Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data

Accurate estimation of 3D object pose is highly desirable in a wide range of applications, such as robotics and augmented reality. Although significant advancement has been made for pose estimation, there is room for further improvement. Recent pose estimation systems utilize an iterative refinement...

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Main Authors: Shao-Kang Huang, Chen-Chien Hsu, Wei-Yen Wang, Cheng-Hung Lin
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/15/4114
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spelling doaj-6f7d2ee1bb634764bcb300fdc66d2df52020-11-25T02:35:09ZengMDPI AGSensors1424-82202020-07-01204114411410.3390/s20154114Iterative Pose Refinement for Object Pose Estimation Based on RGBD DataShao-Kang Huang0Chen-Chien Hsu1Wei-Yen Wang2Cheng-Hung Lin3Department of Electrical Engineering, National Taiwan Normal University, Taipei 106, TaiwanDepartment of Electrical Engineering, National Taiwan Normal University, Taipei 106, TaiwanDepartment of Electrical Engineering, National Taiwan Normal University, Taipei 106, TaiwanDepartment of Electrical Engineering, National Taiwan Normal University, Taipei 106, TaiwanAccurate estimation of 3D object pose is highly desirable in a wide range of applications, such as robotics and augmented reality. Although significant advancement has been made for pose estimation, there is room for further improvement. Recent pose estimation systems utilize an iterative refinement process to revise the predicted pose to obtain a better final output. However, such refinement process only takes account of geometric features for pose revision during the iteration. Motivated by this approach, this paper designs a novel iterative refinement process that deals with both color and geometric features for object pose refinement. Experiments show that the proposed method is able to reach 94.74% and 93.2% in ADD(-S) metric with only 2 iterations, outperforming the state-of-the-art methods on the LINEMOD and YCB-Video datasets, respectively.https://www.mdpi.com/1424-8220/20/15/4114object pose estimationLINEMODdeep learningconvolution neural network
collection DOAJ
language English
format Article
sources DOAJ
author Shao-Kang Huang
Chen-Chien Hsu
Wei-Yen Wang
Cheng-Hung Lin
spellingShingle Shao-Kang Huang
Chen-Chien Hsu
Wei-Yen Wang
Cheng-Hung Lin
Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data
Sensors
object pose estimation
LINEMOD
deep learning
convolution neural network
author_facet Shao-Kang Huang
Chen-Chien Hsu
Wei-Yen Wang
Cheng-Hung Lin
author_sort Shao-Kang Huang
title Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data
title_short Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data
title_full Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data
title_fullStr Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data
title_full_unstemmed Iterative Pose Refinement for Object Pose Estimation Based on RGBD Data
title_sort iterative pose refinement for object pose estimation based on rgbd data
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-07-01
description Accurate estimation of 3D object pose is highly desirable in a wide range of applications, such as robotics and augmented reality. Although significant advancement has been made for pose estimation, there is room for further improvement. Recent pose estimation systems utilize an iterative refinement process to revise the predicted pose to obtain a better final output. However, such refinement process only takes account of geometric features for pose revision during the iteration. Motivated by this approach, this paper designs a novel iterative refinement process that deals with both color and geometric features for object pose refinement. Experiments show that the proposed method is able to reach 94.74% and 93.2% in ADD(-S) metric with only 2 iterations, outperforming the state-of-the-art methods on the LINEMOD and YCB-Video datasets, respectively.
topic object pose estimation
LINEMOD
deep learning
convolution neural network
url https://www.mdpi.com/1424-8220/20/15/4114
work_keys_str_mv AT shaokanghuang iterativeposerefinementforobjectposeestimationbasedonrgbddata
AT chenchienhsu iterativeposerefinementforobjectposeestimationbasedonrgbddata
AT weiyenwang iterativeposerefinementforobjectposeestimationbasedonrgbddata
AT chenghunglin iterativeposerefinementforobjectposeestimationbasedonrgbddata
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