Quad-Treea Based Sample Refinement Filter for Video Coding
2021
In-loop filter is a crucial module in video coding, which can improve both subjective and object quality of reconstructed videos. In this paper, a new sample-based classification method is first proposed using features extracted from different stages of the existing in-loop filter process. Based on this method, an adaptive three-layer Quad-tree Based Sample Refinement Filter (QSRF) algorithm is designed to further improve the coding efficiency. Experimental results show that the proposed QSRF algorithm achieves 0.39%, 0.77% and 0.70% BD-rate savings for random access, lowdelay B and lowdelay P configurations compared to AVS3 reference software, respectively. Moreover, the proposed method can also improve visual quality of reconstructed videos significantly.
- Correction
- Source
- Cite
- Save
- Machine Reading By IdeaReader
0
References
0
Citations
NaN
KQI