Title :
Reducing Artifacts in JPEG Decompression Via a Learned Dictionary
Author :
Huibin Chang ; Ng, Michael K. ; Tieyong Zeng
Author_Institution :
Sch. of Math. Sci., Tianjin Normal Univ., Tianjin, China
Abstract :
The JPEG compression method is among the most successful compression schemes since it readily provides good compressed results at a rather high compression ratio. However, the decompressed result of the standard JPEG decompression scheme usually contains some visible artifacts, such as blocking artifacts and Gibbs artifacts (ringing), especially when the compression ratio is rather high. In this paper, a novel artifact reducing approach for the JPEG decompression is proposed via sparse and redundant representations over a learned dictionary. Indeed, an effective two-step algorithm is developed. The first step involves dictionary learning and the second step involves the total variation regularization for decompressed images. Numerical experiments are performed to demonstrate that the proposed method outperforms the total variation and weighted total variation decompression methods in the measure of peak of signal to noise ratio, and structural similarity.
Keywords :
data compression; dictionaries; image coding; learning (artificial intelligence); Gibbs artifacts; JPEG decompression; artifact reduction; blocking artifacts; compression ratio; dictionary learning; redundant representation; sparse representation; total variation regularization; weighted total variation decompression; Dictionaries; Educational institutions; Image coding; Image restoration; Signal processing algorithms; Transform coding; Vectors; JPEG; decompression; learned dictionary; primal-dual algorithm; total variation;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2290508