Reproduction of paper: Learning Discriminative Features with Multiple Granularities for Person Re-Identification
This is a non-official pytorch re-production of paper: Learning Discriminative Features with Multiple Granularities for Person Re-Identification. Still Work In Progress.
Please cite and refer to:
@ARTICLE{2018arXiv180401438W,
author = {{Wang}, G. and {Yuan}, Y. and {Chen}, X. and {Li}, J. and {Zhou}, X.},
title = "{Learning Discriminative Features with Multiple Granularities for Person Re-Identification}",
journal = {ArXiv e-prints},
archivePrefix = "arXiv",
eprint = {1804.01438},
primaryClass = "cs.CV",
keywords = {Computer Science - Computer Vision and Pattern Recognition},
year = 2018,
month = apr,
adsurl = {http://adsabs.harvard.edu/abs/2018arXiv180401438W},
adsnote = {Provided by the SAO/NASA Astrophysics Data System}
}
Code is only tested against python 2.7 and pytorch 0.4.
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mgn/mgn.py: re-production of Multiple Granularity Network.
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mgn/ide.py: baseline ResNet-50 based model, which is a rewritten from Person reID baseline pytorch.
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mgn/triplet.py: triplet semi-hard sample mining loss.
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mgn/market1501.py: Market-1501 dataset.
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Market-1501-v15.09.15/
: Market-1501 dataset root directory.
- 2018-04-28: mAP=0.579464, r@1=0.798694, r@5=0.909739, r@10=0.938539