Anisotropic Probabilistic Neural Network for Image Interpolation

This study proposes a novel image interpolation method based on an anisotropic probabilistic neural network (APNN). The proposed method uses an anisotropic Gaussian kernel to improve image interpolation, which causes blurred edges. The objective of this anisotropic Gaussian kernel-based probabilistic neural network is to provide high adaptivity of smoothness/sharpness during image/video interpolation. This APNN interpolation method adjusts the smoothing parameters for varied smooth/edge regions, and considers edge direction. This APNN uses a single neuron to estimate sharpness/smoothness. The proposed method achieves better sharpness enhancement at edge regions, and reveals the noise reduction at smooth region. This study also uses interpolating a slanted-edge image to reveal blurring and blocking effects. Finally, this study compares the performance of these proposed methods with other image interpolation methods.

[1]  Ching-Han Chen,et al.  Adaptive image interpolation using probabilistic neural network , 2009, Expert Syst. Appl..

[2]  Seongjai Kim,et al.  Edge-forming methods for color image zooming , 2006, IEEE Transactions on Image Processing.

[3]  M. Unser,et al.  Interpolation revisited [medical images application] , 2000, IEEE Transactions on Medical Imaging.

[4]  Riccardo Poli,et al.  Particle swarm optimization , 1995, Swarm Intelligence.

[5]  Ching-Han Chen,et al.  Adaptive edge enhancement based on anisotropic image interpolation , 2010, 2010 8th World Congress on Intelligent Control and Automation.

[6]  Sebastiano Battiato,et al.  A locally adaptive zooming algorithm for digital images , 2002, Image Vis. Comput..

[7]  A. R. Rao,et al.  A Taxonomy for Texture Description and Identification , 1990, Springer Series in Perception Engineering.

[8]  R. Keys Cubic convolution interpolation for digital image processing , 1981 .

[9]  Dao-Qing Dai,et al.  Polynomial preserving algorithm for digital image interpolation , 1998, Signal Process..

[10]  James Kennedy,et al.  The particle swarm: social adaptation of knowledge , 1997, Proceedings of 1997 IEEE International Conference on Evolutionary Computation (ICEC '97).

[11]  Stéphane Mallat,et al.  Super-Resolution With Sparse Mixing Estimators , 2010, IEEE Transactions on Image Processing.

[12]  Peter D. Burns,et al.  Slanted-Edge MTF for Digital Camera and Scanner Analysis , 2000, PICS.

[13]  Pep Mulet,et al.  Adaptive interpolation of images , 2003, Signal Process..

[14]  M. Unser,et al.  Interpolation Revisited , 2000, IEEE Trans. Medical Imaging.

[15]  Seongjai Kim,et al.  Curvature Interpolation Method for Image Zooming , 2011, IEEE Transactions on Image Processing.

[16]  T. Lehmann,et al.  Addendum: B-spline interpolation in medical image processing , 2001, IEEE Transactions on Medical Imaging.

[17]  Sebastiano Battiato,et al.  Smart interpolation by anisotropic diffusion , 2003, 12th International Conference on Image Analysis and Processing, 2003.Proceedings..

[18]  Martin T. Hagan,et al.  Neural network design , 1995 .

[19]  Thomas Martin Deserno,et al.  Survey: interpolation methods in medical image processing , 1999, IEEE Transactions on Medical Imaging.

[20]  Xiangjun Zhang,et al.  Image Interpolation by Adaptive 2-D Autoregressive Modeling and Soft-Decision Estimation , 2008, IEEE Transactions on Image Processing.