Versatile grasping for shelf placement of FMCG items
Versatile grasping is one of the most basic forms of robotic manipulation. Versatile grasping's purpose is to gain great autonomy in dexterous manipulation tasks in an unstructured environment. An example of such an unstructured environment with scope of versatile pick and placement options is...
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2021
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sg-ntu-dr.10356-1533122021-11-18T05:12:37Z Versatile grasping for shelf placement of FMCG items Das Bisakha Sourav Sen Gupta School of Computer Science and Engineering Advanced Remanufacturing and Technology Centre sg.sourav@ntu.edu.sg Engineering::Computer science and engineering Versatile grasping is one of the most basic forms of robotic manipulation. Versatile grasping's purpose is to gain great autonomy in dexterous manipulation tasks in an unstructured environment. An example of such an unstructured environment with scope of versatile pick and placement options is the task of shelf-placement, requiring high and low levels of perceptual reasoning. In this paper, we chose to extend the novel model structure of Transporter Networks beyond tabletop actions performed on extruded 2-dimensional solid objects utilizing 3 Degrees of Freedom (DoF). These extensions are based on the development of an agent capable of performing shelf- placement with 6-DoF movements on two distinct axis planes. This agent has been trained on a dataset of weighted Fast-Moving Consumer Goods (FMCG) objects, both un-textured and textured. Since the training was based on imitation learning, an expert agent was developed and implemented as well. The results obtained from training the 6-DoF agent on demonstrations provided by the expert agent confirm its successful extension to 6-DoF on two planes of axis with a 70% accuracy on FMCG products. The results further indicate the success of the agent on industry benchmarked untextured and textured Yale-CMU-Berkeley (YCB) objects. In addition to extending and contributing to existing research, this work also paves the way for future research with a real UR5e robot. Bachelor of Science in Data Science and Artificial Intelligence 2021-11-18T03:18:47Z 2021-11-18T03:18:47Z 2021 Final Year Project (FYP) Das Bisakha (2021). Versatile grasping for shelf placement of FMCG items. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/153312 https://hdl.handle.net/10356/153312 en SCSE20-1119 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering Das Bisakha Versatile grasping for shelf placement of FMCG items |
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Versatile grasping is one of the most basic forms of robotic manipulation. Versatile grasping's purpose is to gain great autonomy in dexterous manipulation tasks in an unstructured environment. An example of such an unstructured environment with scope of versatile pick and placement options is the task of shelf-placement, requiring high and low levels of perceptual reasoning. In this paper, we chose to extend the novel model structure of Transporter Networks beyond tabletop actions performed on extruded 2-dimensional solid objects utilizing 3 Degrees of Freedom (DoF). These extensions are based on the development of an agent capable of performing shelf- placement with 6-DoF movements on two distinct axis planes. This agent has been trained on a dataset of weighted Fast-Moving Consumer Goods (FMCG) objects, both un-textured and textured. Since the training was based on imitation learning, an expert agent was developed and implemented as well. The results obtained from training the 6-DoF agent on demonstrations provided by the expert agent confirm its successful extension to 6-DoF on two planes of axis with a 70% accuracy on FMCG products. The results further indicate the success of the agent on industry benchmarked untextured and textured Yale-CMU-Berkeley (YCB) objects. In addition to extending and contributing to existing research, this work also paves the way for future research with a real UR5e robot. |
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Sourav Sen Gupta |
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Sourav Sen Gupta Das Bisakha |
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Final Year Project |
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Das Bisakha |
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Das Bisakha |
title |
Versatile grasping for shelf placement of FMCG items |
title_short |
Versatile grasping for shelf placement of FMCG items |
title_full |
Versatile grasping for shelf placement of FMCG items |
title_fullStr |
Versatile grasping for shelf placement of FMCG items |
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Versatile grasping for shelf placement of FMCG items |
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versatile grasping for shelf placement of fmcg items |
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Nanyang Technological University |
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2021 |
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https://hdl.handle.net/10356/153312 |
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