ST-GREED: Space-Time Generalized Entropic Differences for Frame Rate
Dependent Video Quality Prediction
- URL: http://arxiv.org/abs/2010.13715v2
- Date: Mon, 27 Sep 2021 03:12:23 GMT
- Title: ST-GREED: Space-Time Generalized Entropic Differences for Frame Rate
Dependent Video Quality Prediction
- Authors: Pavan C. Madhusudana, Neil Birkbeck, Yilin Wang, Balu Adsumilli and
Alan C. Bovik
- Abstract summary: We study how perceptual quality is affected by frame rate, and how frame rate and compression combine to affect perceived quality.
We devise an objective VQA model called Space-Time GeneRalized Entropic Difference (GREED) which analyzes the statistics of spatial and temporal band-pass video coefficients.
GREED achieves state-of-the-art performance on the LIVE-YT-HFR Database when compared with existing VQA models.
- Score: 63.749184706461826
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider the problem of conducting frame rate dependent video quality
assessment (VQA) on videos of diverse frame rates, including high frame rate
(HFR) videos. More generally, we study how perceptual quality is affected by
frame rate, and how frame rate and compression combine to affect perceived
quality. We devise an objective VQA model called Space-Time GeneRalized
Entropic Difference (GREED) which analyzes the statistics of spatial and
temporal band-pass video coefficients. A generalized Gaussian distribution
(GGD) is used to model band-pass responses, while entropy variations between
reference and distorted videos under the GGD model are used to capture video
quality variations arising from frame rate changes. The entropic differences
are calculated across multiple temporal and spatial subbands, and merged using
a learned regressor. We show through extensive experiments that GREED achieves
state-of-the-art performance on the LIVE-YT-HFR Database when compared with
existing VQA models. The features used in GREED are highly generalizable and
obtain competitive performance even on standard, non-HFR VQA databases. The
implementation of GREED has been made available online:
https://github.com/pavancm/GREED
Related papers
- DisCoVQA: Temporal Distortion-Content Transformers for Video Quality
Assessment [56.42140467085586]
Some temporal variations are causing temporal distortions and lead to extra quality degradations.
Human visual system often has different attention to frames with different contents.
We propose a novel and effective transformer-based VQA method to tackle these two issues.
arXiv Detail & Related papers (2022-06-20T15:31:27Z) - Making Video Quality Assessment Models Sensitive to Frame Rate
Distortions [63.749184706461826]
We consider the problem of capturing distortions arising from changes in frame rate as part of Video Quality Assessment (VQA)
We propose a simple fusion framework, whereby temporal features from GREED are combined with existing VQA models.
Our results suggest that employing efficient temporal representations can result much more robust and accurate VQA models.
arXiv Detail & Related papers (2022-05-21T04:13:57Z) - FAVER: Blind Quality Prediction of Variable Frame Rate Videos [47.951054608064126]
Video quality assessment (VQA) remains an important and challenging problem that affects many applications at the widest scales.
We propose a first-of-a-kind blind VQA model for evaluating HFR videos, which we dub the Framerate-Aware Video Evaluator w/o Reference (FAVER)
Our experiments on several HFR video quality datasets show that FAVER outperforms other blind VQA algorithms at a reasonable computational cost.
arXiv Detail & Related papers (2022-01-05T07:54:12Z) - High Frame Rate Video Quality Assessment using VMAF and Entropic
Differences [50.265638572116984]
The popularity of streaming videos with live, high-action content has led to an increased interest in High Frame Rate (HFR) videos.
In this work we address the problem of frame rate dependent Video Quality Assessment (VQA) when the videos to be compared have different frame rate and compression factor.
We show through various experiments that the proposed fusion framework results in more efficient features for predicting frame rate dependent video quality.
arXiv Detail & Related papers (2021-09-27T04:08:12Z) - Capturing Video Frame Rate Variations via Entropic Differencing [63.749184706461826]
We propose a novel statistical entropic differencing method based on a Generalized Gaussian Distribution model.
Our proposed model correlates very well with subjective scores in the recently proposed LIVE-YT-HFR database.
arXiv Detail & Related papers (2020-06-19T22:16:52Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.