Title :
On Rate Distortion Optimization Using SSIM
Author :
Chuohao Yeo ; Hui Li Tan ; Yih Han Tan
Author_Institution :
Signal Process. Dept., Inst. for Infocomm Res., Singapore, Singapore
Abstract :
In this paper, we present a method for performing rate-distortion optimization (RDO) using a perceptual visual quality metric, the structural similarity index (SSIM), as the target of optimization. Rate-distortion optimization is widely used in modern video codecs to make various encoder decisions to optimize the rate-distortion tradeoff. Typically, the distortion measure used is either sum-of-square error or sum-of-absolute distance, both of which are convenient when used in the RDO framework but not always reflective of a perceptual visual quality. We show that SSIM can be used as the distortion metric in the RDO framework in a simple, yet effective, manner by scaling the Lagrange multiplier used in RDO based on the local variance in that region. The experimental results on the H.264/AVC reference software show that compared to traditional RDO approaches, for the same SSIM score, the proposed approach can achieve an average rate reduction of about 9% and 14% for random access and low-delay encoding configurations. At the same time, there is no significant change in the encoding runtime.
Keywords :
adaptive codes; error statistics; optimisation; random processes; rate distortion theory; video codecs; video coding; AVC; H.264; Lagrange multiplier scaling; RDO; SSIM; delay encoding configuration; distortion measure; distortion metric; modern video codecs; perceptual visual quality metric; random access; rate distortion optimization; structural similarity index; sum-of-absolute distance; sum-of-square error; Computational modeling; Encoding; Measurement; Optimization; Quantization; Video coding; Visualization; Perceptual-based coding; rate-distortion optimization (RDO); structural similarity index (SSIM); video coding;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2013.2240918