TY - GEN
T1 - Image interpolation via regularized local linear regression
AU - Liu, Xianming
AU - Zhao, Debin
AU - Xiong, Ruiqin
AU - Ma, Siwei
AU - Gao, Wen
PY - 2010
Y1 - 2010
N2 - In this paper, we present an efficient image interpolation scheme by using regularized local linear regression (RLLR). On one hand, we introduce a robust estimator of local image structure based on moving least squares, which can efficiently handle the statistical outliers compared with ordinary least squares based methods. On the other hand, motivated by recent progress on manifold based semi-supervise learning, the intrinsic manifold structure is explicitly considered by making use of both measured and unmeasured data points. In particular, the geometric structure of the marginal probability distribution induced by unmeasured samples is incorporated as an additional locality preserving constraint. The optimal model parameters can be obtained with a closed-form solution by solving a convex optimization problem. Experimental results demonstrate that our method outperform the existing methods in both objective and subjective visual quality over a wide range of test images.
AB - In this paper, we present an efficient image interpolation scheme by using regularized local linear regression (RLLR). On one hand, we introduce a robust estimator of local image structure based on moving least squares, which can efficiently handle the statistical outliers compared with ordinary least squares based methods. On the other hand, motivated by recent progress on manifold based semi-supervise learning, the intrinsic manifold structure is explicitly considered by making use of both measured and unmeasured data points. In particular, the geometric structure of the marginal probability distribution induced by unmeasured samples is incorporated as an additional locality preserving constraint. The optimal model parameters can be obtained with a closed-form solution by solving a convex optimization problem. Experimental results demonstrate that our method outperform the existing methods in both objective and subjective visual quality over a wide range of test images.
KW - Edge preservation
KW - Image interpolation
KW - Regularized local linear regression
UR - https://www.scopus.com/pages/publications/79951794330
U2 - 10.1109/PCS.2010.5702437
DO - 10.1109/PCS.2010.5702437
M3 - 会议稿件
AN - SCOPUS:79951794330
SN - 9781424471348
T3 - 28th Picture Coding Symposium, PCS 2010
SP - 118
EP - 121
BT - 28th Picture Coding Symposium, PCS 2010
T2 - 28th Picture Coding Symposium, PCS 2010
Y2 - 8 December 2010 through 10 December 2010
ER -