Skip to content

Latest commit

 

History

History
73 lines (62 loc) · 2.44 KB

README.md

File metadata and controls

73 lines (62 loc) · 2.44 KB

SiamFusion PyTorch implementation

Introduction

This is my Thesis in the direction of Visual Object Tracking.

SiamFusion architecture

How to Run - Training

  1. Prerequisites: The project was built using python 3.6 and tested on Ubuntu 18.04 and 16.04. It was tested on a GTX 1080 Ti. Furthermore it requires PyTorch 4.1.

  2. Download the GOT-10k Dataset in http://got-10k.aitestunion.com/downloads and extract it on the folder of your choice, in my case it is /home/arbi/desktop/GOT-10k (OBS: data reading is done in execution time, so if available extract the dataset in your SSD partition).

  1. Download the ImageNet VID Dataset in http://bvisionweb1.cs.unc.edu/ILSVRC2017/download-videos-1p39.php and extract it on the folder of your choice (OBS: data reading is done in execution time, so if available extract the dataset in your SSD partition). You can get rid of the test part of the dataset, since it has no Annotations.

  2. In config.py script root_dir_for_GOT_10k, root_dir_for_VID and and root_dir_for_OTB change to your directory.

root_dir_for_GOT_10k = '/home/arbi/desktop/GOT-10k' <-- change to your directory 
root_dir_for_VID     = '/home/arbi/desktop/VID'     <-- change to your directory
root_dir_for_OTB     = '/home/arbi/desktop/OTB2015' <-- change to your directory 
  1. Run the train.py script:
python3 train.py

How to Run - Testing

  1. Download pretrained model_e31.pth from Yandex Disk, and put the file under model/model_e31.pth.

  1. Run the test.py script:
python3 test.py

Results - Training

OTB2015

Results on each epoch