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No-Reference video quality assessment using recurrent neural networks
Otroshi Shahreza, H ; Sharif University of Technology | 2019
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- Type of Document: Article
- DOI: 10.1109/ICSPIS48872.2019.9066015
- Publisher: Institute of Electrical and Electronics Engineers Inc , 2019
- Abstract:
- The quality assessment is a vital routine in videorelated industries such as broadcast service providers. Due to the duration and the excessive number of the video files, case by case assessment of the files by operators is no longer feasible. Therefore, a computer-based video quality assessment mechanism is the only solution. While it is common to measure the quality of a video file at the compression stage by comparing it against the raw data, at later stages no reference video is available for comparison. Therefore, a no-reference (Blind) video quality assessment (NR-VQA) technique is essential. The common NRVQA methods learn a quality metric based on a number of features extracted from video frames or series of adjacent frames. In the training stage, the features are usually required all at once and the outcome is mainly insensitive to the frame order. For instance, most methods return the same quality score if the video is played in the reverse time order. In this work, we propose an in-the-wild NR-VQA method based on recurrent neural networks (RNN), which takes the frame order into account. Indeed, the RNN is responsible to combine frame-level features by preserving their order so as to form a single video quality metric. As the RNN receives the frame-level statistical features in a sequential manner, the method is also oblivious to the frame size and video length (duration). The experiments show comparable or better performance with previous methods on KonVid-1k dataset. © 2019 IEEE
- Keywords:
- Long-Short Term Memory (LSTM) ; No-Reference Assessment ; Video Quality Assessment (VQA) ; Intelligent systems ; Service industry ; Signal processing ; Broadcast services ; No-reference video quality assessments ; Quality assessment ; Recurrent neural network (RNN) ; Sequential manners ; Statistical features ; Video quality assessment ; Video quality metric ; Recurrent neural networks
- Source: 5th Iranian Conference on Signal Processing and Intelligent Systems, ICSPIS 2019, 18 December 2019 through 19 December 2019 ; 2019 ; 9781728153506 (ISBN)
- URL: https://ieeexplore.ieee.org/document/9066015
