Giulia Pasquale
Istituto Italiano di Tecnologia
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Publication
Featured researches published by Giulia Pasquale.
intelligent robots and systems | 2016
Giulia Pasquale; Carlo Ciliberto; Lorenzo Rosasco; Lorenzo Natale
The development of reliable and robust visual recognition systems is a main challenge towards the deployment of autonomous robotic agents in unconstrained environments. Learning to recognize objects requires image representations that are discriminative to relevant information while being invariant to nuisances, such as scaling, rotations, light and background changes, and so forth. Deep Convolutional Neural Networks can learn such representations from large web-collected image datasets and a natural question is how these systems can be best adapted to the robotics context where little supervision is often available. In this work, we investigate different training strategies for deep architectures on a new dataset collected in a real-world robotic setting. In particular we show how deep networks can be tuned to improve invariance and discriminability properties and perform object identification tasks with minimal supervision.
international conference on robotics and automation | 2017
Raffaello Camoriano; Giulia Pasquale; Carlo Ciliberto; Lorenzo Natale; Lorenzo Rosasco; Giorgio Metta
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.
international conference on machine learning | 2015
Giulia Pasquale; Carlo Ciliberto; Francesca Odone; Lorenzo Rosasco; Lorenzo Natale
ieee ras international conference on humanoid robots | 2017
Elisa Maiettini; Giulia Pasquale; Lorenzo Rosasco; Lorenzo Natale
international conference on robotics and automation | 2018
Giulia Vezzani; Ugo Pattacini; Giulia Pasquale; Lorenzo Natale
arXiv: Robotics | 2018
Elisa Maiettini; Giulia Pasquale; Lorenzo Rosasco; Lorenzo Natale
arXiv: Robotics | 2017
Giulia Pasquale; Carlo Ciliberto; Francesca Odone; Lorenzo Rosasco; Lorenzo Natale
arXiv: Machine Learning | 2016
Raffaello Camoriano; Giulia Pasquale; Carlo Ciliberto; Lorenzo Natale; Lorenzo Rosasco; Giorgio Metta
arXiv: Machine Learning | 2016
Raffaello Camoriano; Giulia Pasquale; Carlo Ciliberto; Lorenzo Natale; Lorenzo Rosasco; Giorgio Metta
Archive | 2016
Giulia Pasquale; Carlo Ciliberto; Francesca Odone; Lorenzo Rosasco; Lorenzo Natale