This work proposes a new Incremental MTDA technique for object detection that can adapt a detector to multiple target domains, one at a time, without having to retain data of previously-learned target domains.
Authors
Eric Granger
9 papers
Marco Pedersoli
4 papers
J. Dolz
14 papers
Le Thanh Nguyen-Meidine
2 papers
M. Kiran
2 papers
Louis-Antoine Blais-Morin
2 papers
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International Journal of Computer Vision manuscript No. (will be inserted by the editor) The PASCAL Visual Object Classes (VOC) Challenge