屏幕内容视频的质量评估

Hossein Motamednia, Pooryaa Cheraaqee, Azadeh Mansouri, Ahmad Mahmoudi-Aznaveh
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引用次数: 0

摘要

由于人类视觉系统的非线性建模困难,感知质量评估一直是一个具有挑战性的问题。随着多媒体信号内容的多样化,传统媒体的传统方式已经不能满足人们的需求。其中一种新兴媒体是屏幕内容图像/视频(SCINs), SCINs包含文本和计算机生成的图形,无法充分表达为自然风景设计的特征。因此,新的研究试图设计客观的质量评估指标,特别是针对屏幕内容。最近,提出了一个用于屏幕内容视频质量评估的数据集。由于屏幕内容充满了在基本方向上传播的结构,我们被激励使用小波变换的水平和垂直子带来表征这些类型的视觉内容。这些特征被纳入到一个全参考方法中,该方法在公开可用的SCV质量评估数据集上显示出有希望的结果。该方法可以通过:https://github.com/motamedNia/QASCV访问。
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Quality Assessment of Screen Content Videos
Perceptual quality assessment has always been challenging due to the difficulty in modeling the no-linear human visual system. With the diversity in the contents of multimedia signals, the conventional methods for traditional media seems no longer satisfying. One of these emerging media, is the screen content images/videos (SCINs), Containing texts and computer generated graphics, SCVs cannot be sufficiently expressed with features designed for natural sceneries. Therefore, new researches tried to devise objective quality assessment metrics, specificly for screen contents. Recently, a dataset was proposed for quality assessment of screen content videos. Since screen contents are full of structures that spread in cardinal directions, we were motivated to employ the horizontal and vertical subbands of the wavelet transform to characterize these types of visual contents. The features were incorporated in a full-reference method that showed promising results on the publicly available dataset for SCV quality assessment. The method can bo accessed via: https://github.com/motamedNia/QASCV.
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