2022
DOI: 10.1109/lra.2022.3140793
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Vision-Based Self-Adaptive Gripping in a Trimodal Robotic Sorting End-Effector

Abstract: Recyclable waste management, which includes sorting as a key process, is a crucial component of maintaining a sustainable ecosystem. The use of robots in sorting could significantly facilitate the production of secondary raw materials from waste in the sense of a recycling economy. However, due to the complex and heterogeneous types of the recyclable items, the conventional robotic gripping end-effectors, which typically come with a fixed structure, are unlikely to hold onto the full range of items to enable s… Show more

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Cited by 9 publications
(1 citation statement)
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“…Improving the fusion systems of multiple sensor data [221], [222] and/or multiple features of sensors [86] is a promising approach to replace the customized sensing systems individually prepared according to different sorting workplaces. Modular [223] and/or multifunctional [224], [225] endeffectors can possibly be used for handling a large variety of waste. The usage of an automated tool changing system (e.g.…”
Section: B Challenges To Developing Global Recyclingmentioning
confidence: 99%
“…Improving the fusion systems of multiple sensor data [221], [222] and/or multiple features of sensors [86] is a promising approach to replace the customized sensing systems individually prepared according to different sorting workplaces. Modular [223] and/or multifunctional [224], [225] endeffectors can possibly be used for handling a large variety of waste. The usage of an automated tool changing system (e.g.…”
Section: B Challenges To Developing Global Recyclingmentioning
confidence: 99%