Image quality assessment (IQA) using high-frequency and image variance (HFIV) for colour image
View/ Open
Date
2019Author
Li Chien, Tan
Haniza, Yazid
Yen Fook, Chong
Metadata
Show full item recordAbstract
Image quality is often lost during image acquisition, transmission, and compression.
Therefore, image quality assessment (IQA) is crucial in image processing. Currently, image
quality can be measured from the frequency domain features, but it only applicable to blurred
grayscale images. Nevertheless, noise distortion is also a common problem in digital images,
and colour also affects the perception of image quality. Therefore, this paper proposes an
enhanced blur and noise specific colour image quality assessment that measures highfrequency components and image variance. The number of high-frequency components is
related to the edge and noise. In order to distinguish the distortion of the image, the image
variance estimation is included. Experiments on public databases have shown that this method
outperforms PSNR and SSIM in terms of noise and blur distortion and has low processing time
of 0.0941 s/img.
Collections
- Haniza Yazid, Dr. [19]