No-reference quality assessment for DCT-based compressed image
نویسندگان
چکیده
A blind/no-reference (NR) method is proposed in this paper for image quality assessment (IQA) of the images compressed in discrete cosine transform (DCT) domain. When an image is measured by structural similarity (SSIM), two variances, i.e. mean intensity and variance of the image, are used as features. However, the parameters of original copies are actually unavailable in NR applications; hence SSIM is not widely applicable. To extend SSIM in general cases, we apply Gaussian model to fit quantization noise in spatial domain, and directly estimate noise distribution from the compressed version. Benefit from this rearrangement, the revised SSIM does not require original image as the reference. Heavy compression always results in some zero-value DCT coefficients, which need to be compensated for more accurate parameter estimate. By studying the quantization process, a machine-learning based algorithm is proposed to estimate quantization noise taking image content into consideration. Compared with state-ofthe-art algorithms, the proposed IQA is more heuristic and efficient. With some experimental results, we verify that the proposed algorithm (provided no reference image) achieves comparable efficacy to some full reference (FR) methods (provided the reference image), such as SSIM. 2015 Elsevier Inc. All rights reserved.
منابع مشابه
No Reference Image Quality Assessment Based On Machine Learning Approach Using Discrete Cosine Transform And Wavelet Features
Conventionally, image quality assessment (IQA) algorithms represent image quality as linearity with a “reference” or “perfect” image. Obvious drawback of this method is that the many times original image may not be accessible for the QA algorithm. This paper proposes an image quality assessment of natural-scene statistic-based on DCT score prediction approach. It operates in transform domain. M...
متن کاملReduced-Reference Image Quality Assessment based on saliency region extraction
In this paper, a novel saliency theory based RR-IQA metric is introduced. As the human visual system is sensitive to the salient region, evaluating the image quality based on the salient region could increase the accuracy of the algorithm. In order to extract the salient regions, we use blob decomposition (BD) tool as a texture component descriptor. A new method for blob decomposition is propos...
متن کاملDCT Modern Statics Approach based Blind Image Quality Assessment using A Natural Scene Statistics (NSS) Model
We develop an efficient general-purpose blind/no-reference image quality assessment (IQA) algorithm using a natural scene statistics (NSS) model of discrete cosine transform (DCT) coefficients. The algorithm is computationally appealing, given the availability of platforms optimized for DCT computation. The approach relies on a simple Bayesian inference model to predict image quality scores giv...
متن کاملA No-reference Quality Assessment Algorithm for JPEG2000-compressed Images Based on Local Sharpness
In this paper, we present a no-reference quality assessment algorithm for JPEG2000-compressed images called EDIQ (EDge-based Image Quality). The algorithm works based on the assumption that the quality of JPEG2000compressed images can be evaluated by separately computing the quality of the edge/near-edge regions and the non-edge regions where no edges are present. EDIQ first separates the input...
متن کاملBlind Quality Assessment of Jpeg2000 Compressed Images Using Natural Scene Statistics
Measurement of image quality is crucial for many imageprocessing algorithms, such as acquisition, compression, restoration, enhancement and reproduction. Traditionally, researchers in image quality assessment have focused on equating image quality with similarity to a ‘reference’ or ‘perfect’ image. The field of blind, or no-reference, quality assessment, in which image quality is predicted wit...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- J. Visual Communication and Image Representation
دوره 28 شماره
صفحات -
تاریخ انتشار 2015