基于分类基元熵的缩减参考立体图像质量评估

Zhaolin Wan, Feng Qi, Yutao Liu, Debin Zhao
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引用次数: 8

摘要

立体视觉是一个复杂的系统,它接收并整合来自单眼和双眼线索的感知信息。本文根据人类视觉感知的分层渐进过程,提出了一种基于分类基元熵(EoCP)和分类基元互信息(MIoCP)测量的视觉感知信息的新型还原参考立体图像质量评估方案。具体来说,每个视角图像的 EoCP 作为单眼线索进行计算,双视角图像之间的 MIoCP 作为双眼线索进行推导。最大值(MAX)机制用于确定感知信息。原始图像和扭曲图像之间的感知信息差异通过支持向量回归(SVR)用于预测立体图像质量。在 LIVE 第二阶段非对称数据库上的实验结果验证了所提出的指标与主观评分的一致性显著提高,并优于最先进的立体图像质量评估方法。
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 stereoscopic image quality assessment based on entropy of classified primitives
Stereoscopic vision is a complex system which receives and integrates perceptual information from both monocular and binocular cues. In this paper, a novel reduced-reference stereoscopic image quality assessment scheme is proposed, based on the visual perceptual information measured by entropy of classified primitives (EoCP) and mutual information of classified primitives (MIoCP), named as DCprimary, sketch and texture primitives respectively, which is in accordance with the hierarchical progressive process of human visual perception. Specifically, EoCP of each-view image are calculated as monocular cue, and MIoCP between two-view images is derived as binocular cue. The Maximum (MAX) mechanism is applied to determine the perceptual information. The perceptual information differences between the original and distorted images are used to predict the stereoscopic image quality by support vector regression (SVR). Experimental results on LIVE phase II asymmetric database validate the proposed metric achieves significantly higher consistency with subjective ratings and outperforms state-of-the-art stereoscopic image quality assessment methods.
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