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Dive into the research topics where Cosimo Della Santina is active.

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Featured researches published by Cosimo Della Santina.


ieee-ras international conference on humanoid robots | 2015

Dexterity augmentation on a synergistic hand: The Pisa/IIT SoftHand+

Cosimo Della Santina; Giorgio Grioli; Manuel G. Catalano; Alberto Brando; Antonio Bicchi

Soft robotics and under-actuation were recently demonstrated as good approaches for the implementation of humanoid robotic hands. Nevertheless, it is often difficult to increase the number of degrees of actuation of heavily under-actuated hands without compromising their intrinsic simplicity. In this paper we analyze the Pisa/IIT SoftHand and its underlying logic of adaptive synergies, and propose a method to double its number of degree of actuation, with a very reduced impact on its mechanical complexity. This new design paradigm is based on constructive exploitation of friction phenomena. Based on this method, a novel prototype of under-actuated robot hand with two degrees of actuation is proposed, named Pisa/IIT SoftHand+. A preliminary validation of the prototype follows, based on grasping and manipulation examples of some objects.


international conference on robotics and automation | 2016

SoftHand Pro-D: Matching dynamic content of natural user commands with hand embodiment for enhanced prosthesis control

Cristina Piazza; Cosimo Della Santina; Manuel G. Catalano; Giorgio Grioli; Manolo Garabini; Antonio Bicchi

State of the art of hand prosthetics is divided between simple and reliable gripper-like systems and sophisticate hi-tech poly-articular hands which tend to be complex both in their design and for the patient to operate. In this paper, we introduce the idea of decoding different movement intentions of the patient using the dynamic frequency content of the control signals in a natural way. We move a step further showing how this idea can be embedded in the mechanics of an underactuated soft hand by using only passive damping components. In particular we devise a method to design the hand hardware to obtain a given desired motion. This method, that we call of the dynamic synergies, builds on the theory of linear descriptor systems, and is based on the division of the hand movement in a slow and a fast components. We use this method to evolve the design of the Pisa/IIT SoftHand in a prototype prosthesis which, while still having 19 degrees of freedom and just one motor, can move along two different synergistic directions of motion (and combinations of the two), to perform either a pinch or a power grasp. Preliminary experimental results are presented, demonstrating the effectiveness of the proposed design.


IEEE Robotics & Automation Magazine | 2017

The Quest for Natural Machine Motion: An Open Platform to Fast-Prototyping Articulated Soft Robots

Cosimo Della Santina; Cristina Piazza; Gian Maria Gasparri; Manuel Bonilla; Manuel G. Catalano; Giorgio Grioli; Manolo Garabini; Antonio Bicchi

Soft robots are one of the most significant recent evolutions in robotics. They rely on compliant physical structures purposefully designed to embody desired characteristics. Since their introduction, they have shown remarkable applicability in overcoming their rigid counterparts in such areas as interaction with humans, adaptability, energy efficiency, and maximization of peak performance. Nonetheless, we believe that research on novel soft robot applications is still slowed by the difficulty in obtaining or developing a working soft robot structure to explore novel applications.


IEEE Robotics & Automation Magazine | 2017

Controlling Soft Robots: Balancing Feedback and Feedforward Elements

Cosimo Della Santina; Matteo Bianchi; Giorgio Grioli; F. Angelini; Manuel G. Catalano; Manolo Garabini; Antonio Bicchi

Soft robots (SRs) represent one of the most significant recent evolutions in robotics. Designed to embody safe and natural behaviors, they rely on compliant physical structures purposefully designed to embody desirable and sometimes variable impedance characteristics. This article discusses the problem of controlling SRs. We start by observing that most of the standard methods of robotic control-e.g., high-gain robust control, feedback linearization, backstepping, and active impedance control-effectively fight against or even completely cancel the physical dynamics of the system, replacing them with a desired model. This defeats the purpose of introducing physical compliance. After all, what is the point of building soft actuators if we then make them stiff by control?


Frontiers in Robotics and AI | 2017

Unvealing the Principal Modes of Human Upper Limb Movements through Functional Analysis

Giuseppe Averta; Cosimo Della Santina; Edoardo Battaglia; Federica Felici; Matteo Bianchi; Antonio Bicchi

The rich variety of human upper limb movements requires an extraordinary coordination of different joints according to specific spatio-temporal patterns. However, unvealing these motor schemes is a challenging task. Principal components have been often used for analogous purposes, but such an approach relies on hypothesis of temporal uncorrelation of upper limb poses in time. To overcome these limitations, in this work we leverage on functional Principal Component Analysis (fPCA). We carried out experiments with 7 s​bjects performing a set of most significant human actions, selected considering state-of-the-art grasp taxonomies and human kinematic workspace. fPCA results show that human upper limb trajectories can be reconstructed by a linear combination of few principal time dependent functions, with a first component alone explaining around 60/70% of the observed behaviours. This allows to infer that in daily living activities humans reduce the complexity of movement by modulating their motions through a reduced set of few principal patterns. Finally, we discuss how this approach could be profitably applied in robotics and bioengineering, opening fascinating perspectives to advance the state of the art of artificial systems, as it was the case of hand synergies.


3rd International Conference on NeuroRehabilitation (ICNR2016) | 2017

Soft Robots that Mimic the Neuromusculoskeletal System

Manolo Garabini; Cosimo Della Santina; Matteo Bianchi; Manuel G. Catalano; Giorgio Grioli; Antonio Bicchi

In motor control studies, the question on which parameters human beings and animals control through their nervous system has been extensively explored and discussed, and several hypotheses proposed. It is widely acknowledged that useful inputs in this problem could be provided by developing artificial replication of the neuromusculoskeletal system, to experiment different motor control hypothesis. In this paper we present such device, which reproduces many of the characteristics of an agonistic-antagonistic muscular pair acting on a joint.


international conference on robotics and automation | 2017

Design of an under-actuated wrist based on adaptive synergies

Simona Casini; Vinicio Tincani; Giuseppe Averta; Mattia Poggiani; Cosimo Della Santina; Edoardo Battaglia; Manuel G. Catalano; Matteo Bianchi; Giorgio Grioli; Antonio Bicchi

An effective robotic wrist represents a key enabling element in robotic manipulation, especially in prosthetics. In this paper, we propose an under-actuated wrist system, which is also adaptable and allows to implement different under-actuation schemes. Our approach leverages upon the idea of soft synergies — in particular the design method of adaptive synergies — as it derives from the field of robot hand design. First we introduce the design principle and its implementation and function in a configurable test bench prototype, which can be used to demonstrate the feasibility of our idea. Furthermore, we report on results from preliminary experiments with humans, aiming to identify the most probable wrist pose during the pre-grasp phase in activities of daily living. Based on these outcomes, we calibrate our wrist prototype accordingly and demonstrate its effectiveness to accomplish grasping and manipulation tasks.


ieee-ras international conference on humanoid robots | 2016

Toward an adaptive foot for natural walking

Cristina Piazza; Cosimo Della Santina; Gian Maria Gasparri; Manuel G. Catalano; Giorgio Grioli; Manolo Garabini; Antonio Bicchi

Many walking robot presented in literature stand on rigid flat feet, with a few notable exceptions that embed flexibility in their feet to optimize the energetic cost of walking. This paper proposes a novel adaptive robot foot design, whose main goal is to ease the task of standing and walking on uneven terrains. After explaining the rationale behind our design approach, we present the design of the SoftFoot, a foot able to comply with uneven terrains and to absorb shocks thanks to its intrinsic adaptivity, while still being able to rigidly support the stance, maintaining a rather extended contact surface, and effectively enlarging the equivalent support polygon. The paper introduces the robot design and prototype and presents preliminary validation and comparison versus a rigid flat foot with comparable footprint and sole.


advances in computing and communications | 2017

Towards minimum-information adaptive controllers for robot manipulators

Tobia Marcucci; Cosimo Della Santina; Marco Gabiccini; Antonio Bicchi

The aim of this paper is to move a step in the direction of determining the minimum amount of information needed to control a robot manipulator within the framework of adaptive control. Recent innovations in the state of the art show how global asymptotic trajectory tracking can be achieved despite the presence of uncertainties in the kinematic and dynamic models of the robot. However, a clear distinction between which parameters can be included among the uncertainties, and which parameters can not, has not been drawn yet. Since most of the adaptive control algorithms are built on linearly parameterized models, we propose to reformulate the problem as finding a procedure to determine whether and how a given dynamical system can be linearly parameterized with respect to a specific set of parameters. Within this framework, we show how the trajectory tracking problem of a manipulator can be accomplished with the only knowledge of the number of joints of the manipulator. As an illustrative example, we present the end-effector trajectory tracking control of a robot initialized with the kinematic model of a different robot.


Frontiers in Neurorobotics | 2017

Postural Hand Synergies during Environmental Constraint Exploitation

Cosimo Della Santina; Matteo Bianchi; Giuseppe Averta; Simone Ciotti; Visar Arapi; Simone Fani; Edoardo Battaglia; Manuel G. Catalano; Marco Santello; Antonio Bicchi

Humans are able to intuitively exploit the shape of an object and environmental constraints to achieve stable grasps and perform dexterous manipulations. In doing that, a vast range of kinematic strategies can be observed. However, in this work we formulate the hypothesis that such ability can be described in terms of a synergistic behavior in the generation of hand postures, i.e., using a reduced set of commonly used kinematic patterns. This is in analogy with previous studies showing the presence of such behavior in different tasks, such as grasping. We investigated this hypothesis in experiments performed by six subjects, who were asked to grasp objects from a flat surface. We quantitatively characterized hand posture behavior from a kinematic perspective, i.e., the hand joint angles, in both pre-shaping and during the interaction with the environment. To determine the role of tactile feedback, we repeated the same experiments but with subjects wearing a rigid shell on the fingertips to reduce cutaneous afferent inputs. Results show the persistence of at least two postural synergies in all the considered experimental conditions and phases. Tactile impairment does not alter significantly the first two synergies, and contact with the environment generates a change only for higher order Principal Components. A good match also arises between the first synergy found in our analysis and the first synergy of grasping as quantified by previous work. The present study is motivated by the interest of learning from the human example, extracting lessons that can be applied in robot design and control. Thus, we conclude with a discussion on implications for robotics of our findings.

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Manuel G. Catalano

Istituto Italiano di Tecnologia

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Giorgio Grioli

Istituto Italiano di Tecnologia

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Alberto Brando

Istituto Italiano di Tecnologia

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