Object recognition and pose estimation in robotic grasping system
Currently, the warehouse automation technology is experiencing rapid growth to satisfy the increasing demand of e-commerce and provide fast, reliable delivery. Automation of the warehouse item-picking task requires the robust vision that identifies and locates objects amid cluttered environments, ma...
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sg-ntu-dr.10356-758182023-03-04T18:22:20Z Object recognition and pose estimation in robotic grasping system Zhou, Jiadong Chen I-Ming School of Mechanical and Aerospace Engineering Robotics Research Centre DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Currently, the warehouse automation technology is experiencing rapid growth to satisfy the increasing demand of e-commerce and provide fast, reliable delivery. Automation of the warehouse item-picking task requires the robust vision that identifies and locates objects amid cluttered environments, massive varieties of items and sensor noise. In this report, we present a perception system which combines deep learning and 3D shape matching techniques to overcome those difficulties. Specifically, two problems addressed in the system are: i) identification and segmentation of the objects in the scene images with a fully convolutional neural network called YOLO, and ii) determination of the objects’ 6D poses by performing geometry-based methods on the point clouds. In the end, a pick-and-place system is constructed by integrating the perception module with a motion planning module. By doing some experiments, we demonstrate that our system can reliably estimate the 6D poses of objects under a tabletop scenario. Bachelor of Engineering (Mechanical Engineering) 2018-06-18T06:41:20Z 2018-06-18T06:41:20Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/75818 en Nanyang Technological University 55 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Zhou, Jiadong Object recognition and pose estimation in robotic grasping system |
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Currently, the warehouse automation technology is experiencing rapid growth to satisfy the increasing demand of e-commerce and provide fast, reliable delivery. Automation of the warehouse item-picking task requires the robust vision that identifies and locates objects amid cluttered environments, massive varieties of items and sensor noise. In this report, we present a perception system which combines deep learning and 3D shape matching techniques to overcome those difficulties. Specifically, two problems addressed in the system are: i) identification and segmentation of the objects in the scene images with a fully convolutional neural network called YOLO, and ii) determination of the objects’ 6D poses by performing geometry-based methods on the point clouds. In the end, a pick-and-place system is constructed by integrating the perception module with a motion planning module. By doing some experiments, we demonstrate that our system can reliably estimate the 6D poses of objects under a tabletop scenario. |
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Chen I-Ming |
author_facet |
Chen I-Ming Zhou, Jiadong |
format |
Final Year Project |
author |
Zhou, Jiadong |
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Zhou, Jiadong |
title |
Object recognition and pose estimation in robotic grasping system |
title_short |
Object recognition and pose estimation in robotic grasping system |
title_full |
Object recognition and pose estimation in robotic grasping system |
title_fullStr |
Object recognition and pose estimation in robotic grasping system |
title_full_unstemmed |
Object recognition and pose estimation in robotic grasping system |
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object recognition and pose estimation in robotic grasping system |
publishDate |
2018 |
url |
http://hdl.handle.net/10356/75818 |
_version_ |
1759858166908059648 |