Super-Resolution of Undersampled and Subpixel Shifted Image Sequence by Pyramid Iterative Back-Projection(Regular Section)
スポンサーリンク
概要
- 論文の詳細を見る
The existing methods for reconstruction of a super-resolution image from undersampled and shubpixel shifted image sequence have two disadvantages. One is that most of them have to perform a lot of computations which lead to taking a lot of time and cannot meet the need of real-time processing. Another is that they cannot achieve satisfactory results in the case that the undersampling rate is too low. This paper considers applying a pyramid structure method to the super-resolution of the image sequence since it has some iterative optimization and parallel processing abilities. Based on the Iterative Back-Projection proposed by Peleg, a practical implementation, called Pyramid Iterative Back-Projection, is presented. The experiments and the error analysis show the effectiveness of this method. The image resolution can be improved better even in the case of severely undersampled images. In addition, the proposed method can be done in parallel and meet the need of real-time processing. The implementation framework of the method can be easily extended to the other general super-resolution methods.
- 社団法人電子情報通信学会の論文
- 2002-12-01
著者
-
LU Yao
Department of Molecular Metabolism and Biochemical Genetics, Kagoshima University Graduate School of
-
Lu Yao
Department Of Electronic Engineering Gunma University
-
INAMURA Minoru
Department of Electronic Engineering, Gunma University
-
Inamura Minoru
Department Of Electronic Engineering Gunma University
関連論文
- Fasting-induced reduction in locomotor activity and reduced response of orexin neurons in carnitine-deficient mice
- Super-Resolution Image Pyramid (Image Processing, Image Pattern Recognition)
- Super-Resolution of Undersampled and Subpixel Shifted Image Sequence by Pyramid Iterative Back-Projection(Regular Section)
- Spatial Resolution Improvement of a Low Spatial Resolution Thermal Infrared Image by Backpropagated Neural Networks