A ‘Complete Blind’ No-Reference Stereoscopic Image Quality Assessment Algorithm

Balasubramanyam Appina
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引用次数: 4

Abstract

We propose a complete blind no-reference (NR) image quality assessment algorithm for assessing the perceptual quality of natural stereoscopic (S3D) images. Towards this end, we have generated an intermediate image from the left and right views, and hypothesize that the perceived quality of the S3D view close to that cyclopean image. We perform multi-steerable decomposition on cyclopean images and we compute the naturalness image quality evaluator (NIQE) score [1] and entropy score from each subband. Finally, the primitive quality scores of steerable subbands are pooled to obtain the overall perceptual quality score of an S3D image. The proposed algorithm is evaluated on the LIVE Phase I [2] and LIVE Phase II [3] stereoscopic image datasets and demonstrates its robust performance on both the datasets and across distortions. The proposed algorithm, which is a ‘complete blind’ model (neither requires pristine S3D images nor requires training on human opinion scores), is called the Multi-Orient NIQE based 3D image quality evaluator (MO-NIQE).
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一种“完全盲”无参考立体图像质量评估算法
提出了一种完全盲无参考(NR)图像质量评估算法,用于评估自然立体(S3D)图像的感知质量。为此,我们从左视图和右视图中生成了一个中间图像,并假设S3D视图的感知质量接近该单眼图像。我们对cyclopean图像进行多导向分解,并从每个子带计算自然图像质量评估器(NIQE)分数[1]和熵分数。最后,对可控制子带的原始质量分数进行汇总,得到S3D图像的整体感知质量分数。该算法在LIVE Phase I[2]和LIVE Phase II[3]立体图像数据集上进行了评估,并证明了其在数据集和跨失真上的鲁棒性。所提出的算法是一个“完全盲”模型(既不需要原始的S3D图像,也不需要对人类意见评分进行训练),被称为基于Multi-Orient NIQE的3D图像质量评估器(MO-NIQE)。
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