Book Chapter10.1007/978-3-319-32192-9_9
Local Adaptive Image Processing
Rumen P. Mironov
- 01 Jan 2016
- pp 295-330
4
TL;DR: The given experimental results from the simulation in MATLAB environment for each of the developed algorithms, suggest that the effective use of local information contributes to minimize the processing error.
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Abstract: Three methods for two-dimensional local adaptive image processing are presented in this chapter. In the first one, the adaptation is based on the local information from the four neighborhood pixels of the processed image and the interpolation type is changed to zero or bilinear. An analysis of local characteristics of images in small areas is presented from which the optimal selection of thresholds for dividing into homogeneous and contour blocks is made and the interpolation type is changed adaptively. In the second one, the adaptive image halftoning is based on the generalized two-dimensional LMS error-diffusion filter for image quantization. The thresholds for comparing of input image levels are calculated from the gray values dividing the normalized histogram of the input halftone image into equal parts. The third one—the adaptive line prediction is based on two-dimensional LMS adaptation of coefficients of the linear prediction filter for image coding. An analysis of properties of 2D LMS filters in different directions was made. As a result of the performed mathematical description in the presented methods, three algorithms for local adaptive image processing was developed. The principal block schemes of the developed algorithms are presented. An evaluation of the quality of the processed images was made on the base of the calculated PSNR, SNR, MSE and the subjective observation. The given experimental results from the simulation in MATLAB environment for each of the developed algorithms, suggest that the effective use of local information contributes to minimize the processing error. The methods are extremely suitable for different types of images (for example: fingerprints, contour images, cartoons, medical signals, etc.). The developed algorithms have low computational complexity and are suitable for real-time applications.
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Citations
New Approaches in Intelligent Image Analysis
Roumen Kountchev,Kazumi Nakamatsu +1 more
- 01 Jan 2016
Local Adaptive LMS Filtration of Multidimensional Images
Rumen P. Mironov,Ivo R. Draganov +1 more
- 16 Jun 2021
TL;DR: In this article, a new method for local adaptive three-dimensional filtration of multidimensional halftone images is presented based on the local information from the neighbourhood pixels of processed 3D image using generalized 3D LMS filter.
1
Multidimensional Graphic Objects Filtration Using HoSVD Tensor Decomposition
Rumen P. Mironov,Ivo R. Draganov +1 more
- 01 Jan 2021
TL;DR: In this paper, a new approach for multidimensional graphic objects filtration using HoSVD tensor decomposition is presented, where Gaussian noise with different variation is added and the low-frequency part of the decomposition matrices U and S is filtered.
1
Comparative Analysis of Local Adaptive LMS Image Filtration
Rumen P. Mironov,Ivo R. Draganov +1 more
TL;DR: This paper compares the 2D part of a local adaptive 3D filtration method with advanced image filtration methods, using a 2D Adaptive LMS filter, and evaluates their quality through PSNR calculations and subjective visual assessment on noised halftone images.
1
References
Cubic convolution interpolation for digital image processing
TL;DR: It can be shown that the order of accuracy of the cubic convolution method is between that of linear interpolation and that of cubic splines.
New edge-directed interpolation
Xin Li,Michael T. Orchard +1 more
TL;DR: Simulation results demonstrate that the new interpolation algorithm substantially improves the subjective quality of the interpolated images over conventional linear interpolation.
2.2K
Image Interpolation by Adaptive 2-D Autoregressive Modeling and Soft-Decision Estimation
Xiangjun Zhang,Xiaolin Wu +1 more
TL;DR: A soft-decision interpolation technique that estimates missing pixels in groups rather than one at a time, which preserves spatial coherence of interpolated images better than the existing methods and produces the best results so far over a wide range of scenes in both PSNR measure and subjective visual quality.
652
Interpolation and decimation of digital signals—A tutorial review
R. Crochiere,Lawrence R. Rabiner +1 more
- 01 Mar 1981
TL;DR: This paper presents a tutorial overview of multirate digital signal processing as applied to systems for decimation and interpolation and discusses a theoretical model for such systems (based on the sampling theorem), and shows how various structures can be derived to provide efficient implementations of these systems.
614
Edge-directed interpolation
Jan P. Allebach,Ping Wah Wong +1 more
- 16 Sep 1996
TL;DR: A new method for digitally interpolating images to higher resolution based on bilinear interpolation modified to prevent interpolation across edges, as determined from the estimated high resolution edge map is presented.
495