Abstract

Unsupervised domain adaptation on person re-identification (re-ID), which adapts the model trained on source dataset to the target dataset, has drawn increasing attention over the past few years. It is more practical than the traditional supervised methods when applied in the real-world scenarios since they require a huge number of manual annotations in a specific domain, which is unrealistic and even under personal privacy concerns. Currently, pseudo label-based method is one of the most promising solutions in this area. However, in such methods, pseudo label noise is ignored and remains a huge challenge hindering further performance improvements. To solve this problem, this paper proposes a novel unsupervised domain adaptation re-ID framework named Noise Resistible Network (NRNet), which mainly consists of two dual-stream networks. For one thing, during pseudo label generation, NRNet utilizes one dual-stream network, denoted as clustering network, to generate discriminative features in the unseen domain for further clustering, reducing the pseudo label noise. For another, to avoid the problem of close loop noise amplification in conventional methods, the other dual-stream network named temporally average network is constructed outside the clustering loop to learn how to identify the images of the same person. In addition, two dual-stream networks are designed with a guiding mechanism, which allows the shallow network to learn more representative feature embedding from the deep network. Extensive experimental results on two widely-used benchmark datasets, i.e., Market-1501 and DukeMTMC-reID demonstrate that our proposed NRNet outperforms the state-of-the-art methods.

Highlights

  • Person re-identification [1], [2] is a challenging image retrieval task of computer vision, aiming at matching images of pedestrians from non-overlapping cameras

  • PROPOSED WORK We propose a novel noise resistible network (NRNet) to tackle the problem of pseudo label noise and close loop noise magnification in unsupervised domain adaptation (UDA) for person re-ID

  • From the results shown in the table, Noise Resistible Network (NRNet) achieves an mean Average Precision (mAP) of 78.6% and a Rank-1 accuracy of 91.1% for DukeMTMC-reID→Market-1501, outperforming it by 3.4% and 7.4%, respectively

Read more

Summary

INTRODUCTION

Person re-identification (re-ID) [1], [2] is a challenging image retrieval task of computer vision, aiming at matching images of pedestrians from non-overlapping cameras. In order to address the problems mentioned above, we present a Noise Resistible Network (NRNet) with two dual-stream networks to avoid noisy pseudo label and close loop noise magnification It learns from both labeled source dataset and unlabeled target dataset, achieving satisfying performance in the target one. UNSUPERVISED DOMAIN ADAPTATION FOR PERSON RE-IDENTIFICATION Handcraft feature-based methods can be directly applied to the UDA person re-ID tasks These methods always perform poorly on large-scale datasets since their extracted features are not representative enough to identify different IDs. Thanks to the developments of deep learning, some recent works attempt to address UDA re-ID based on deep learning framework. PROPOSED WORK We propose a novel noise resistible network (NRNet) to tackle the problem of pseudo label noise and close loop noise magnification in unsupervised domain adaptation (UDA) for person re-ID. The notations in this paper are list in Table. for quick retrieval

SUPERVISED LEARNING IN THE SOURCE DOMAIN
NETWORK STRUCTURE SELECTION
Findings
CONCLUSION
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call