基于边缘信息的减少参考视频质量度量

Farah Diyana Abdul Rahman, D. Agrafiotis, A. I. Ibrahim
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引用次数: 3

摘要

在多媒体传输中,依赖客观质量度量来准确地表示处理后的图像和视频序列的主观质量是非常重要的。简化参考度量利用发送到接收器的侧信息,以低复杂度估计接收序列的质量。本文提出了一种新的基于边缘的非相似性减少参考视频质量度量(EDIRR)。该度量是通过寻找原始序列和扭曲序列的边缘信息之间的不相似性来评估的。边缘退化可以通过这种方式检测,因为感知到的视频质量与边缘结构高度相关。本文旨在构建一种新的基于边缘不相似度的RR视频质量度量,用于视频质量评估。提出的度量来源于人类感知主要根据其底层特征(特别是边缘)来理解图像的动机,这些特征是局部结构重要性的度量。从获得的结果来看,在总体观察中,所提出的度量得分与主观得分之间存在适度的正相关,但与DMOS较低的测试序列之间存在相关性。EDIRR的LCC为0.938,在无线失真诱导序列上优于PSNR和VIFP, LCC为0.988,在H.264压缩失真方面与PSNR、SSIM和VIFP表现相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduced-reference video quality metric based on edge information
In multimedia transmission, it is important to rely on an objective quality metric which accurately represents the subjective quality of processed images and video sequences. Reduced-reference metrics make use of side-information that is transmitted to the receiver for estimating the quality of the received sequence with low complexity. In this paper, novel Edge-based Dissimilarity Reduced-Reference video quality metric (EDIRR) is proposed. The metric is evaluated by finding the dissimilarity between the edge information of original and distorted sequences. The edge degradation can be detected in this manner as perceived video quality is highly associated with edge structural. In this paper, the aim is to construct a novel RR video quality metric based on edge dissimilarity for video quality assessment. The proposed metric is derived from the motivation that human perception understands an image mainly according to its low-level features, specifically the edges, which are a measure of the significance of a local structure. From the results obtained, there is a moderate positive correlation between the proposed metric score with the subjective scores in the overall observation but with correlation for tested sequences with a lower DMOS. EDIRR, with LCC of 0.938, outperforms PSNR and VIFP on wireless distortion induced sequences and the proposed metric, with LCC of 0.988, performs on a par with PSNR, SSIM and VIFP for H.264 compressions distortions.
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