Analysis of Video Quality Datasets via Design of Minimalistic Video Quality Models
Wei Sun, Wen Wen, Xiongkuo Min, Long Lan, Guangtao Zhai, and Kede Ma

TL;DR
This paper introduces a minimalistic approach to analyze existing video quality datasets using simple BVQA models, revealing dataset limitations and guiding future dataset and model development.
Contribution
It pioneers a computational analysis of VQA datasets with minimalistic models, highlighting dataset biases and informing better dataset and model design practices.
Findings
Many datasets suffer from the easy dataset problem.
Some datasets can be solved by blind image quality assessment methods.
Model generalizability varies significantly across datasets.
Abstract
Blind video quality assessment (BVQA) plays an indispensable role in monitoring and improving the end-users' viewing experience in various real-world video-enabled media applications. As an experimental field, the improvements of BVQA models have been measured primarily on a few human-rated VQA datasets. Thus, it is crucial to gain a better understanding of existing VQA datasets in order to properly evaluate the current progress in BVQA. Towards this goal, we conduct a first-of-its-kind computational analysis of VQA datasets via designing minimalistic BVQA models. By minimalistic, we restrict our family of BVQA models to build only upon basic blocks: a video preprocessor (for aggressive spatiotemporal downsampling), a spatial quality analyzer, an optional temporal quality analyzer, and a quality regressor, all with the simplest possible instantiations. By comparing the quality…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Image Fusion Techniques · Visual Attention and Saliency Detection
