Abstract
In this paper, we propose a new no-reference image quality assessment for JPEG compressed images. In contrast to the most existing approaches, the proposed method considers the compression processes for assessing the blocking effects in the JPEG compressed images. These images have blocking artifacts in high compression ratio. The quantization of the discrete cosine transform (DCT) coefficients is the main issue in JPEG algorithm to trade-off between image quality and compression ratio. When the compression ratio increases, DCT coefficients will be further decreased via quantization. The coarse quantization causes blocking effect in the compressed image. We propose to use the DCT coefficient values to score image quality in terms of blocking artifacts. An image may have uniform and non-uniform blocks, which are respectively associated with the low and high frequency information. Once an image is compressed using JPEG, inherent non-uniform blocks may become uniform due to quantization, whilst inherent uniform blocks stay uniform. In the proposed method for assessing the quality of an image, firstly, inherent non-uniform blocks are distinguished from inherent uniform blocks by using the sharpness map. If the DCT coefficients of the inherent non-uniform blocks are not significant, it indicates that the original block was quantized. Hence, the DCT coefficients of the inherent non-uniform blocks are used to assess the image quality. Experimental results on various image databases represent that the proposed blockiness metric is well correlated with the subjective metric and outperforms the existing metrics.
Similar content being viewed by others
Notes
Mean Opinion Score
Differential Mean Opinion Score
References
Bailey, D., Carli, M., Farias, M., Mitra, S. (2001) Quality assessment for block-based compressed images and videos with regard to blockiness artifacts. Tyrrhenian international workshop digital communication, pp 237–242
Bovik AC, Liu SZ (2001) DCT domain blind measurement of blocking artifacts in DCT-coded images. IEEE international conference on acoustics speech and signal processing, pp 1725–1728
Chen Ch, Bloom JA (2010a) Image blockiness evaluation based on Sobel operator. Pacific-rim conference advances in multimedia information processing, pp 112–123
Chen Ch, Bloom JA (2010b) A blind reference-free blockiness measure. Advances in multimedia information processing, pp 112–123
Debing L, Zhibo C, Huadong M, Feng X, Xiaodong G (2009) No reference block based blur detection. International workshop QoMEx, pp 75–80
Ferzli R, Karam LJ (2009) A no-reference objective image sharpness metric based on the notion of just noticeable blur (JNB). IEEE Trans Image Process 18(4):717–728
Golestaneh SA, Chandler DM (2014) No-reference quality assessment of JPEG images via a quality relevance map. IEEE Signal Process Lett 21(2):155–158
Hassen R, Wang Z, Salama M (2010) No-reference image sharpness assessment based on local phase coherence measurement. IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), pp 2434–2437
Joshi P, Prakash S (2014) Image quality assessment based on noise detection. IEEE International Conference on Signal Processing and Integrated Networks (SPIN), pp 755–759
Jridi M, Ouerhani Y, Alfalou A (2013) Low complexity DCT engine for image and video compression. International society for optics and photonics, pp 1–9
Khosravi, M. H., Hassanpour, H. (2016) Model-based full reference image blurriness assessment. Multimedia tools and applications, pp 1–15
Larson C, Chandler DM (2009) Categorical Image Quality (CSIQ) Database [Online]. Available: http://vision.okstate.edu/csiq
Liu HT, Heynderickx I (2009) A perceptually relevant no-reference blockiness metric based on local image characteristics. EURASIP Journal on Advances in Signal Processing 2009:1–14
Liu H, Klomp N, Heynderickx I (2010) A no-reference metric for perceived ringing artifacts in images. IEEE Trans Circuits Syst Video Technol 20(4):529–539
Manap RA, Shao L (2015) Non-distortion-specific no-reference image quality assessment: a survey. Inf Sci 301:141–160
Marziliano P, Dufaux F, Winkler S, Ebrahimi T, Sa G (2002) A no-reference perceptual blur metric. IEEE International Conference on Image Processing, pp 57–60
Mittal A, Soundararajan R, Bovik AC (2013) Making a completely blind image quality analyzer. IEEE Signal Process Lett 20:209–212
Narvekar ND, Karam LJ (2011) A no-reference image blur metric based on the cumulative probability of blur detection (CPBD). IEEE Trans Image Process 20(9):2678–2683
Ninassi A, Le Callet P, Autrusseau F (2005) Subjective Quality Assessment IVC Database [Online]. Available: http://www2.irccyn.ec-nantes.fr/ivcdb
Pan F, Lin X, Rahardja S, Ong EP, Lin WS (2007) Using edge direction information for measuring blocking artifacts of images. Multidim Syst Sign Process 18(4):297–308
Park CS, Kim JH, Ko SJ (2007) Fast blind measurement of blocking artifacts in both pixel and DCT domains. J Math Imaging Vision 28(3):279–284
Perra C, Massidda F, Giusto DD (2005) Image blockiness evaluation based on Sobel operator. IEEE international conference on Image Processing, pp 389–392
Saad M, Bovik AC, Charrier C (2012) Blind image quality assessment: a natural scene statistics approach in the DCT domain. IEEE Trans Image Process 21(8):3339–3352
Shaked D, Tastl I (2005) Sharpness measure: towards automatic image enhancement. IEEE International Conference on Image Processing, pp 937–940
Sheikh HR, Seshadrinathan K, Moorthy AK, Wang Z, Bovik AC, Cormack LK (2004) Image and Video Quality Assessment Research at LIVE [Online]. Available: http://live.ece.utexas.edu/research/quality
Sheikh HR, Bovik AC, Cormack L (2005) No-reference quality assessment using natural scene statistics: JPEG 2000. IEEE Trans Image Process 14(11):1918–1927
Sheikh HR, Sabir MF, Bovik AC (2006) A statistical evaluation of recent full reference image quality assessment algorithms. IEEE Trans Image Process 15(11):3440–3451
Singha J, Singhb S, Singhc D, Uddin M (2011) A signal adaptive filter for blocking effect reduction of JPEG compressed images. Int J Electron Commun 65:827–839
Vu CT, Phan TD, Chandler DM (2012) S3: a spectral and spatial measure of local perceived sharpness in natural images. IEEE Trans Image Process 21(3):934–945
Wu Q, Li H, Meng F, Ngan KN, Zhu S (2015) No-reference image quality assessment metric via multi-domain structural information and piecewise regression. J Vis Commun Image Represent 32:205–216
Yang J, Ding Z, Guo F, Wang H, Hughes N (2015) A novel multivariate performance optimization method based on sparse coding and hyper-predictor learning. Neural Netw 71:45–54
Yang J, Wang Y, Li B, Lu W, Meng Q, Lv Z, Zhao D, Gao Z (2016) Quality assessment metric of stereo images considering cyclopean integration and visual saliency. Inf Sci 373:251–268
Zhai G, Kaupy A, Wang J, Yang X (2013) A Dual-Model Approach to Blind Quality Assessment of Noisy Images. Picture Coding Symposium (PCS), pp 29–32
Zhang H, Zhou Y, Tian X (2008) A weighted Sobel operator-based no-reference blockiness metric. IEEE workshop on Computational Intelligence and Industrial Application, pp 1007–1011
Zhang Y, Salari E, Zhang S (2013) Reducing blocking artifacts in JPEG-compressed images using an adaptive neural network-based algorithm. Neural Comput & Applic 22:3–10
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Asadi Amiri, S., Hassanpour, H. & Marouzi, O.R. No-reference image quality assessment based on localized discrete cosine transform for JPEG compressed images. Multimed Tools Appl 77, 787–803 (2018). https://doi.org/10.1007/s11042-016-4246-9
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11042-016-4246-9