Note: Your custom schedule will not be saved unless you create a new account or login to an existing account.
| Paper: | IMDSP-P1.6 |
| Session: | Video Coding |
| Time: | Tuesday, May 18, 13:00 - 15:00 |
| Presentation: |
Poster |
| Topic: |
Image and Multidimensional Signal Processing: Image and Video Coding |
| Title: |
A NEW EFFICIENT SIMILARITY METRIC AND GENERIC COMPUTATION STRATEGY FOR PATTERN-BASED VERY LOW BIT-RATE VIDEO CODING |
| Authors: |
Manoranjan Paul; Monash University | | |
| | Manzur Murshed; Monash University | | |
| | Laurence Dooley; Monash University | | |
| Abstract: |
In the context of very low bit-rate video coding, pattern representations of a moving region (MR) in block-based motion estimation and compensation has become increasingly attractive. Generally, all existing pattern-matching algorithms apply a similarity metric involving elementary operations, to compute the mismatch between a MR and a particular fixed pattern in order to select the best-matching pattern from a fixed-size codebook of predefined patterns. In this paper, an efficient similarity metric together a new generic computation strategy is presented by considering only the mismatch areas of MRs. It is theoretically proven that for a specific MR in a macroblock, the new similarity metric selects exactly the same pattern as existing metrics, while the resulting computational coding efficiency is improved by between 21% and 58% compared with the H.263 low bit-rate coding standard. |
| |
| Back | |