With the increase in multimedia content, the type of distortions associated with multimedia is also increasing. This problem of image quality assessment is expanded well in the PIPAL dataset, which is still an open problem to solve for researchers. Although, recently proposed transformers networks have already been used in the literature for image quality assessment. At the same time, we notice that multi-scale feature extraction has proven to be a promising approach for image quality assessment. However, the way transformer networks are used for image quality assessment until now lacks these properties of multi-scale feature extraction. We utilized this fact in our approach and proposed a new architecture by integrating these two promising quality assessment techniques of images. Our experimentation on various datasets, including the PIPAL dataset, demonstrates that the proposed integration technique outperforms existing algorithms. The source code of the proposed algorithm is available online: https://github.com/KomalPal9610/IQA
翻译:随着多媒体内容的增加,与多媒体有关的扭曲类型也在增加。图像质量评估问题在PIPAL数据集中得到了很好地扩大,这对研究人员来说仍然是一个尚未解决的问题。虽然最近提议的变压器网络已经在文献中用于图像质量评估。与此同时,我们注意到,多尺度地物提取已证明是图像质量评估的一个很有希望的方法。然而,变压器网络用于图像质量评估的方式直到现在还缺乏这些多尺度地物提取的特性。我们在方法中使用了这一事实,并提出了一个新的结构,将两种有希望的图像质量评估技术结合起来。我们对各种数据集的实验,包括PIPAL数据集的实验表明,拟议的集成技术超越了现有的算法。提议的算法的来源代码可以在网上查到:https://github.com/KomalPal9610/IQA。