Qiang PengLei ZhangXiao WuQiong‐Hua Wang
Abstract Conventional end-to-end distortion models for videos measure the overall distortion based on independent estimations of the source distortion and the channel distortion. However, they are not correlating well with the perceptual characteristics where there is a strong inter-relationship among the source distortion, the channel distortion, and the video content. As most compressed videos are represented to human users, perception-based end-to-end distortion model should be developed for error-resilient video coding. In this paper, we propose a structural similarity (SSIM)-based end-to-end distortion model to optimally estimate the content-dependent perceptual distortion due to quantization, error concealment, and error propagation. Experiments show that the proposed model brings a better visual quality for H.264/AVC video coding over packet-switched networks.
Yuxia WangYuan ZhangRui LüPamela C. Cosman
Tong TangZhiyang YinJie LiHonggang WangDapeng WuRuyan Wang
Yuan ZhangQingming HuangYan LuWen Gao
Pan GaoQiang PengQiong‐Hua Wang