Publication: Synthetic18K: Learning better representations for person re-ID and attribute recognition from 1.4 million synthetic images
Program
KU-Authors
KU Authors
Co-Authors
Uner, Onur Can
Aslan, Cem
Ercan, Burak
Ates, Tayfun
Celikcan, Ufuk
Erdem, Erkut
Advisor
Publication Date
2021
Language
English
Type
Journal Article
Journal Title
Journal ISSN
Volume Title
Abstract
Learning robust representations is critical for the success of person re-identification and attribute recognition systems. However, to achieve this, we must use a large dataset of diverse person images as well as annotations of identity labels and/or a set of different attributes. Apart from the obvious concerns about privacy issues, the manual annotation process is both time consuming and too costly. In this paper, we instead propose to use synthetic person images for addressing these difficulties. Specifically, we first introduce Synthetic18K, a large-scale dataset of over 1 million computer generated person images of 18K unique identities with relevant attributes. Moreover, we demonstrate that pretraining of simple deep architectures on Synthetic18K for person re-identification and attribute recognition and then fine-tuning on real data leads to significant improvements in prediction performances, giving results better than or comparable to state-of-the-art models.
Description
Source:
Signal Processing-Image Communication
Publisher:
Elsevier
Keywords:
Subject
Engineering, Electrical electronic engineering