2018
DOI: 10.1109/tip.2017.2781420
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NIQSV+: A No-Reference Synthesized View Quality Assessment Metric

Abstract: Benefiting from multi-view video plus depth and depth-image-based-rendering technologies, only limited views of a real 3-D scene need to be captured, compressed, and transmitted. However, the quality assessment of synthesized views is very challenging, since some new types of distortions, which are inherently different from the texture coding errors, are inevitably produced by view synthesis and depth map compression, and the corresponding original views (reference views) are usually not available. Thus the fu… Show more

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Cited by 82 publications
(47 citation statements)
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“…They exploit simple opening and closing operations to remove the synthesis distortions, and then the quality is obtained through the comparison between the synthesized image and the processed synthesized image. • NIQSV+: Improved NIQSV proposed by Tian et al in [66].…”
Section: A Objective Metricsmentioning
confidence: 99%
“…They exploit simple opening and closing operations to remove the synthesis distortions, and then the quality is obtained through the comparison between the synthesized image and the processed synthesized image. • NIQSV+: Improved NIQSV proposed by Tian et al in [66].…”
Section: A Objective Metricsmentioning
confidence: 99%
“…Current blind synthesized image quality metrics still follow the traditional way, but paying extra attention on geometric distortions. For instance, Tian [14] assumed that holes regions appear differently before and after morphological operations. The distortion degrees can thus be estimated by extracting and pooling the differential map features.…”
Section: Related Workmentioning
confidence: 99%
“…We benchmarked four NR-IQA metrics (BRISQUE [8], NIQE [9], Kang [10], and MFIQA [13]) designed for traditional 2D image, and four DIBR-related metrics (3DSwiM [21] and SDRD [22] as FR-IQAs, NIQSV+ [14] and APT [15] as NR-IQAs). For the CNN-based metrics, we adopted the same training and testing on our DIBR image dataset.…”
Section: Benchmarkmentioning
confidence: 99%
“…In [14], NIQSV was proposed by hypothesizing that high-quality images are consist of flat areas separated by edges. It is then extended to NIQSV+ [15] by considering the existence of the disoccluded regions. Recently, a novel no reference quality metric for synthesized images namely APT was proposed in [16], where the auto-regression (AR) based local image description is employed.…”
Section: Related Workmentioning
confidence: 99%
“…The overall performance results are shown in [7] 0.6864 0.4842 0.6125 MP-PSNRr [10] 0.6954 0.4784 0.6606 MW-PSNRr [10] 0.6637 0.4921 0.6293 CT-IQM [11] 0.6809 0.6626 0.4877 BF-M [1] 0.6980 0.5885 0.4768 EM-IQM [12] 0.7430 0.6726 0.4455 ST-IQM [22] 0.8217 0.7710 0.3929 LoGs [13] 0.8256 0.7812 0.3601 Proposed 0.9023 0.8448 0.2870 NO Reference Metric (NR) NIQSV [14] 0.6346 0.5146 0.6167 NIQSV+ [15] 0.7114 0.4679 0.6668 APT [16] 0.7307 0.7140 0.4622 CSC-NRM [25] 0.8302 0.7827 0.3233…”
Section: Overall Performancementioning
confidence: 99%