No-reference video quality assessment via feature learning

ICIP(2014)

引用 87|浏览56
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摘要
In this paper, we propose a novel “Opinion Free” (OF) No-Reference Video Quality Assessment (NR-VQA) algorithm based on frame-level unsupervised feature learning and hysteresis temporal pooling. The system consists of three components: feature extraction with max-min pooling, frame quality prediction and temporal pooling. Frame level features are first extracted by unsupervised feature learning and used to train a linear Support Vector Regressor (SVR) for predicting quality scores frame by frame. Frame-level quality scores are then combined by temporal pooling to obtain a single video quality score. We tested the proposed method on the LIVE video quality database and experimental results show that without training on human opinion scores the proposed method is comparable to state-of-the-art NR-VQA algorithms.
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关键词
video quality assessment,temporal pooling,svr,nr-vqa algorithm,live video quality database,no-reference video quality assessment algorithm,regression analysis,single video quality score,feature learning,hysteresis temporal pooling,no-reference,frame-level quality scores,human opinion,feature extraction,video databases,support vector regressor,frame-level unsupervised feature learning,unsupervised learning,support vector machines,frame quality prediction
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