Continual egocentric object recognition
Luca Erculiani, Fausto Giunchiglia, Andrea Passerini

TL;DR
This paper introduces a memory-based incremental framework for egocentric object recognition that can learn continuously from limited supervision, recognize new objects, and operate effectively in an open-world setting resembling human perception.
Contribution
It presents the first solution for continual egocentric object recognition that incorporates unsupervised learning, novelty detection, and active user feedback in an open-world context.
Findings
Effective recognition and memorization of new objects without supervision
Utilization of persistence and incrementality improves performance
Feasibility demonstrated in open-world, generic object recognition
Abstract
We present a framework capable of tackilng the problem of continual object recognition in a setting which resembles that under whichhumans see and learn. This setting has a set of unique characteristics:it assumes an egocentric point-of-view bound to the needs of a singleperson, which implies a relatively low diversity of data and a coldstart with no data; it requires to operate in an open world, where newobjects can be encounteredat any time; supervision is scarce and hasto be solicited to the user, and completelyunsupervised recognitionof new objects should be possible. Note that this setting differs fromthe one addressed in the open world recognition literature, where supervised feedback is always requested to be able to incorporate newobjects. We propose a first solution to this problem in the form ofa memory-based incremental framework that is capable of storinginformation of each…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Machine Learning and Algorithms · Domain Adaptation and Few-Shot Learning
