Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks
We study the problem of estimating the relative depth order of point pairs in a monocular image. Recent advances mainly focus on using deep convolutional neural networks to learn and infer the ordinal information from multiple contextual information of the point pairs, such as global scene context,...
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doaj-39923e0a74454e57a5831574bc405d582021-04-05T17:01:03ZengIEEEIEEE Access2169-35362019-01-017386303864310.1109/ACCESS.2019.29033548661614Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional NetworksRuoxi Deng0Shengjun Liu1https://orcid.org/0000-0003-0090-3309School of Mathematics and Statistics, Central South University, Changsha, ChinaSchool of Mathematics and Statistics, Central South University, Changsha, ChinaWe study the problem of estimating the relative depth order of point pairs in a monocular image. Recent advances mainly focus on using deep convolutional neural networks to learn and infer the ordinal information from multiple contextual information of the point pairs, such as global scene context, local contextual information, and the locations. However, it remains unclear how much each context contributes to the task. To address this, we first examine the contribution of each context cue to the performance in the context of depth order estimation. We find out that the local context surrounding the point pairs contributes the most, and the global scene context helps little. Based on the findings, we propose a simple method, using a multi-scale densely-connected network to tackle the task. Instead of learning the global structure, we dedicate to explore the local structure by learning to regress from the regions of multiple sizes around the point pairs. Moreover, we use the recent densely connected network to encourage the substantial feature reuse as well as deepen our network to boost the performance. We show in experiments that the results of our approach are on par with or better than the state-of-the-art methods with the benefit of using only a small number of training data.https://ieeexplore.ieee.org/document/8661614/Relative depth order estimationdensely connected networkdeep learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ruoxi Deng Shengjun Liu |
spellingShingle |
Ruoxi Deng Shengjun Liu Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks IEEE Access Relative depth order estimation densely connected network deep learning |
author_facet |
Ruoxi Deng Shengjun Liu |
author_sort |
Ruoxi Deng |
title |
Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks |
title_short |
Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks |
title_full |
Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks |
title_fullStr |
Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks |
title_full_unstemmed |
Relative Depth Order Estimation Using Multi-Scale Densely Connected Convolutional Networks |
title_sort |
relative depth order estimation using multi-scale densely connected convolutional networks |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2019-01-01 |
description |
We study the problem of estimating the relative depth order of point pairs in a monocular image. Recent advances mainly focus on using deep convolutional neural networks to learn and infer the ordinal information from multiple contextual information of the point pairs, such as global scene context, local contextual information, and the locations. However, it remains unclear how much each context contributes to the task. To address this, we first examine the contribution of each context cue to the performance in the context of depth order estimation. We find out that the local context surrounding the point pairs contributes the most, and the global scene context helps little. Based on the findings, we propose a simple method, using a multi-scale densely-connected network to tackle the task. Instead of learning the global structure, we dedicate to explore the local structure by learning to regress from the regions of multiple sizes around the point pairs. Moreover, we use the recent densely connected network to encourage the substantial feature reuse as well as deepen our network to boost the performance. We show in experiments that the results of our approach are on par with or better than the state-of-the-art methods with the benefit of using only a small number of training data. |
topic |
Relative depth order estimation densely connected network deep learning |
url |
https://ieeexplore.ieee.org/document/8661614/ |
work_keys_str_mv |
AT ruoxideng relativedepthorderestimationusingmultiscaledenselyconnectedconvolutionalnetworks AT shengjunliu relativedepthorderestimationusingmultiscaledenselyconnectedconvolutionalnetworks |
_version_ |
1721540461885128704 |