scispace - formally typeset
Proceedings ArticleDOI

A novel predictor coefficient interpolation approach for lossless compression of images

Reads0
Chats0
TLDR
The proposed algorithm is generic that can be used with most of the LS based lossless compression algorithms reported in literature and gives same prediction quality as compared to when the actual prediction coefficient is used and there is around 25% to 40% reduction in computational complexity.
Abstract
This paper presents a novel and generic algorithm for reduction in computational complexity associated with the estimation of LS based predictor. Many lossless compression algorithms used predictor based on Least Squares and its variance for decorrelation of images. However, computational complexity associated with estimation of such predictor is huge. So, in order to reduce the computational complexity, we proposed to estimate a LS based predictor of order p-1 and estimates the coefficients of predictor of order p. We have reduced the predictor order form p to (p −1) that results into a saving of computational power. We have also reduced the predefined error threshold in EDP and RALP algorithm in order to negotiate the slight loss in prediction accuracy due to synthetically generated prediction coefficient. The proposed algorithm is generic that can be used with most of the LS based lossless compression algorithms reported in literature. Our proposed algorithm gives same prediction quality as compared to when we use the actual prediction coefficient and there is around 25% to 40% reduction in computational complexity.

read more

Citations
More filters
Journal ArticleDOI

Extended Multi WLS Method for Lossless Image Coding.

TL;DR: The presented cascaded method is based on the Weighted Least Square technique, with many improvements introduced, e.g., its main stage is followed by a two-step NLMS predictor ended with Context-Dependent Constant Component Removing.
References
More filters
Journal ArticleDOI

The LOCO-I lossless image compression algorithm: principles and standardization into JPEG-LS

TL;DR: LOCO-I as discussed by the authors is a low complexity projection of the universal context modeling paradigm, matching its modeling unit to a simple coding unit, which is based on a simple fixed context model, which approaches the capability of more complex universal techniques for capturing high-order dependencies.
Journal ArticleDOI

Context-based, adaptive, lossless image coding

TL;DR: The CALIC obtains higher lossless compression of continuous-tone images than other lossless image coding techniques in the literature and can afford a large number of modeling contexts without suffering from the context dilution problem of insufficient counting statistics as in the latter approach.
Journal ArticleDOI

Edge-directed prediction for lossless compression of natural images

TL;DR: This analysis shows that the superiority of the LS-based adaptation is due to its edge-directed property, which enables the predictor to adapt reasonably well from smooth regions to edge areas.
Proceedings ArticleDOI

Edge directed prediction for lossless compression of natural images

TL;DR: It is demonstrated how the RLS-based adaptation can produce predictor with support ideally aligned along an arbitrarily-oriented edge and therefore it is called "Edge Directed Prediction", which substantially outperforms former context-based prediction schemes for natural images.
Journal ArticleDOI

Least-Squares-Based Switching Structure for Lossless Image Coding

TL;DR: A switching coding scheme that will combine the advantages of both run-length and adaptive linear predictive coding, and uses a simple yet effective edge detector using only causal pixels for estimating the coding pixels in the proposed encoder.
Related Papers (5)