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Metta, Giorgio
iCub3 Avatar System: Enabling Remote Fully-Immersive Embodiment of Humanoid Robots
Dafarra, Stefano, Pattacini, Ugo, Romualdi, Giulio, Rapetti, Lorenzo, Grieco, Riccardo, Darvish, Kourosh, Milani, Gianluca, Valli, Enrico, Sorrentino, Ines, Viceconte, Paolo Maria, Scalzo, Alessandro, Traversaro, Silvio, Sartore, Carlotta, Elobaid, Mohamed, Guedelha, Nuno, Herron, Connor, Leonessa, Alexander, Draicchio, Francesco, Metta, Giorgio, Maggiali, Marco, Pucci, Daniele
We present an avatar system designed to facilitate the embodiment of humanoid robots by human operators, validated through iCub3, a humanoid developed at the Istituto Italiano di Tecnologia (IIT). More precisely, the contribution of the paper is twofold: first, we present the humanoid iCub3 as a robotic avatar which integrates the latest significant improvements after about fifteen years of development of the iCub series; second, we present a versatile avatar system enabling humans to embody humanoid robots encompassing aspects such as locomotion, manipulation, voice, and face expressions with comprehensive sensory feedback including visual, auditory, haptic, weight, and touch modalities. We validate the system by implementing several avatar architecture instances, each tailored to specific requirements. First, we evaluated the optimized architecture for verbal, non-verbal, and physical interactions with a remote recipient. This testing involved the operator in Genoa and the avatar in the Biennale di Venezia, Venice - about 290 Km away - thus allowing the operator to visit remotely the Italian art exhibition. Second, we evaluated the optimised architecture for recipient physical collaboration and public engagement on-stage, live, at the We Make Future show, a prominent world digital innovation festival. In this instance, the operator was situated in Genoa while the avatar operates in Rimini - about 300 Km away - interacting with a recipient who entrusted the avatar a payload to carry on stage before an audience of approximately 2000 spectators. Third, we present the architecture implemented by the iCub Team for the ANA Avatar XPrize competition.
DAC-h3: A Proactive Robot Cognitive Architecture to Acquire and Express Knowledge About the World and the Self
Moulin-Frier, Clément, Fischer, Tobias, Petit, Maxime, Pointeau, Grégoire, Puigbo, Jordi-Ysard, Pattacini, Ugo, Low, Sock Ching, Camilleri, Daniel, Nguyen, Phuong, Hoffmann, Matej, Chang, Hyung Jin, Zambelli, Martina, Mealier, Anne-Laure, Damianou, Andreas, Metta, Giorgio, Prescott, Tony J., Demiris, Yiannis, Dominey, Peter Ford, Verschure, Paul F. M. J.
This paper introduces a cognitive architecture for a humanoid robot to engage in a proactive, mixed-initiative exploration and manipulation of its environment, where the initiative can originate from both the human and the robot. The framework, based on a biologically-grounded theory of the brain and mind, integrates a reactive interaction engine, a number of state-of-the-art perceptual and motor learning algorithms, as well as planning abilities and an autobiographical memory. The architecture as a whole drives the robot behavior to solve the symbol grounding problem, acquire language capabilities, execute goal-oriented behavior, and express a verbal narrative of its own experience in the world. We validate our approach in human-robot interaction experiments with the iCub humanoid robot, showing that the proposed cognitive architecture can be applied in real time within a realistic scenario and that it can be used with naive users.
Incremental Robot Learning of New Objects with Fixed Update Time
Camoriano, Raffaello, Pasquale, Giulia, Ciliberto, Carlo, Natale, Lorenzo, Rosasco, Lorenzo, Metta, Giorgio
We consider object recognition in the context of lifelong learning, where a robotic agent learns to discriminate between a growing number of object classes as it accumulates experience about the environment. We propose an incremental variant of the Regularized Least Squares for Classification (RLSC) algorithm, and exploit its structure to seamlessly add new classes to the learned model. The presented algorithm addresses the problem of having an unbalanced proportion of training examples per class, which occurs when new objects are presented to the system for the first time. We evaluate our algorithm on both a machine learning benchmark dataset and two challenging object recognition tasks in a robotic setting. Empirical evidence shows that our approach achieves comparable or higher classification performance than its batch counterpart when classes are unbalanced, while being significantly faster.
Incremental Semiparametric Inverse Dynamics Learning
Camoriano, Raffaello, Traversaro, Silvio, Rosasco, Lorenzo, Metta, Giorgio, Nori, Francesco
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In particular, we consider the mixture of two approaches: Parametric modeling based on rigid body dynamics equations and nonparametric modeling based on incremental kernel methods, with no prior information on the mechanical properties of the system. This yields to an incremental semiparametric approach, leveraging the advantages of both the parametric and nonparametric models. We validate the proposed technique learning the dynamics of one arm of the iCub humanoid robot.
How to Abstract Intelligence? (If Verification Is in Order)
Pathak, Shashank (Istituto Italiano di Tecnologia) | Pulina, Luca (Università degli Studi di Sassari) | Metta, Giorgio (Istituto Italiano di Tecnologia) | Tacchella, Armando (Università degli Studi di Genova)
In this paper, we focus on learning intelligent agents through model-free reinforcement learning. Rather than arguing that reinforcement learning is the right abstraction for attaining intelligent behavior, we consider the issue of finding useful abstractions to represent the agent and the environment when verification is in order. Indeed, verifying that the agent’s behavior complies to some stated safety property — an ”Asimovian” perspective — only adds to the challenge that abstracting intelligence represents per se. In the paper, we show an example application about verification of abstractions in model-free learning, and we argue about potential (more) useful abstractions in the same context.