Literature DB >> 35296691

Grasping learning, optimization, and knowledge transfer in the robotics field.

Luca Pozzi1, Marta Gandolla2, Filippo Pura3, Marco Maccarini3, Alessandra Pedrocchi1, Francesco Braghin2, Dario Piga3, Loris Roveda4.   

Abstract

Service robotics is a fast-developing sector, requiring embedded intelligence into robotic platforms to interact with the humans and the surrounding environment. One of the main challenges in the field is robust and versatile manipulation in everyday life activities. An appealing opportunity is to exploit compliant end-effectors to address the manipulation of deformable objects. However, the intrinsic compliance of such grippers results in increased difficulties in grasping control. Within the described context, this work addresses the problem of optimizing the grasping of deformable objects making use of a compliant, under-actuated, sensorless robotic hand. The main aim of the paper is, therefore, finding the best position and joint configuration for the mentioned robotic hand to grasp an unforeseen deformable object based on collected RGB image and partial point cloud. Due to the complex grasping dynamics, learning-from-simulations approaches (e.g., Reinforcement Learning) are not effective in the faced context. Thus, trial-and-error-based methodologies have to be exploited. In order to save resources, a samples-efficient approach has to be employed. Indeed, a Bayesian approach to address the optimization of the grasping strategy is proposed, enhancing it with transfer learning capabilities to exploit the acquired knowledge to grasp (partially) new objects. A PAL Robotics TIAGo (a mobile manipulator with a 7-degrees-of-freedom arm and an anthropomorphic underactuated compliant hand) has been used as a test platform, executing a pouring task while manipulating plastic (i.e., deformable) bottles. The sampling efficiency of the data-driven learning is shown, compared to an evenly spaced grid sampling of the input space. In addition, the generalization capability of the optimized model is tested (exploiting transfer learning) on a set of plastic bottles and other liquid containers, achieving a success rate of the 88%.
© 2022. The Author(s).

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Year:  2022        PMID: 35296691      PMCID: PMC8927585          DOI: 10.1038/s41598-022-08276-z

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  2 in total

1.  Learning Mobile Manipulation through Deep Reinforcement Learning.

Authors:  Cong Wang; Qifeng Zhang; Qiyan Tian; Shuo Li; Xiaohui Wang; David Lane; Yvan Petillot; Sen Wang
Journal:  Sensors (Basel)       Date:  2020-02-10       Impact factor: 3.576

Review 2.  Replicating Human Hand Synergies Onto Robotic Hands: A Review on Software and Hardware Strategies.

Authors:  Gionata Salvietti
Journal:  Front Neurorobot       Date:  2018-06-07       Impact factor: 2.650

  2 in total

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