Loading [MathJax]/extensions/MathMenu.js
Robust 3D Object Tracking from Monocular Images Using Stable Parts | IEEE Journals & Magazine | IEEE Xplore

Robust 3D Object Tracking from Monocular Images Using Stable Parts


Abstract:

We present an algorithm for estimating the pose of a rigid object in real-time under challenging conditions. Our method effectively handles poorly textured objects in clu...Show More

Abstract:

We present an algorithm for estimating the pose of a rigid object in real-time under challenging conditions. Our method effectively handles poorly textured objects in cluttered, changing environments, even when their appearance is corrupted by large occlusions, and it relies on grayscale images to handle metallic environments on which depth cameras would fail. As a result, our method is suitable for practical Augmented Reality applications including industrial environments. At the core of our approach is a novel representation for the 3D pose of object parts: We predict the 3D pose of each part in the form of the 2D projections of a few control points. The advantages of this representation is three-fold: We can predict the 3D pose of the object even when only one part is visible; when several parts are visible, we can easily combine them to compute a better pose of the object; the 3D pose we obtain is usually very accurate, even when only few parts are visible. We show how to use this representation in a robust 3D tracking framework. In addition to extensive comparisons with the state-of-the-art, we demonstrate our method on a practical Augmented Reality application for maintenance assistance in the ATLAS particle detector at CERN.
Page(s): 1465 - 1479
Date of Publication: 26 May 2017

ISSN Information:

PubMed ID: 28574342

Funding Agency:

Citations are not available for this document.

1 Introduction

Methods for 3D object detection and tracking have undergone impressive improvements in recent years  [1], [2], [3], [4], [5], [6], [7], [8], [9], [10], [11], [12], [13], [14]. However, each of the current approaches has its own weaknesses: Many of these approaches [1], [3], [9], [13] rely on a depth sensor, which would fail on metallic objects or outdoor scenes; methods based on feature points [6], [8] expect textured objects; those based on edges  [4], [7] are sensitive to cluttered background; most of these methods [2], [3], [5], [10], [11], [12], [15] are not robust to occlusion. We also want a method fast enough for interactive 3D applications.

Cites in Papers - |

Cites in Papers - IEEE (27)

Select All
1.
Zhiming Hu, Zheming Yin, Daniel Haeufle, Syn Schmitt, Andreas Bulling, "HOIMotion: Forecasting Human Motion During Human-Object Interactions Using Egocentric 3D Object Bounding Boxes", IEEE Transactions on Visualization and Computer Graphics, vol.30, no.11, pp.7375-7385, 2024.
2.
Junhao Geng, Mengbo Chen, Xinyang Zhao, Yu Liu, Yongsheng Ma, "A Markerless AR Guidance Method for Large-Scale Wire and Cable Laying of Electromechanical Products", IEEE Transactions on Industrial Informatics, vol.20, no.3, pp.4007-4020, 2024.
3.
Fulin Liu, Yinlin Hu, Mathieu Salzmann, "Linear-Covariance Loss for End-to-End Learning of 6D Pose Estimation", 2023 IEEE/CVF International Conference on Computer Vision (ICCV), pp.14061-14071, 2023.
4.
Zhuo Zhang, Jun Liu, Daoming Bi, Qiufu Wang, Liangchao Guo, Xiaoliang Sun, "TDP6D: Based on Transformer Dual Path 6D Pose Estimation", 2023 International Conference on Machine Vision, Image Processing and Imaging Technology (MVIPIT), pp.31-37, 2023.
5.
Junyi Zhou, Yuyao Sun, Fang Fang, Yahui Gan, Bo Zhou, "Scrap Steel Grabbing Robot System Based on Grasp Quality Convolutional Neural Network", 2023 42nd Chinese Control Conference (CCC), pp.4692-4697, 2023.
6.
Mengmeng Wang, Teli Ma, Xingxing Zuo, Jiajun Lv, Yong Liu, "Correlation Pyramid Network for 3D Single Object Tracking", 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), pp.3216-3225, 2023.
7.
Sangyun Lee, Yeon-Kug Moon, "Camera pose estimation using voxel-based features for autonomous vehicle localization tracking", 2022 37th International Technical Conference on Circuits/Systems, Computers and Communications (ITC-CSCC), pp.185-188, 2022.
8.
Jiachen Li, Bin Wang, Shiqiang Zhu, Xin Cao, Fan Zhong, Wenxuan Chen, Te Li, Jason Gu, Xueying Qin, "BCOT: A Markerless High-Precision 3D Object Tracking Benchmark", 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp.6687-6696, 2022.
9.
Bo Chen, Tat-Jun Chin, Marius Klimavicius, "Occlusion-Robust Object Pose Estimation with Holistic Representation", 2022 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV), pp.2223-2233, 2022.
10.
Wenzheng Song, Masanori Suganuma, Xing Liu, Noriyuki Shimobayashi, Daisuke Maruta, Takayuki Okatani, "Matching in the Dark: A Dataset for Matching Image Pairs of Low-light Scenes", 2021 IEEE/CVF International Conference on Computer Vision (ICCV), pp.6009-6018, 2021.
11.
Yongle Luo, Kun Dong, Lili Zhao, Zhiyong Sun, Erkang Cheng, Honglin Kan, Chao Zhou, Bo Song, "Calibration-Free Monocular Vision-Based Robot Manipulations With Occlusion Awareness", IEEE Access, vol.9, pp.85265-85276, 2021.
12.
Lee Aing, Wen-Nung Lie, "Detecting Object Surface Keypoints From a Single RGB Image via Deep Learning Network for 6-DoF Pose Estimation", IEEE Access, vol.9, pp.77729-77741, 2021.
13.
Chang Liu, Wulong Guo, Weiduo Hu, Rongliang Chen, Jia Liu, "Real-Time Model-Based Monocular Pose Tracking for an Asteroid by Contour Fitting", IEEE Transactions on Aerospace and Electronic Systems, vol.57, no.3, pp.1538-1561, 2021.
14.
Fanta Camara, Nicola Bellotto, Serhan Cosar, Dimitris Nathanael, Matthias Althoff, Jingyuan Wu, Johannes Ruenz, André Dietrich, Charles W. Fox, "Pedestrian Models for Autonomous Driving Part I: Low-Level Models, From Sensing to Tracking", IEEE Transactions on Intelligent Transportation Systems, vol.22, no.10, pp.6131-6151, 2021.
15.
Zheng Dang, Kwang Moo Yi, Yinlin Hu, Fei Wang, Pascal Fua, Mathieu Salzmann, "Eigendecomposition-Free Training of Deep Networks for Linear Least-Square Problems", IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.43, no.9, pp.3167-3182, 2021.
16.
Ignacio Cuiral-Zueco, Gonzalo López-Nicolás, "Dynamic Occlusion Handling for Real Time Object Perception", 2020 5th International Conference on Robotics and Automation Engineering (ICRAE), pp.13-18, 2020.
17.
Chang Liu, Wulong Guo, Weiduo Hu, Rongliang Chen, Jia Liu, "Real-Time Vision-Based Pose Tracking of Spacecraft in Close Range Using Geometric Curve Fitting", IEEE Transactions on Aerospace and Electronic Systems, vol.56, no.6, pp.4567-4593, 2020.
18.
Emmanuel Y. Ali, Fred Nicolls, "3D Pose Estimation and Tracking of an Electricity Pylon", 2020 International SAUPEC/RobMech/PRASA Conference, pp.1-7, 2020.
19.
Mohamed H. Abdelpakey, Mohamed S. Shehata, "DP-Siam: Dynamic Policy Siamese Network for Robust Object Tracking", IEEE Transactions on Image Processing, vol.29, pp.1479-1492, 2020.
20.
Giorgia Pitteri, Slobodan Ilic, Vincent Lepetit, "CorNet: Generic 3D Corners for 6D Pose Estimation of New Objects without Retraining", 2019 IEEE/CVF International Conference on Computer Vision Workshop (ICCVW), pp.2807-2815, 2019.
21.
Giorgia Pitteri, Michaël Ramamonjisoa, Slobodan Ilic, Vincent Lepetit, "On Object Symmetries and 6D Pose Estimation from Images", 2019 International Conference on 3D Vision (3DV), pp.614-622, 2019.
22.
Henning Tjaden, Ulrich Schwanecke, Elmar Schömer, Daniel Cremers, "A Region-Based Gauss-Newton Approach to Real-Time Monocular Multiple Object Tracking", IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.41, no.8, pp.1797-1812, 2019.
23.
Souriya Trinh, Fabien Spindler, Eric Marchand, François Chaumette, "A modular framework for model-based visual tracking using edge, texture and depth features", 2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), pp.89-96, 2018.
24.
Kaiwen Guo, Jonathan Taylor, Sean Fanello, Andrea Tagliasacchi, Mingsong Dou, Philip Davidson, Adarsh Kowdle, Shahram Izadi, "TwinFusion: High Framerate Non-rigid Fusion through Fast Correspondence Tracking", 2018 International Conference on 3D Vision (3DV), pp.596-605, 2018.
25.
Kwang Moo Yi, Eduard Trulls, Yuki Ono, Vincent Lepetit, Mathieu Salzmann, Pascal Fua, "Learning to Find Good Correspondences", 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp.2666-2674, 2018.
26.
Timothy Sandy, Jonas Buchli, "Object-Based Visual-Inertial Tracking for Additive Fabrication", IEEE Robotics and Automation Letters, vol.3, no.3, pp.1370-1377, 2018.
27.
Wenhui Huang, Jason Gu, Xin Ma, Yibin Li, "Correlation-Filter Based Scale-Adaptive Visual Tracking With Hybrid-Scheme Sample Learning", IEEE Access, vol.6, pp.125-137, 2018.

Cites in Papers - Other Publishers (29)

1.
Xiuqiang Song, Weijian Xie, Jiachen Li, Nan Wang, Fan Zhong, Guofeng Zhang, Xueying Qin, "3D Object Tracking for Rough Models", Computer Graphics Forum, 2023.
2.
Shuang Ye, Jianhong Ye, Qing Lei, "Part-based tracking for object pose estimation", Journal of Real-Time Image Processing, vol.20, no.5, 2023.
3.
Xiaofei Zhang, Zhengping Fan, Xiaojun Tan, Qunming Liu, Yanli Shi, "Spatiotemporal adaptive attention 3D multiobject tracking for autonomous driving", Knowledge-Based Systems, pp.110442, 2023.
4.
Fei Wang, Xing Zhang, Tianyue Chen, Ze Shen, Shangdong Liu, Zhenquan He, "KVNet: An Iterative 3D Keypoints Voting Network for Real-time 6-DoF Object Pose Estimation", Neurocomputing, 2023.
5.
Xu Yang, Kunbo Li, Jinge Wang, Xiumin Fan, "ER-Pose: Learning edge representation for 6D pose estimation of texture-less objects", Neurocomputing, vol.515, pp.13, 2023.
6.
Joel Murithi Runji, Yun-Ju Lee, Chih-Hsing Chu, "Systematic Literature Review on Augmented Reality-Based Maintenance Applications in Manufacturing Centered on Operator Needs", International Journal of Precision Engineering and Manufacturing-Green Technology, 2022.
7.
Joel Murithi Runji, Yun-Ju Lee, Chih-Hsing Chu, "User Requirements Analysis on Augmented Reality-Based Maintenance in Manufacturing", Journal of Computing and Information Science in Engineering, vol.22, no.5, 2022.
8.
Gabriel Lugo, Nasim Hajari, Irene Cheng, "Semi-supervised learning approach for localization and pose estimation of texture-less objects in cluttered scenes", Array, vol.16, pp.100247, 2022.
9.
Kaustubh Joshi, Abhra Roy Chowdhury, "Bio-Inspired Vision and Gesture-Based Robot-Robot Interaction for Human-Cooperative Package Delivery", Frontiers in Robotics and AI, vol.9, 2022.
10.
Jia-Chen Li, Fan Zhong, Song-Hua Xu, Xue-Ying Qin, "3D Object Tracking with Adaptively Weighted Local Bundles", Journal of Computer Science and Technology, vol.36, no.3, pp.555, 2021.
11.
M. Anitha, V. D. Ambeth Kumar, S. Malathi, V. D. Ashok Kumar, M. Ramakrishnan, Abhishek Kumar, Rashid Ali, "A Survey on the Usage of Pattern Recognition and Image Analysis Methods for the Lifestyle Improvement on Low Vision and Visually Impaired People", Pattern Recognition and Image Analysis, vol.31, no.1, pp.24, 2021.
12.
Manuel Stoiber, Martin Pfanne, Klaus H. Strobl, Rudolph Triebel, Alin Albu-Schaffer, "A Sparse Gaussian Approach to Region-Based 6DoF Object Tracking", Computer Vision ? ACCV 2020, vol.12623, pp.666, 2021.
13.
P.S. Febin Sheron, K.P. Sridhar, S. Baskar, P. Mohamed Shakeel, "Projection-dependent input processing for 3D object recognition in human robot interaction systems", Image and Vision Computing, vol.106, pp.104089, 2021.
14.
Guoguang Du, Kai Wang, Shiguo Lian, Kaiyong Zhao, "Vision-based robotic grasping from object localization, object pose estimation to grasp estimation for parallel grippers: a review", Artificial Intelligence Review, vol.54, no.3, pp.1677, 2021.
15.
Carlos Veiga Almagro, Giacomo Lunghi, Mario Di Castro, Diego Centelles Beltran, Raul Marin Prades, Alessandro Masi, Pedro J. Sanz, "Cooperative and Multimodal Capabilities Enhancement in the CERNTAURO Human?Robot Interface for Hazardous and Underwater Scenarios", Applied Sciences, vol.10, no.17, pp.6144, 2020.
16.
Nasim Hajari, Gabriel Lugo Bustillo, Harsh Sharma, Irene Cheng, "Marker-Less 3d Object Recognition and 6d Pose Estimation for Homogeneous Textureless Objects: An RGB-D Approach", Sensors, vol.20, no.18, pp.5098, 2020.
17.
Shixiang Cao, Hongyan He, "Flying point target tracking using infrared images", Proceedings of the 5th International Conference on Multimedia and Image Processing, pp.23, 2020.
18.
Sangyoon Lee, Hyunki Hong, Changkyoung Eem, "Voxel-Based Scene Representation for Camera Pose Estimation of a Single RGB Image", Applied Sciences, vol.10, no.24, pp.8866, 2020.
19.
Kyeong-Beom Park, Sung Ho Choi, Minseok Kim, Jae Yeol Lee, "Deep learning-based mobile augmented reality for task assistance using 3D spatial mapping and snapshot-based RGB-D data", Computers & Industrial Engineering, vol.146, pp.106585, 2020.
20.
Shixiang Cao, Chunmei Li, Shulong Bao, Hongyan He, "Practical detection and tracking of flying small objects in infrared images", Journal of Applied Remote Sensing, vol.14, no.01, pp.1, 2020.
21.
Ke Wang, Daxin Liu, Zhenyu Liu, Guifang Duan, Liang Hu, Jianrong Tan, "A fast object registration method for augmented reality assembly with simultaneous determination of multiple 2D-3D correspondences", Robotics and Computer-Integrated Manufacturing, vol.63, pp.101890, 2020.
22.
Ioannis Ioannidis, Hammadi Nait-Charif, "Over Time RF Fitting for Jitter Free 3D Vertebra Reconstruction from Video Fluoroscopy", Computer Analysis of Images and Patterns, vol.11679, pp.49, 2019.
23.
Guoguang Du, Kai Wang, Yibing Nan, Shiguo Lian, "Real-Time 3D Object Detection and Tracking in Monocular Images of Cluttered Environment", Image and Graphics, vol.11902, pp.119, 2019.
24.
Xuyue Yin, Xiumin Fan, Xu Yang, Shiguang Qiu, Zhinan Zhang, "An Automatic Marker?Object Offset Calibration Method for Precise 3D Augmented Reality Registration in Industrial Applications", Applied Sciences, vol.9, no.20, pp.4464, 2019.
25.
Mingliang Fu, Weijia Zhou, "DeepHMap++: Combined Projection Grouping and Correspondence Learning for Full DoF Pose Estimation", Sensors, vol.19, no.5, pp.1032, 2019.
26.
Zheng Dang, Kwang Moo Yi, Yinlin Hu, Fei Wang, Pascal Fua, Mathieu Salzmann, "Eigendecomposition-Free Training of Deep Networks with Zero Eigenvalue-Based Losses", Computer Vision ? ECCV 2018, vol.11209, pp.792, 2018.
27.
Jeremy Laviole, Lauren Thevin, Jeremy Albouys-Perrois, Anke Brock, "Nectar", Proceedings of the Virtual Reality International Conference - Laval Virtual, pp.1, 2018.
28.
Markus Oberweger, Mahdi Rad, Vincent Lepetit, "Making Deep Heatmaps Robust to Partial Occlusions for 3D Object Pose Estimation", Computer Vision ? ECCV 2018, vol.11219, pp.125, 2018.
29.
Cailing Wang, Yechao Xu, Huajun Liu, Xiaoyuan Jing, "Retrogression of correlation filters for discriminative visual object tracking", Journal of Electronic Imaging, vol.27, no.06, pp.1, 2018.
Contact IEEE to Subscribe

References

References is not available for this document.