8000 GitHub - zxr8192/CNN-RNN2016: Reimplementation the paper of Recurrent Convolutional Network for Video-based Person Re-Identification in Pytorch
[go: up one dir, main page]
More Web Proxy on the site http://driver.im/
Skip to content

Reimplementation the paper of Recurrent Convolutional Network for Video-based Person Re-Identification in Pytorch

Notifications You must be signed in to change notification settings

zxr8192/CNN-RNN2016

 
 

Repository files navigation

CNN-RNN2016

Reimplementation the paper of Recurrent Convolutional Network for Video-based Person Re-Identification in Pytorch

Preparation

Python 3.6
Pytorch >= 0.4.0

Result on Prid2011

版本 map rank1 rank5 rank10 rank20
复现 58.8% 49.4% 68.5% 83.1% 89.9%
原文 -- 70% 90% 95% 97%

Problems

P.1 use the official split to form dataset, the dataset is too small.

train identites: 89, test identites: 89

=> PRID-2011 loaded

subset # ids # tracklets
train 89 178
query 89 89
gallery 89 89
total 178 356

P.2 Data Augmentation

1.mirror is not implemented
2.resize the image size from (128, 64) to (256, 128),not same as (64,48) in offical code

P.3 Training

1.If batch-size set to 1, the net will not be convergent.
2.The dataset is too small, we can change the dataset generation way to extend 
  the dataset. Maybe like the paper 'Video Person Re-identification with
  Competitive Snippet-similarity Aggregation and Co-attentive Snippet Embedding'.

Reference

Recurrent-Convolutional-Video-ReID

Spatial-Temporal-Pooling-Networks-ReID

About

Reimplementation the paper of Recurrent Convolutional Network for Video-based Person Re-Identification in Pytorch

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%
0