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4 months ago

Adaptation and Re-Identification Network: An Unsupervised Deep Transfer Learning Approach to Person Re-Identification

Yu-Jhe Li; Fu-En Yang; Yen-Cheng Liu; Yu-Ying Yeh; Xiaofei Du; Yu-Chiang Frank Wang

Adaptation and Re-Identification Network: An Unsupervised Deep Transfer Learning Approach to Person Re-Identification

Abstract

Person re-identification (Re-ID) aims at recognizing the same person from images taken across different cameras. To address this task, one typically requires a large amount labeled data for training an effective Re-ID model, which might not be practical for real-world applications. To alleviate this limitation, we choose to exploit a sufficient amount of pre-existing labeled data from a different (auxiliary) dataset. By jointly considering such an auxiliary dataset and the dataset of interest (but without label information), our proposed adaptation and re-identification network (ARN) performs unsupervised domain adaptation, which leverages information across datasets and derives domain-invariant features for Re-ID purposes. In our experiments, we verify that our network performs favorably against state-of-the-art unsupervised Re-ID approaches, and even outperforms a number of baseline Re-ID methods which require fully supervised data for training.

Benchmarks

BenchmarkMethodologyMetrics
unsupervised-domain-adaptation-on-duke-toARN
mAP: 39.4
rank-1: 70.3
rank-10: 86.3
rank-5: 80.4

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Adaptation and Re-Identification Network: An Unsupervised Deep Transfer Learning Approach to Person Re-Identification | Papers | HyperAI