Adaptive example-based super-resolution using kernel PCA with a novel classification approach
スポンサーリンク
概要
- 論文の詳細を見る
An adaptive example-based super-resolution (SR) using kernel principal component analysis (PCA) with a novel classification approach is presented in this paper. In order to enable estimation of missing high-frequency components for each kind of texture in target low-resolution (LR) images, the proposed method performs clustering of high-resolution (HR) patches clipped from training HR images in advance. Based on two nonlinear eigenspaces, respectively, generated from HR patches and their corresponding low-frequency components in each cluster, an inverse map, which can estimate missing high-frequency components from only the known low-frequency components, is derived. Furthermore, by monitoring errors caused in the above estimation process, the proposed method enables adaptive selection of the optimal cluster for each target local patch, and this corresponds to the novel classification approach in our method. Then, by combining the above two approaches, the proposed method can adaptively estimate the missing high-frequency components, and successful reconstruction of the HR image is realized.
- 2011-12-22
論文 | ランダム
- 正常CF-1マウスおよびSprague Dawleyラットにおける妊娠状態の3年間調査
- 高濃度食塩水によるラット胎仔末端部欠損症
- マウス,ラットおよびウサギ胚の器官形成期における発生比較
- 地域住民の血清ペプシノ-ゲン1(PG1),2(PG2)値およびPG1/PG2比の分布
- 食塩によるラット胎仔末端部欠損症