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Proceedings ArticleDOI

A bio-inspired sensory-motor neural model for a neuro-robotic manipulation platform

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TLDR
A neural model for visuo-motor coordination of a redundant robotic manipulator in reaching tasks based on a biologically-inspired model, which replicates the human brain capability of creating associations between motor and sensory data, by learning is presented.
Abstract
This paper presents a neural model for visuo-motor coordination of a redundant robotic manipulator in reaching tasks. The model was developed for, and experimentally validated on, a neurobotic platform for manipulation. The proposed approach is based on a biologically-inspired model, which replicates the human brain capability of creating associations between motor and sensory data, by learning. The model is implemented here by self-organizing neural maps. During learning, the system creates relations between the motor data associated to endogenous movements performed by the robotic arm and the sensory consequences of such motor actions, i.e. the final position of the end effector. The learnt relations are stored in the neural map structure and are then used, after learning, for generating motor commands aimed at reaching a given point in 3D space. The approach proposed here allows to solve the inverse kinematics and joint redundancy problems for different robotic arms, with good accuracy and robustness. In order to validate this, the same implementation has been tested on a PUMA robot, too. Experimental trials confirmed the system capability to control the end effector position and also to manage the redundancy of the robotic manipulator in reaching the 3D target point even with additional constraints, such as one or more clamped joints, tools of variable lengths, or no visual feedback, without additional learning phases

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Citations
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Journal ArticleDOI

Soft Robotics: New Perspectives for Robot Bodyware and Control

TL;DR: Soft robotics is not just a new direction of technological development, but a novel approach to robotics, unhinging its fundamentals, with the potential to produce a new generation of robots, in the support of humans in the authors' natural environments.
Journal ArticleDOI

Bio-inspired grasp control in a robotic hand with massive sensorial input

TL;DR: A bio-inspired approach to tactile data processing has been followed in order to design and test a hardware–software robotic architecture that works on the parallel processing of a large amount of tactile sensing signals.
Dissertation

Inverse Kinematic Analysis of Robot Manipulators

TL;DR: In this article, a survey of tools and techniques used for the kinematic analysis of industrial robot manipulators is presented and a comparison with the proposed method is made for the analysis of quality and efficiency of the obtained solutions.
Proceedings ArticleDOI

Extension to End-effector Position and Orientation Control of a Learning-based Neurocontroller for a Humanoid Arm

TL;DR: Experimental trials confirmed the system capability to control the end effector position and orientation and also to manage the redundancy of the robotic manipulator in reaching the 3D target point even with additional constraints, such as one or more clamped joints without additional learning phases.
Proceedings ArticleDOI

A McKibben muscle arm learning equilibrium postures

TL;DR: The results suggest that a fast and incremental goal-action mapping formation could constitute the computational mechanism underlying the neural growth and plasticity of an early developed brain at the onset of reaching.
References
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Book

Self-Organizing Maps

TL;DR: The Self-Organising Map (SOM) algorithm was introduced by the author in 1981 as mentioned in this paper, and many applications form one of the major approaches to the contemporary artificial neural networks field, and new technologies have already been based on it.
Book

Principles of Neural Science

TL;DR: The principles of neural science as mentioned in this paper have been used in neural networks for the purpose of neural network engineering and neural networks have been applied in the field of neural networks, such as:
Proceedings Article

A Growing Neural Gas Network Learns Topologies

TL;DR: An incremental network model is introduced which is able to learn the important topological relations in a given set of input vectors by means of a simple Hebb-like learning rule.
Journal ArticleDOI

Growing cell structures—a self-organizing network for unsupervised and supervised learning

Bernd Fritzke
- 01 Nov 1994 - 
TL;DR: A new self-organizing neural network model that has two variants that performs unsupervised learning and can be used for data visualization, clustering, and vector quantization is presented and results on the two-spirals benchmark and a vowel classification problem are presented that are better than any results previously published.
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