Learning a category from few examples is a challenging task for vision algorithms, while psychological studies have shown that humans are able to generalise correctly even from a single instance (one-shot learning). The most accredited hypothesis is that humans are able to exploit prior knowledge when learning a new related category. This paper presents an SVM-based model adaptation algorithm able to perform knowledge transfer for a new category when very limited examples are available. Using a leave-one-out estimate of the weighted error-rate the algorithm automatically decides from where to transfer (on which known category to rely), how much to transfer (the degree of adaptation) and if it is worth transferring something at all. Moreover a weighted least-squares loss function takes optimally care of data unbalance between negative and positive examples. Experiments presented on two different object category databases show that the proposed method is able to exploit previous knowledge avoiding negative transfer. The overall classification performance is increased compared to what would be achieved by starting from scratch. Furthermore as the number of already learned categories grows, the algorithm is able to learn a new category from one sample with increasing precision, i.e. it is able to perform one-shot learning. © 2009. The copyright of this document resides with its authors.

The more you know, the less you learn: From knowledge transfer to one-shot learning of object categories / Tommasi, Tatiana; Caputo, Barbara. - ELETTRONICO. - (2009). (Intervento presentato al convegno 2009 20th British Machine Vision Conference, BMVC 2009 tenutosi a London; United Kingdom nel 2009) [10.5244/C.23.80].

The more you know, the less you learn: From knowledge transfer to one-shot learning of object categories

TOMMASI, TATIANA;CAPUTO, BARBARA
2009

Abstract

Learning a category from few examples is a challenging task for vision algorithms, while psychological studies have shown that humans are able to generalise correctly even from a single instance (one-shot learning). The most accredited hypothesis is that humans are able to exploit prior knowledge when learning a new related category. This paper presents an SVM-based model adaptation algorithm able to perform knowledge transfer for a new category when very limited examples are available. Using a leave-one-out estimate of the weighted error-rate the algorithm automatically decides from where to transfer (on which known category to rely), how much to transfer (the degree of adaptation) and if it is worth transferring something at all. Moreover a weighted least-squares loss function takes optimally care of data unbalance between negative and positive examples. Experiments presented on two different object category databases show that the proposed method is able to exploit previous knowledge avoiding negative transfer. The overall classification performance is increased compared to what would be achieved by starting from scratch. Furthermore as the number of already learned categories grows, the algorithm is able to learn a new category from one sample with increasing precision, i.e. it is able to perform one-shot learning. © 2009. The copyright of this document resides with its authors.
2009
2009 20th British Machine Vision Conference, BMVC 2009
1707
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
The more you know, the less you learn: From knowledge transfer to one-shot learning of object categories / Tommasi, Tatiana; Caputo, Barbara. - ELETTRONICO. - (2009). (Intervento presentato al convegno 2009 20th British Machine Vision Conference, BMVC 2009 tenutosi a London; United Kingdom nel 2009) [10.5244/C.23.80].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/915650
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