Deep Convolutional Neural Networks for Thermal Infrared Object Tracking
We propose a correlation filter based ensemble tracker with multi-layer convolutional features for thermal infrared tracking (MCFTS). Firstly, we use pre-trained convolutional neural networks to extract the features of the multiple convolution layers of the thermal infrared target. Then, a correlation filter is used to construct multiple weak trackers with the corresponding convolution layer features. These weak trackers give the response maps of the target’s location. Finally, we propose an ensemble method that coalesces these response maps to get a stronger one. Furthermore, a simple but effective scale estimation strategy is exploited to boost the tracking accuracy.
- Please download the VGG-NET-19 mat file using the link https://uofi.box.com/shared/static/kxzjhbagd6ih1rf7mjyoxn2hy70hltpl.mat or using the link if you are in China http://pan.baidu.com/s/1kU1Me5T , and then, put it into the folder
cnnnet
.
Note that this mat file is compatile with the MatConvNet-1beta8 used in this work, if you download the mat file from http://www.vlfeat.org/matconvnet/models/imagenet-vgg-verydeep-19.mat. please pay attention to the version compatibility. You may need to modify some names of fields in each convolutional layer.
- Using the preCompiled Matconvnet (not recommended) or Compile yourself Matconvnet using Matlab in the command window.
>>cd matconvnet1.08
>>addpath matlab
>>vl_compilenn('enableGpu', true)
or
>>vl_compilenn('enableGpu', true, ...
'cudaRoot','C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v8.0', ...
'cudaMethod', 'nvcc') % for windows
Waiting the notification of success. More information about Matconvnet can be found at http://www.vlfeat.org/matconvnet/install/
- Run
runAll_vottir.m
to test the demo sequences.
You can download the results in here.
If you find the code helpful in your research, please consider citing:
@article{liu2017deep,
title={Deep convolutional neural networks for thermal infrared object tracking},
author={Liu, Qiao and Lu, Xiaohuan and He, Zhenyu and Zhang, Chunkai and Chen, Wen-Sheng},
journal={Knowledge-Based Systems},
volume={134},
pages={189--198},
year={2017}
}
Feedbacks and comments are welcome! Feel free to contact us via liuqiao.hit@gmail.com or liuqiao@stu.hit.edu.cn