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Learning Resolution-Invariant Deep Representations for Person Re-Identification (1907.10843v1)

Published 25 Jul 2019 in cs.CV and cs.LG

Abstract: Person re-identification (re-ID) solves the task of matching images across cameras and is among the research topics in vision community. Since query images in real-world scenarios might suffer from resolution loss, how to solve the resolution mismatch problem during person re-ID becomes a practical problem. Instead of applying separate image super-resolution models, we propose a novel network architecture of Resolution Adaptation and re-Identification Network (RAIN) to solve cross-resolution person re-ID. Advancing the strategy of adversarial learning, we aim at extracting resolution-invariant representations for re-ID, while the proposed model is learned in an end-to-end training fashion. Our experiments confirm that the use of our model can recognize low-resolution query images, even if the resolution is not seen during training. Moreover, the extension of our model for semi-supervised re-ID further confirms the scalability of our proposed method for real-world scenarios and applications.

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Authors (4)
  1. Yun-Chun Chen (17 papers)
  2. Yu-Jhe Li (23 papers)
  3. Xiaofei Du (9 papers)
  4. Yu-Chiang Frank Wang (88 papers)
Citations (53)

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