实例介绍
Matlab code of Bayesian CP Factorization for Tensor Completion
(Written by Qibin Zhao 2014)
To run the code:
1. Change Matlab work directory to "/BCPF_Toolbox_QZhao/".
2. Run "loadpah" code to add the current folder and subfolders into Matlab path searching list.
3. Open and run the demo files.
We provide two demo codes:
I. DemoBayesCP.m: Demonstration on synthesic data
II. DemoBayesCP_Image.m Demonstration for image completion
The package includes four algorithms:
1. BCPF.m BCPF for fully observed tensor
2. BCPF_TC.m BCPF for incomplete tensor
3. BCPF_IC.m BCPF for image completion
4. BCPF_MP.m BCPF using mixture priors for image completion
In this package, we used the tensor toolbox 2.5, which is downloaded from (http://www.sandia.gov/~tgkolda/TensorToolbox)
The tools for visualization of tensor with voxels is from Tensorlab (http://www.tensorlab.net/)
(Written by Qibin Zhao 2014)
To run the code:
1. Change Matlab work directory to "/BCPF_Toolbox_QZhao/".
2. Run "loadpah" code to add the current folder and subfolders into Matlab path searching list.
3. Open and run the demo files.
We provide two demo codes:
I. DemoBayesCP.m: Demonstration on synthesic data
II. DemoBayesCP_Image.m Demonstration for image completion
The package includes four algorithms:
1. BCPF.m BCPF for fully observed tensor
2. BCPF_TC.m BCPF for incomplete tensor
3. BCPF_IC.m BCPF for image completion
4. BCPF_MP.m BCPF using mixture priors for image completion
In this package, we used the tensor toolbox 2.5, which is downloaded from (http://www.sandia.gov/~tgkolda/TensorToolbox)
The tools for visualization of tensor with voxels is from Tensorlab (http://www.tensorlab.net/)
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