Giuseppe Viglialoro
Online domain adaptation for person Re-identification with a human in the loop
Delussu R.
First
;Putzu L.Second
;Fumera G.Penultimate
;Roli F.Last
2021-01-01
Abstract
Supervised deep learning methods have recently achieved remarkable performance in person re-identification. Unsupervised domain adaptation (UDA) approaches have also been proposed for application scenarios where only unlabelled data are available from target camera views. We consider a more challenging scenario when even collecting a suitable amount of representative, unlabelled target data for offline training or fine-tuning is infeasible. In this context we revisit the human-in-the-loop (HITL) approach, which exploits online the operator's feedback on a small amount of target data. We argue that HITL is a kind of online domain adaptation specifically suited to person re-identification. We then reconsider relevance feedback methods for content-based image retrieval that are computationally much cheaper than state-of-the-art HITL methods for person reidentification, and devise a specific feedback protocol for them. Experimental results show that HITL can achieve comparable or better performance than UDA, and is therefore a valid alternative when the lack of unlabelled target data makes UDA infeasible.| File | Size | Format | |
|---|---|---|---|
| ICPR 2020.pdf Solo gestori archivio
Description: VoR
Type: versione editoriale
Size 473.67 kB
Format Adobe PDF
|
473.67 kB | Adobe PDF | & nbsp; View / Open Request a copy |
| paper_final.pdf open access
Description: AAM
Type: Author’s Accepted Manuscript AAM, Post-print, (version accepted by the publisher)
Size 1.41 MB
Format Adobe PDF
|
1.41 MB | Adobe PDF | View/Open |
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