Objective object segmentation visual quality evaluation based on pixel-level and region-level characteristics

Ran Shi, Jian Xiong, T. Qiao
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引用次数: 1

Abstract

Objective object segmentation visual quality evaluation is an emergent member of the visual quality assessment family. It aims at developing an objective measure instead of a subjective survey to evaluate the object segmentation quality in agreement with human visual perception. It is an important benchmark to assess and compare performances of object segmentation methods in terms of the visual quality. In spite of its essential role, it still lacks of sufficient studying compared with other visual quality evaluation researches. In this paper, we propose a novel full-reference objective measure including a pixel-level sub-measure and a region-level sub-measure. For the pixel-level sub-measure, it assigns proper weights to not only false positive pixels and false negative pixels but also true positive pixels according to their certainty degrees. For the region-level sub-measure, it considers location distribution of the false negative errors and correlations among neighboring pixels. Thus, by combining these two sub-measures, our measure can evaluate similarity of area, shape and object completeness between one segmentation result and its ground truth in terms of human visual perception. In order to evaluate the performance of our proposed measure, we tested it on an object segmentation subjective visual quality assessment database. The experimental results demonstrate that our proposed measure with good robustness performs better in matching subjective assessments compared with other state-of-the-art objective measures.
基于像素级和区域级特征的目标分割视觉质量评价
客观对象分割视觉质量评价是视觉质量评价家族中的一个新兴成员。它的目的是开发一种客观的测量方法来代替主观的测量方法来评价符合人类视觉感知的物体分割质量。视觉质量是评价和比较目标分割方法性能的重要基准。尽管它具有重要的作用,但与其他视觉质量评价研究相比,它仍然缺乏足够的研究。本文提出了一种新的全参考客观测度,包括像素级子测度和区域级子测度。在像素级子测度中,根据假阳性和假阴性像素的确定程度,对假阳性像素和真阳性像素分配适当的权重。对于区域级子测度,它考虑了假负误差的位置分布和相邻像素间的相关性。因此,通过结合这两个子度量,我们的度量可以从人类视觉感知的角度评估一个分割结果与其ground truth之间的面积、形状和对象完整性的相似性。为了评估我们提出的方法的性能,我们在一个目标分割主观视觉质量评估数据库上进行了测试。实验结果表明,与其他最先进的客观度量相比,我们提出的度量具有良好的鲁棒性,可以更好地匹配主观评价。
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