Title :
Refining image compression with weighted finite automata
Author_Institution :
Lehrstuhl fur Inf., Wurzburg Univ., Germany
Abstract :
Weighted finite automata (WFA) generalize finite automata by attaching real numbers as weights to states and transitions. As shown by Culik and Kari (1994, 1995) WFA provide a powerful tool for image generation and compression. The inference algorithm for WFA subdivides an image into a set of nonoverlapping range images and then separately approximates each one with a linear combination of the domain images. In the current paper we introduce an improved definition for WFA that increases the approximation quality significantly, clearly outperforming the JPEG image compression standard. This is achieved by the bintree partitioning of the image and by appending not only two adjacent range images but also every single range image to the pool of domain images. Moreover, we present a new lossless entropy coding module that achieves efficient and fast storing and retrieving of the WFA coefficients
Keywords :
data compression; entropy codes; finite automata; image coding; JPEG image compression standard; WFA coefficients; bintree partitioning; domain images; image generation; inference algorithm; lossless entropy coding module; nonoverlapping range images; refining image compression; states; transitions; weighted finite automata; Automata; Code standards; Codecs; Entropy coding; Image coding; Image generation; Image retrieval; Inference algorithms; Joining processes; Transform coding;
Conference_Titel :
Data Compression Conference, 1996. DCC '96. Proceedings
Conference_Location :
Snowbird, UT
Print_ISBN :
0-8186-7358-3
DOI :
10.1109/DCC.1996.488341