Sensors, Vol. 21, Pages 6429: Compressed Video Quality Index Based on Saliency-Aware Artifact Detection

Sensors, Vol. 21, Pages 6429: Compressed Video Quality Index Based on Saliency-Aware Artifact Detection Sensors doi: 10.3390/s21196429 Authors: Liqun Lin Jing Yang Zheng Wang Liping Zhou Weiling Chen Yiwen Xu Video coding technology makes the required storage and transmission bandwidth of video services decrease by reducing the bitrate of the video stream. However, the compressed video signals may involve perceivable information loss, especially when the video is overcompressed. In such cases, the viewers can observe visually annoying artifacts, namely, Perceivable Encoding Artifacts (PEAs), which degrade their perceived video quality. To monitor and measure these PEAs (including blurring, blocking, ringing and color bleeding), we propose an objective video quality metric named Saliency-Aware Artifact Measurement (SAAM) without any reference information. The SAAM metric first introduces video saliency detection to extract interested regions and further splits these regions into a finite number of image patches. For each image patch, the data-driven model is utilized to evaluate intensities of PEAs. Finally, these intensities are fused into an overall metric using Support Vector Regression (SVR). In experiment section, we compared the SAAM metric with other popular video quality metrics on four publicly available databases: LIVE, CSIQ, IVP and FERIT-RTRK. The results reveal the promising quality prediction performance of the SAAM metric, which is superior to ...
Source: Sensors - Category: Biotechnology Authors: Tags: Article Source Type: research