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Exploring Opinion-unaware Video Quality Assessment with Semantic Affinity Criterion

Authors :
Wu, Haoning
Liao, Liang
Hou, Jingwen
Chen, Chaofeng
Zhang, Erli
Wang, Annan
Sun, Wenxiu
Yan, Qiong
Lin, Weisi
Publication Year :
2023

Abstract

Recent learning-based video quality assessment (VQA) algorithms are expensive to implement due to the cost of data collection of human quality opinions, and are less robust across various scenarios due to the biases of these opinions. This motivates our exploration on opinion-unaware (a.k.a zero-shot) VQA approaches. Existing approaches only considers low-level naturalness in spatial or temporal domain, without considering impacts from high-level semantics. In this work, we introduce an explicit semantic affinity index for opinion-unaware VQA using text-prompts in the contrastive language-image pre-training (CLIP) model. We also aggregate it with different traditional low-level naturalness indexes through gaussian normalization and sigmoid rescaling strategies. Composed of aggregated semantic and technical metrics, the proposed Blind Unified Opinion-Unaware Video Quality Index via Semantic and Technical Metric Aggregation (BUONA-VISTA) outperforms existing opinion-unaware VQA methods by at least 20% improvements, and is more robust than opinion-aware approaches.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.13269
Document Type :
Working Paper