Resolution based Feature Distillation for Cross Resolution Person
Re-Identification
- URL: http://arxiv.org/abs/2109.07871v1
- Date: Thu, 16 Sep 2021 11:07:59 GMT
- Title: Resolution based Feature Distillation for Cross Resolution Person
Re-Identification
- Authors: Asad Munir, Chengjin Lyu, Bart Goossens, Wilfried Philips, Christian
Micheloni
- Abstract summary: Person re-identification (re-id) aims to retrieve images of same identities across different camera views.
Resolution mismatch occurs due to varying distances between person of interest and cameras.
We propose a Resolution based Feature Distillation (RFD) approach to overcome the problem of multiple resolutions.
- Score: 17.86505685442293
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Person re-identification (re-id) aims to retrieve images of same identities
across different camera views. Resolution mismatch occurs due to varying
distances between person of interest and cameras, this significantly degrades
the performance of re-id in real world scenarios. Most of the existing
approaches resolve the re-id task as low resolution problem in which a low
resolution query image is searched in a high resolution images gallery. Several
approaches apply image super resolution techniques to produce high resolution
images but ignore the multiple resolutions of gallery images which is a better
realistic scenario. In this paper, we introduce channel correlations to improve
the learning of features from the degraded data. In addition, to overcome the
problem of multiple resolutions we propose a Resolution based Feature
Distillation (RFD) approach. Such an approach learns resolution invariant
features by filtering the resolution related features from the final feature
vectors that are used to compute the distance matrix. We tested the proposed
approach on two synthetically created datasets and on one original multi
resolution dataset with real degradation. Our approach improves the performance
when multiple resolutions occur in the gallery and have comparable results in
case of single resolution (low resolution re-id).
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