Awesome
Tensor-Aligned Invariant Subspace Learning
When Unsupervised Domain Adaptation Meets Tensor Representations
Proc. IEEE International Conference on Computer Vision (ICCV), 2017
By Hao Lu<sup>1</sup>, Lei Zhang<sup>2</sup>, Zhiguo Cao<sup>1</sup>, Wei Wei<sup>2</sup>, Ke Xian<sup>1</sup>, Chunhua Shen<sup>3</sup>, Anton van den Hengel<sup>3</sup>
<sup>1</sup>Huazhong University of Science and Technology, China
<sup>2</sup>Northwestern Polytechnical University, China
<sup>3</sup>The University of Adelaide, Australia
Introduction
This repository contains the implimentation of Naive Tensor Subspace Learning (NTSL) and Tensor-Aligned Invariant Subspace Learning (TAISL) proposed in our ICCV17 paper.
Prerequisites
- Matlab is required. This repository has been tested on 64-bit Mac OS X Matlab2016a. The code should also be compatible with Windows 10.
- LibLinear toolbox at: https://www.csie.ntu.edu.tw/~cjlin/liblinear/. Please remember to install it following the instruction on the website, especially for Windows and Ubuntun users.
- Tensor Toolbox at: http://www.sandia.gov/~tgkolda/TensorToolbox/index-2.6.html.
- Matlab code for optimization with orthogonality constraints at: http://optman.blogs.rice.edu.
For your convenience, these toolboxs have already been included in this repository. Please remember to cite corresponding papers/softwares if you use these codes.
Usage
- run demo.m for a demonstration for the domain adaptation task of D->C.
Citation
If you use our codes in your research, please cite:
@inproceedings{Hao2017,
author = {Hao Lu and Lei Zhang and Zhiguo Cao and Wei Wei and Ke Xian and Chunhua Shen and Anton van den Hengel},
title = {When Unsupervised Domain Adaptation Meets Tensor Representations},
booktitle = {Proc. IEEE International Conference on Computer Vision (ICCV)},
year = {2017}
}