Title :
Learning From Errors in Super-Resolution
Author :
Yi Tang ; Yuan Yuan
Author_Institution :
Sch. of Math. & Comput. Sci., Yunnan Univ. of Nat., Kunming, China
Abstract :
A novel framework of learning-based superresolution is proposed by employing the process of learning from the estimation errors. The estimation errors generated by different learning-based super-resolution algorithms are statistically shown to be sparse and uncertain. The sparsity of the estimation errors means most of estimation errors are small enough. The uncertainty of the estimation errors means the location of the pixel with larger estimation error is random. Noticing the prior information about the estimation errors, a nonlinear boosting process of learning from these estimation errors is introduced into the general framework of the learning-based super-resolution. Within the novel framework of super-resolution, a low-rank decomposition technique is used to share the information of different super-resolution estimations and to remove the sparse estimation errors from different learning algorithms or training samples. The experimental results show the effectiveness and the efficiency of the proposed framework in enhancing the performance of different learning-based algorithms.
Keywords :
image resolution; learning (artificial intelligence); estimation errors; learning algorithms; learning process; learning-based super-resolution algorithm; low-rank decomposition technique; nonlinear boosting process; pixel location; super-resolution estimations; Estimation error; Image resolution; Sparse matrices; Training; Training data; Uncertainty; Boosting; learning-based super-resolution; low-rank decomposition; sparsity;
Journal_Title :
Cybernetics, IEEE Transactions on
DOI :
10.1109/TCYB.2014.2301732