Iterative joint classifier and domain adaptation for visual transfer learning

Current available supervised classifiers cannot generalize across various domains due to distribution mismatch among them. Domain adaptation and transfer learning algorithms are proposed to tackle domain shift problem that originates from different data collection conditions. In this paper, we propo...

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Veröffentlicht in:International journal of machine learning and cybernetics 2022-04, Vol.13 (4), p.947-961
Hauptverfasser: Noori Saray, Shiva, Tahmoresnezhad, Jafar
Format: Artikel
Sprache:eng
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Zusammenfassung:Current available supervised classifiers cannot generalize across various domains due to distribution mismatch among them. Domain adaptation and transfer learning algorithms are proposed to tackle domain shift problem that originates from different data collection conditions. In this paper, we propose a transfer learning framework called iterative joint classifier and domain adaptation for visual transfer learning (ICDAV), which utilizes the balanced maximum mean discrepancy to better transfer knowledge across domains. Also, for learning a robust classifier against domain shift, a set of graph manifold regularizer and modified joint probability maximum mean discrepancy are simultaneously exploited to capture the domain structures and adapt the distribution of projected samples during the model learning process. Variety of experiments on several public datasets indicates that our approach achieves remarkable performance on visual domain adaptation and transfer learning tasks.
ISSN:1868-8071
1868-808X
DOI:10.1007/s13042-021-01428-z