质量评估任务下基于注视和显著性的视觉注意预测改进

Milind S. Gide, Lina Karam
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引用次数: 8

摘要

图像质量评估是许多可以通过使用计算显著性模型来辅助的应用程序之一。现有的视觉显著性模型尚未在质量评估环境下进行广泛的测试。此外,这些模型通常用于预测非扭曲图像的显著性。最近的研究还集中在模仿人类视觉系统,以便从显著性图中预测注视点。其中一种使用注视点的技术(GAFFE)已被发现在非扭曲图像中表现良好。这项工作通过将其与著名的显著性模型中的显著性图集成来扩展注视点框架。通过与人眼实地眼动追踪数据的比较,对注视点显著性模型的性能进行了评价。为了比较,还介绍了原始非注视点显著性预测的性能。结果表明,将显著性模型与基于注视点的注视发现框架相结合,显著提高了现有显著性模型对不同畸变类型的预测性能。研究还发现,在这种基于注视点的框架下,基于信息最大化的显著性图在不同的失真类型和水平上表现得最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved foveation- and saliency-based visual attention prediction under a quality assessment task
Image quality assessment is one application out of many that can be aided by the use of computational saliency models. Existing visual saliency models have not been extensively tested under a quality assessment context. Also, these models are typically geared towards predicting saliency in non-distorted images. Recent work has also focussed on mimicking the human visual system in order to predict fixation points from saliency maps. One such technique (GAFFE) that uses foveation has been found to perform well for non-distorted images. This work extends the foveation framework by integrating it with saliency maps from well known saliency models. The performance of the foveated saliency models is evaluated based on a comparison with human ground-truth eye-tracking data. For comparison, the performance of the original non-foveated saliency predictions is also presented. It is shown that the integration of saliency models with a foveation based fixation finding framework significantly improves the prediction performance of existing saliency models over different distortion types. It is also found that the information maximization based saliency maps perform the best consistently over different distortion types and levels under this foveation based framework.
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