Mauro Musarra
Relaxing the Forget Constraints in Open World Recognition.
Rel. Barbara Caputo, Dario Fontanel, Fabio Cermelli. Politecnico di Torino, Corso di laurea magistrale in Data Science And Engineering, 2022
Abstract
Vision is a fundamental ability for robots to operate in the real world. In the last few years deep neural networks has significantly improved the state of the art of robotic vision. However, they are mainly trained to recognize only the categories provided in the training set (closed world assumption), being ill equipped to operate in the real world, where new unknown objects may appear over time. In this work, we investigate the open world recognition (OWR) problem that presents two challenges: (i) learn new concepts over time (incremental learning) and (ii) discern between known and unknown categories (open set recognition).
Current state-of-the-art OWR methods address incremental learning by employing a knowledge distillation loss
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