Domain-adaptive Person Re-identification without Cross-camera Paired
Samples
- URL: http://arxiv.org/abs/2307.06533v2
- Date: Sat, 15 Jul 2023 13:05:22 GMT
- Title: Domain-adaptive Person Re-identification without Cross-camera Paired
Samples
- Authors: Huafeng Li, Yanmei Mao, Yafei Zhang, Guanqiu Qi, and Zhengtao Yu
- Abstract summary: Cross-camera pedestrian samples collected from long-distance scenes often have no positive samples.
It is extremely challenging to use cross-camera negative samples to achieve cross-region pedestrian identity matching.
A novel domain-adaptive person re-ID method that focuses on cross-camera consistent discriminative feature learning is proposed.
- Score: 12.041823465553875
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Existing person re-identification (re-ID) research mainly focuses on
pedestrian identity matching across cameras in adjacent areas. However, in
reality, it is inevitable to face the problem of pedestrian identity matching
across long-distance scenes. The cross-camera pedestrian samples collected from
long-distance scenes often have no positive samples. It is extremely
challenging to use cross-camera negative samples to achieve cross-region
pedestrian identity matching. Therefore, a novel domain-adaptive person re-ID
method that focuses on cross-camera consistent discriminative feature learning
under the supervision of unpaired samples is proposed. This method mainly
includes category synergy co-promotion module (CSCM) and cross-camera
consistent feature learning module (CCFLM). In CSCM, a task-specific feature
recombination (FRT) mechanism is proposed. This mechanism first groups features
according to their contributions to specific tasks. Then an interactive
promotion learning (IPL) scheme between feature groups is developed and
embedded in this mechanism to enhance feature discriminability. Since the
control parameters of the specific task model are reduced after division by
task, the generalization ability of the model is improved. In CCFLM,
instance-level feature distribution alignment and cross-camera identity
consistent learning methods are constructed. Therefore, the supervised model
training is achieved under the style supervision of the target domain by
exchanging styles between source-domain samples and target-domain samples, and
the challenges caused by the lack of cross-camera paired samples are solved by
utilizing cross-camera similar samples. In experiments, three challenging
datasets are used as target domains, and the effectiveness of the proposed
method is demonstrated through four experimental settings.
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