Texture classification algorithms require generalization abilities in order to be reliably used in real world applications. This paper casts this problem in the domain adaptation setting and presents the first study investigating (a) up to which extent this visual recognition problem suffers from this issue, and (b) the effectiveness of existing domain adaptation algorithms in mitigating it. We focus on domain adaptation methods based on shallow classifiers, and test their performance on deep and non deep features. Results obtained on a newly created domain adaptation texture setup show the superiority of deep features compared to other well known approaches, and highlights the importance of factoring in the domain shift when dealing with textures in the wild.
Caputo, B., Cusano, C., Lanzi, M., Napoletano, P., Schettini, R. (2017). On the importance of domain adaptation in texture classification. In Image Analysis and Processing - ICIAP 2017 (pp.380-390). Springer Verlag [10.1007/978-3-319-68560-1_34].
On the importance of domain adaptation in texture classification
Napoletano, P
;Schettini, R
2017
Abstract
Texture classification algorithms require generalization abilities in order to be reliably used in real world applications. This paper casts this problem in the domain adaptation setting and presents the first study investigating (a) up to which extent this visual recognition problem suffers from this issue, and (b) the effectiveness of existing domain adaptation algorithms in mitigating it. We focus on domain adaptation methods based on shallow classifiers, and test their performance on deep and non deep features. Results obtained on a newly created domain adaptation texture setup show the superiority of deep features compared to other well known approaches, and highlights the importance of factoring in the domain shift when dealing with textures in the wild.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.