image Data and NYU Depth Dataset V2. It is shown that, with comparable depth estimation accuracy, our method is 2–3 times faster than the DepthTransfer.https://doi.org/10.1177/1729881416663370
collection DOAJ
language English
format Article
sources DOAJ
author Lei He
Qiulei Dong
Guanghui Wang
spellingShingle Lei He
Qiulei Dong
Guanghui Wang
Fast depth extraction from a single image
International Journal of Advanced Robotic Systems
author_facet Lei He
Qiulei Dong
Guanghui Wang
author_sort Lei He
title Fast depth extraction from a single image
title_short Fast depth extraction from a single image
title_full Fast depth extraction from a single image
title_fullStr Fast depth extraction from a single image
title_full_unstemmed Fast depth extraction from a single image
title_sort fast depth extraction from a single image
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2016-11-01
description Predicting depth from a single image is an important problem for understanding the 3-D geometry of a scene. Recently, the nonparametric depth sampling (DepthTransfer) has shown great potential in solving this problem, and its two key components are a Scale Invariant Feature Transform (SIFT) flow–based depth warping between the input image and its retrieved similar images and a pixel-wise depth fusion from all warped depth maps. In addition to the inherent heavy computational load in the SIFT flow computation even under a coarse-to-fine scheme, the fusion reliability is also low due to the low discriminativeness of pixel-wise description nature. This article aims at solving these two problems. First, a novel sparse SIFT flow algorithm is proposed to reduce the complexity from subquadratic to sublinear. Then, a reweighting technique is introduced where the variance of the SIFT flow descriptor is computed at every pixel and used for reweighting the data term in the conditional Markov random fields. Our proposed depth transfer method is tested on the Make3D Range Image Data and NYU Depth Dataset V2. It is shown that, with comparable depth estimation accuracy, our method is 2–3 times faster than the DepthTransfer.
url https://doi.org/10.1177/1729881416663370
work_keys_str_mv AT leihe fastdepthextractionfromasingleimage
AT qiuleidong fastdepthextractionfromasingleimage
AT guanghuiwang fastdepthextractionfromasingleimage
_version_ 1724532321519927296