Abstract

This paper describes an ultra high definition (UHD) video dataset named DVL2021 for the perceptual study of video quality assessment (VQA). To our knowledge, DVL2021 is the first authentically distorted 4K (3840 × 2160) UHD video quality dataset. The dataset contains 206 versatile 4K UHD video sequences, which are all collected in in-the-wild scenarios. Each sequence is captured at 50 frames per second (fps), stored in raw 10-bit 4:2:0 YUV format, and has a duration of 10 s. Following the subjective evaluation method of TV image quality granted by ITU-R BT.500-13, 32 unique participants take part in the manual annotation process, whose ages are from teenage to sixties (32.7 years old on average). DVL2021 has the following merits: (1) enormous variety of video contents, (2) captured by different types of cameras, (3) complex types and multiple levels of authentic distortion, (4) broadly distributed temporal/spatial information, and (5) a wide spectrum of mean opinion scores (MOS) distribution. Furthermore, we conduct a benchmark experiment by evaluating several mainstream VQA methods on DVL2021. The baseline results are higher than 0.75 in Spearman’s rank order correlation coefficient (SROCC) metric. Our study provides a basis for the UHD VQA problem. DVL2021 is publicly available at https://github.com/GZHU-DVL/DVL2021.

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