Object recognition and pose estimation for bin-picking

3D object localization and pose estimation have been studied extensively in bin-picking problems. To solve these problems, the vision system plays an important role. In this report, the author proposes an approach of vision system that is implemented on the Robot Operating System (ROS) platform. It...

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Main Author: Zhou, Lingjin
Other Authors: Chen I-Ming
Format: Final Year Project
Language:English
Published: 2019
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Online Access:http://hdl.handle.net/10356/78549
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-785492023-03-04T19:32:55Z Object recognition and pose estimation for bin-picking Zhou, Lingjin Chen I-Ming School of Mechanical and Aerospace Engineering Robotics Research Centre DRNTU::Engineering::Aeronautical engineering 3D object localization and pose estimation have been studied extensively in bin-picking problems. To solve these problems, the vision system plays an important role. In this report, the author proposes an approach of vision system that is implemented on the Robot Operating System (ROS) platform. It incorporates GMS Feature Correspondence Method, K-Means clustering and Line Segment Detector (LSD) to identify the objects inside a bin and obtain the pose estimation of the objects. In this approach, 2D images are processed with Open Source Computer Vision Library (OpenCV) and the 3D point clouds are processed with Point Cloud Library (PCL). The aim of this approach is to detect the objects and find the 6-Degree of Freedom (6-DoF) pose. The estimated pose information is essential for motion planning and robot execution. This approach is designed for random bin-picking of multiple identical circular objects and is robust in complex environments. The experiments show that this approach is efficient and fast and is applicable in real-time bin-picking task inside a warehouse. Different from the current solutions, this approach does not require any CAD data or 3D modelling of the objects. In this approach, only a dataset of 2D images of the objects is necessary for object detection. Therefore, this approach provides a simple and efficient solution to the vision system of the bin picking problem. The testing results prove the reliability and robustness of this approach. Bachelor of Engineering (Aerospace Engineering) 2019-06-21T06:38:14Z 2019-06-21T06:38:14Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/78549 en Nanyang Technological University 76 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Aeronautical engineering
spellingShingle DRNTU::Engineering::Aeronautical engineering
Zhou, Lingjin
Object recognition and pose estimation for bin-picking
description 3D object localization and pose estimation have been studied extensively in bin-picking problems. To solve these problems, the vision system plays an important role. In this report, the author proposes an approach of vision system that is implemented on the Robot Operating System (ROS) platform. It incorporates GMS Feature Correspondence Method, K-Means clustering and Line Segment Detector (LSD) to identify the objects inside a bin and obtain the pose estimation of the objects. In this approach, 2D images are processed with Open Source Computer Vision Library (OpenCV) and the 3D point clouds are processed with Point Cloud Library (PCL). The aim of this approach is to detect the objects and find the 6-Degree of Freedom (6-DoF) pose. The estimated pose information is essential for motion planning and robot execution. This approach is designed for random bin-picking of multiple identical circular objects and is robust in complex environments. The experiments show that this approach is efficient and fast and is applicable in real-time bin-picking task inside a warehouse. Different from the current solutions, this approach does not require any CAD data or 3D modelling of the objects. In this approach, only a dataset of 2D images of the objects is necessary for object detection. Therefore, this approach provides a simple and efficient solution to the vision system of the bin picking problem. The testing results prove the reliability and robustness of this approach.
author2 Chen I-Ming
author_facet Chen I-Ming
Zhou, Lingjin
format Final Year Project
author Zhou, Lingjin
author_sort Zhou, Lingjin
title Object recognition and pose estimation for bin-picking
title_short Object recognition and pose estimation for bin-picking
title_full Object recognition and pose estimation for bin-picking
title_fullStr Object recognition and pose estimation for bin-picking
title_full_unstemmed Object recognition and pose estimation for bin-picking
title_sort object recognition and pose estimation for bin-picking
publishDate 2019
url http://hdl.handle.net/10356/78549
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