B.2: Dexnet: Difference between revisions
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• '''Short Description''': | • '''Short Description''': | ||
Dex-Net is a research project developed at UC Berkeley that focuses on improving the robustness and accuracy of robotic grasping. It involves the use of deep learning algorithms to train a robotic system to grasp a wide variety of objects in complex, cluttered environments. The system uses a dataset of 3D point cloud data, which is generated by scanning real-world objects, to train the grasping algorithms. Once trained, the system is able to generate grasping plans for new objects by predicting the poses at which they can be stably grasped. Additionally, Dex-Net uses a novel optimization algorithm to search for the best grasping poses, which allows it to generate high-quality grasps even in challenging situations. Overall, Dex-Net is a powerful tool for advancing the state of the art in robotic grasping. | |||
• '''Reference, URL''': https://berkeleyautomation.github.io/dex-net/ | |||
• '''Reference, URL''': | |||
• '''Relevant Domain/Industry''': WEEE & Battery | • '''Relevant Domain/Industry''': WEEE & Battery | ||
• '''Application in relevant Projects/Initiatives''': | • '''Application in relevant Projects/Initiatives''': N.A. | ||
• '''Type''': | • '''Type''': Platform | ||
• '''AI Breadth''': | • '''AI Breadth''': ML | ||
• '''Learning Ability''': | • '''Learning Ability''': | ||
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• '''License Information''': Proprietary license | • '''License Information''': Proprietary license | ||
• '''Related to circularity and sustainability''': | • '''Related to circularity and sustainability''': Not directly | ||
• '''Audience''': | • '''Audience''': | ||
Revision as of 14:19, 26 April 2023
• Short Description: Dex-Net is a research project developed at UC Berkeley that focuses on improving the robustness and accuracy of robotic grasping. It involves the use of deep learning algorithms to train a robotic system to grasp a wide variety of objects in complex, cluttered environments. The system uses a dataset of 3D point cloud data, which is generated by scanning real-world objects, to train the grasping algorithms. Once trained, the system is able to generate grasping plans for new objects by predicting the poses at which they can be stably grasped. Additionally, Dex-Net uses a novel optimization algorithm to search for the best grasping poses, which allows it to generate high-quality grasps even in challenging situations. Overall, Dex-Net is a powerful tool for advancing the state of the art in robotic grasping.
• Reference, URL: https://berkeleyautomation.github.io/dex-net/
• Relevant Domain/Industry: WEEE & Battery
• Application in relevant Projects/Initiatives: N.A.
• Type: Platform
• AI Breadth: ML
• Learning Ability:
• Related technologies:
• License Information: Proprietary license
• Related to circularity and sustainability: Not directly
• Audience:
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