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Image Utility Assessment and a Relationship with Image Quality Assessment

机译:图像实用程序评估与图像质量评估的关系

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Present quality assessment (QA) algorithms aim to generate scores for natural images consistent with subjective scores for the quality assessment task. For the quality assessment task, human observers evaluate a natural image based on its perceptual resemblance to a reference. Natural images communicate useful information to humans, and this paper investigates the utility assessment task, where human observers evaluate the usefulness of a natural image as a surrogate for a reference. Current QA algorithms implicitly assess utility insofar as an image that exhibits strong perceptual resemblance to a reference is also of high utility. However, a perceived quality score is not a proxy for a perceived utility score: a decrease in perceived quality may riot affect the perceived utility. Two experiments are conducted to investigate the relationship between the quality assessment and utility assessment tasks. The results from these experiments provide evidence that any algorithm optimized to predict perceived quality scores cannot immediately predict perceived utility scores. Several QA algorithms are evaluated in terms of their ability to predict subjective scores for the quality and utility assessment tasks. Among the QA algorithms evaluated, the visual information fidelity (VIE) criterion, which is frequently reported to provide the highest correlation with perceived quality, predicted both perceived quality and utility scores reasonably. The consistent performance of VIE for both the tasks raised suspicions in light of the evidence from the psychophysical experiments. A thorough analysis of VIE revealed that it artificially emphasizes evaluations at finer image scales ( i.e., higher spatial frequencies) over those at coarser image scales (i.e., lower spatial frequencies). A modified implementation of VIF, denoted VIF*. is presented that provides statistically significant improvement over VIF for the quality assessment task and statistically worse performance for the utility assessment task. A novel utility assessment algorithm, referred to as the natural image contour evaluation (NICE), is introduced that conducts a comparison of the contours of a test image to those of a reference image across multiple image scales to score the test image. NICE demonstrates a viable departure from traditional QA algorithms that incorporate energy-based approaches and is capable of predicting perceived utility scores.
机译:目前质量评估(QA)算法旨在为质量评估任务的主观评分产生一致的自然图像的分数。对于质量评估任务,人类观察者根据其与参考的感知相似性评估自然形象。自然图像将有用的信息传达给人类,本文调查了公用事业评估任务,人类观察者评估了自然形象作为参考的代理的有用性。目前的QA算法隐含地评估了实用程序,作为展示与参考的强烈感知相似的图像也是高效用。然而,感知质量得分不是感知效用评分的代理:感知质量的减少可能会影响感知的效用。进行了两项实验,以研究质量评估与公用事业评估任务之间的关系。这些实验的结果提供了证据表明,任何优化的任何算法都无法立即预测感知的效用评分。在他们预测质量和公用事业评估任务的主观评分的能力方面评估了几种QA算法。在评估的QA算法中,经常报道的视觉信息保真度(VIE)标准提供了与感知质量的最高相关性,预测了感知的质量和公用设施。 vie对两个任务的一致表现鉴于来自心理物理实验的证据提出了怀疑。对VIE的彻底分析显示,它在较粗糙图像尺度(即,较低的空间频率下)上,它人为地强调了更精细的图像尺度(即,较高空间频率)的评估。 VIF的修改实施,表示VIF *。介绍,为高质量评估任务提供统计上显着的改进,以及对公用事业评估任务的统计上更糟糕的性能。引入了一种新颖的实用性评估算法,称为自然图像轮廓评估(漂亮),其对多个图像尺度跨越多个图像尺度的参考图像的比较进行比较,以进行计量图像。很好地展示了一种可行的偏离传统的QA算法,该算法包含基于能量的方法,并且能够预测感知的实用分数。

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