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5 months ago

ReMix: Training Generalized Person Re-identification on a Mixture of Data

Mamedov Timur ; Konushin Anton ; Konushin Vadim

ReMix: Training Generalized Person Re-identification on a Mixture of
  Data

Abstract

Modern person re-identification (Re-ID) methods have a weak generalizationability and experience a major accuracy drop when capturing environmentschange. This is because existing multi-camera Re-ID datasets are limited insize and diversity, since such data is difficult to obtain. At the same time,enormous volumes of unlabeled single-camera records are available. Such datacan be easily collected, and therefore, it is more diverse. Currently,single-camera data is used only for self-supervised pre-training of Re-IDmethods. However, the diversity of single-camera data is suppressed byfine-tuning on limited multi-camera data after pre-training. In this paper, wepropose ReMix, a generalized Re-ID method jointly trained on a mixture oflimited labeled multi-camera and large unlabeled single-camera data. Effectivetraining of our method is achieved through a novel data sampling strategy andnew loss functions that are adapted for joint use with both types of data.Experiments show that ReMix has a high generalization ability and outperformsstate-of-the-art methods in generalizable person Re-ID. To the best of ourknowledge, this is the first work that explores joint training on a mixture ofmulti-camera and single-camera data in person Re-ID.

Benchmarks

BenchmarkMethodologyMetrics
generalizable-person-re-identification-on-21ReMix
DukeMTMC-reID-u003eRank1: 71.3
DukeMTMC-reID-u003emAP: 43.0
MSMT17-u003eRank-1: 78.2
MSMT17-u003emAP: 52.4
MSMT17-All-u003eRank-1: 84.0
MSMT17-All-u003emAP: 61.0
RandPerson-u003eRank-1: 72.7
RandPerson-u003emAP: 45.4
generalizable-person-re-identification-on-22ReMix
MSMT17-u003eRank-1: 27.3
MSMT17-u003emAP: 27.4
MSMT17-All-u003eRank-1: 37.7
MSMT17-All-u003emAP: 37.2
RandPerson-u003eRank-1: 19.3
RandPerson-u003emAP: 18.4
generalizable-person-re-identification-on-23ReMix
MSMT17-u003eRank1: 71.6
MSMT17-u003emAP: 52.8
MSMT17-All-u003eRank-1: 77.6
MSMT17-All-u003emAP: 61.6
Market-1501-u003eRank1: 58.4
Market-1501-u003emAP: 38.8
RandPerson-u003eRank1: 63.2
RandPerson-u003emAP: 42.8
person-re-identification-on-dukemtmc-reidReMix
Rank-1: 89.6
mAP: 79.8
person-re-identification-on-market-1501ReMix
Rank-1: 96.2
mAP: 89.8
person-re-identification-on-msmt17ReMix
Rank-1: 84.8
mAP: 63.9

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ReMix: Training Generalized Person Re-identification on a Mixture of Data | Papers | HyperAI