Domain adaptation approaches have shown promising results in reducing the marginal distribution difference among visual domains. They allow to train reliable models that work over datasets of different nature (photos, paintings etc), but they still struggle when the domains do not share an identical label space. In the partial domain adaptation setting, where the target covers only a subset of the source classes, it is challenging to reduce the domain gap without incurring in negative transfer. Many solutions just keep the standard domain adaptation techniques by adding heuristic sample weighting strategies. In this work we show how the self-supervisory signal obtained from the spatial co-location of patches can be used to define a side task that supports adaptation regardless of the exact label sharing condition across domains. We build over a recent work that introduced a jigsaw puzzle task for domain generalization: we describe how to reformulate this approach for partial domain adaptation and we show how it boosts existing adaptive solutions when combined with them. The obtained experimental results on three datasets supports the effectiveness of our approach.

Tackling partial domain adaptation with self-supervision / Bucci, Silvia; D'Innocente, Antonio; Tommasi, Tatiana. - 11752:2(2019), pp. 70-81. (Intervento presentato al convegno 20th International Conference on Image Analysis and Processing, ICIAP 2019 tenutosi a Trento; Italy) [10.1007/978-3-030-30645-8_7].

Tackling partial domain adaptation with self-supervision

D'Innocente, Antonio
Secondo
Validation
;
Tommasi, Tatiana
Ultimo
Methodology
2019

Abstract

Domain adaptation approaches have shown promising results in reducing the marginal distribution difference among visual domains. They allow to train reliable models that work over datasets of different nature (photos, paintings etc), but they still struggle when the domains do not share an identical label space. In the partial domain adaptation setting, where the target covers only a subset of the source classes, it is challenging to reduce the domain gap without incurring in negative transfer. Many solutions just keep the standard domain adaptation techniques by adding heuristic sample weighting strategies. In this work we show how the self-supervisory signal obtained from the spatial co-location of patches can be used to define a side task that supports adaptation regardless of the exact label sharing condition across domains. We build over a recent work that introduced a jigsaw puzzle task for domain generalization: we describe how to reformulate this approach for partial domain adaptation and we show how it boosts existing adaptive solutions when combined with them. The obtained experimental results on three datasets supports the effectiveness of our approach.
2019
20th International Conference on Image Analysis and Processing, ICIAP 2019
deep learning; image classification; convolutional neural networks; partial domain adaptation; self supervision; domain adaptation
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Tackling partial domain adaptation with self-supervision / Bucci, Silvia; D'Innocente, Antonio; Tommasi, Tatiana. - 11752:2(2019), pp. 70-81. (Intervento presentato al convegno 20th International Conference on Image Analysis and Processing, ICIAP 2019 tenutosi a Trento; Italy) [10.1007/978-3-030-30645-8_7].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1334391
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