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Visual Attention in Objective Image Quality Assessment: Based on Eye-Tracking Data

机译:客观图像质量评估中的视觉注意力:基于眼动数据

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Since the human visual system (HVS) is the ultimate assessor of image quality, current research on the design of objective image quality metrics tends to include an important feature of the HVS, namely, visual attention. Different metrics for image quality prediction have been extended with a computational model of visual attention, but the resulting gain in reliability of the metrics so far was variable. To better understand the basic added value of including visual attention in the design of objective metrics, we used measured data of visual attention. To this end, we performed two eye-tracking experiments: one with a free-looking task and one with a quality assessment task. In the first experiment, 20 observers looked freely to 29 unimpaired original images, yielding us so-called natural scene saliency (NSS). In the second experiment, 20 different observers assessed the quality of distorted versions of the original images. The resulting saliency maps showed some differences with the NSS, and therefore, we applied both types of saliency to four different objective metrics predicting the quality of JPEG compressed images. For both types of saliency the performance gain of the metrics improved, but to a larger extent when adding the NSS. As a consequence, we further integrated NSS in several state-of-the-art quality metrics, including three full-reference metrics and two no-reference metrics, and evaluated their prediction performance for a larger set of distortions. By doing so, we evaluated whether and to what extent the addition of NSS is beneficial to objective quality prediction in general terms. In addition, we address some practical issues in the design of an attention-based metric. The eye-tracking data are made available to the research community .
机译:由于人类视觉系统(HVS)是图像质量的最终评估者,因此目前有关客观图像质量指标设计的研究趋向于包括HVS的重要特征,即视觉注意力。视觉注意力的计算模型扩展了用于图像质量预测的不同度量,但是到目前为止,度量的可靠性获得的结果是可变的。为了更好地理解在目标指标的设计中包括视觉注意的基本附加值,我们使用了视觉注意的测量数据。为此,我们进行了两项眼动跟踪实验:一项承担自由任务,一项承担质量评估任务。在第一个实验中,有20位观察者自由观看了29张未受损的原始图像,从而产生了我们所谓的自然场景显着性(NSS)。在第二个实验中,有20位不同的观察者评估了原始图像失真版本的质量。生成的显着性图与NSS有一些差异,因此,我们将两种显着性应用于预测JPEG压缩图像质量的四个不同的客观指标。对于这两种显着性,度量的性能提升均得到了改善,但是在添加NSS时得到了更大程度的提高。因此,我们将NSS进一步集成到几个最新的质量指标中,包括三个全参考指标和两个非参考指标,并评估了它们对较大失真集的预测性能。通过这样做,我们总体上评估了添加NSS是否对客观质量预测有利以及在何种程度上有利于客观质量预测。另外,我们在设计基于注意力的度量标准时会解决一些实际问题。眼动数据可提供给研究社区

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