A video quality MOS prediction model for videoconferencing calls that takes temporal distortions into account
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Updated
Aug 30, 2024 - Python
A video quality MOS prediction model for videoconferencing calls that takes temporal distortions into account
③[ICML2024] [IQA, IAA, VQA] All-in-one Foundation Model for visual scoring. Can efficiently fine-tune to downstream datasets.
[ACMMM Oral, 2023] "Towards Explainable In-the-wild Video Quality Assessment: A Database and a Language-Prompted Approach"
[ICCV 2023, Official Code] for paper "Exploring Video Quality Assessment on User Generated Contents from Aesthetic and Technical Perspectives". Official Weights and Demos provided.
[ECCV2022, TPAMI2023] FAST-VQA, and its extended version FasterVQA.
Official Implementation of WACV 2024 Paper "HIDRO-VQA : High Dynamic Range Oracle for Video Quality Assessment"
ReLaX-VQA: Residual Fragment and Layer Stack Extraction for Enhancing Video Quality Assessment
Analysis of video quality datasets via design of minimalistic video quality models
Enhancing Blind Video Quality Assessment with Rich Quality-aware Features
The HDR-VDC dataset
[CVPRW2024, Official Code] for paper "Exploring AIGC Video Quality: A Focus on Visual Harmony, Video-Text Consistency and Domain Distribution Gap".
The code in this repository was a part of a Bachelor thesis project at KTH.
[NeurIPS'2022] "Video compression dataset and benchmark of learning-based video-quality metrics", A. Antsiferova, S. Lavrushkin, M. Smirnov, A. Gushchin, D. S. Vatolin, and D. Kulikov
[IEEE PCS'2022] "FloLPIPS: A Bespoke Video Quality Metric for Frame Interpoation", Duolikun Danier, Fan Zhang, David Bull
[IEEE TIP'2023] "BVI-VFI: A Video Quality Database for Video Frame Interpolation", Duolikun Danier, Fan Zhang, David Bull
video quality comparator base on vmaf and ffmpeg
UGC quality assessment: exploring the impact of saliency in deep feature-based quality assessment
UGC Quality Assessment: Exploring the Impact of Saliency in Deep Feature-Based Quality Assessment
This is a [forked version] for author's debugging. Please jump to https://github.com/QualityAssessment/DOVER for stable version to use.
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