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Dingquan Li; Tingting Jiang; Ming Jiang

Abstract
Quality assessment of in-the-wild videos is a challenging problem because of the absence of reference videos and shooting distortions. Knowledge of the human visual system can help establish methods for objective quality assessment of in-the-wild videos. In this work, we show two eminent effects of the human visual system, namely, content-dependency and temporal-memory effects, could be used for this purpose. We propose an objective no-reference video quality assessment method by integrating both effects into a deep neural network. For content-dependency, we extract features from a pre-trained image classification neural network for its inherent content-aware property. For temporal-memory effects, long-term dependencies, especially the temporal hysteresis, are integrated into the network with a gated recurrent unit and a subjectively-inspired temporal pooling layer. To validate the performance of our method, experiments are conducted on three publicly available in-the-wild video quality assessment databases: KoNViD-1k, CVD2014, and LIVE-Qualcomm, respectively. Experimental results demonstrate that our proposed method outperforms five state-of-the-art methods by a large margin, specifically, 12.39%, 15.71%, 15.45%, and 18.09% overall performance improvements over the second-best method VBLIINDS, in terms of SROCC, KROCC, PLCC and RMSE, respectively. Moreover, the ablation study verifies the crucial role of both the content-aware features and the modeling of temporal-memory effects. The PyTorch implementation of our method is released at https://github.com/lidq92/VSFA.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-quality-assessment-on-konvid-1k | VSFA | PLCC: 0.7754 |
| video-quality-assessment-on-live-vqc | VSFA | PLCC: 0.7426 |
| video-quality-assessment-on-msu-sr-qa-dataset | VSFA | KLCC: 0.43634 PLCC: 0.54407 SROCC: 0.53652 Type: NR |
| video-quality-assessment-on-msu-video-quality | VSFA | KLCC: 0.7483 PLCC: 0.9180 SRCC: 0.9049 Type: NR |
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