A multiple attributes image quality database for smartphone camera photo quality assessment
This addresses the gap between academic research and industrial needs for smartphone camera quality assessment, but it is incremental as it primarily introduces a new dataset.
The authors tackled the problem of evaluating smartphone camera photo quality by creating a new database (SCPQD2020) with 1800 images from 15 smartphones, and found that current objective models are unsuitable for this task, highlighting the need for better metrics aligned with human perception.
Smartphone is the superstar product in digital device market and the quality of smartphone camera photos (SCPs) is becoming one of the dominant considerations when consumers purchase smartphones. How to evaluate the quality of smartphone cameras and the taken photos is urgent issue to be solved. To bridge the gap between academic research accomplishment and industrial needs, in this paper, we establish a new Smartphone Camera Photo Quality Database (SCPQD2020) including 1800 images with 120 scenes taken by 15 smartphones. Exposure, color, noise and texture which are four dominant factors influencing the quality of SCP are evaluated in the subjective study, respectively. Ten popular no-reference (NR) image quality assessment (IQA) algorithms are tested and analyzed on our database. Experimental results demonstrate that the current objective models are not suitable for SCPs, and quality metrics having high correlation with human visual perception are highly needed.