We investigate a model for image/video quality assessment based on building a set of codevectors representing in a sense some basic properties of images, similar to well-known CORNIA model. We analyze the codebook building method and propose some modifications for it. Also the algorithm is investigated from the point of inference time reduction. Both natural and synthetic images are used for building codebooks and some analysis of synthetic images used for codebooks is provided. It is demonstrated the results on quality assessment may be improves with the use if synthetic images for codebook construction. We also demonstrate regimes of the algorithm in which real time execution on CPU is possible for sufficiently high correlations with mean opinion score (MOS). Various pooling strategies are considered as well as the problem of metric sensitivity to bitrate.
翻译:我们调查一个图像/视频质量评估模型,其依据是建立一组在某种意义上代表图像某些基本特性的编码器,类似于众所周知的CORNIA模型;我们分析代码手册的构建方法,并提出一些修改建议;还从推论时间减少的角度对算法进行调查;天然和合成图像用于建筑代码器,并提供了用于代码器的合成图像分析;事实证明,如果合成图像用于代码器的构建,质量评估的结果可能会随着合成图像的使用而得到改善;我们还展示了算法制度,在算法中,实时执行CPU可以与中度意见得分(MOS)发生足够高的关联;考虑各种集合策略以及比特率的计量灵敏度问题。