Fluid Data Compression and ROI Detection Using Run Length Method
Autor: | Chongke Bi, Haiyuan Wu, Shota Ishikawa, Qian Chen, Kenji Ono, Hirokazu Taki |
---|---|
Rok vydání: | 2014 |
Předmět: |
Run Length
Lossless compression fluid data parallel processing Computer science Real-time computing Data compression ratio lossless Data set Adaptive coding Region of interest Encoding Run-length encoding General Earth and Planetary Sciences region of interest Algorithm General Environmental Science Data compression |
Zdroj: | KES |
ISSN: | 1877-0509 |
DOI: | 10.1016/j.procs.2014.08.228 |
Popis: | It is difficult to carry out visualization of the large-scale time-varying data directly, even with the supercomputers. Data compression and ROI (Region of Interest) detection are often used to improve efficiency of the visualization of numerical data. It is well known that the Run Length encoding is a good technique to compress the data where the same sequence appeared repeatedly, such as an image with little change, or a set of smooth fluid data. Another advantage of Run Length encoding is that it can be applied to every dimension of data separately. Therefore, the Run Length method can be implemented easily as a parallel processing algorithm. We proposed two different Run Length based methods. When using the Run Length method to compress a data set, its size may increase after the compression if the data does not contain many repeated parts. We only apply the compression for the case that the data can be compressed effectively. By checking the compression ratio, we can detect ROI. The effectiveness and efficiency of the proposed methods are demonstrated through comparing with several existing compression methods using different sets of fluid data. |
Databáze: | OpenAIRE |
Externí odkaz: |