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NOREFERENCE PERCEPTUAL QUALITY ASSESSMENT OF JPEG COMPRESSED IMAGES

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Title: NOREFERENCE PERCEPTUAL QUALITY ASSESSMENT OF JPEG COMPRESSED IMAGES


1
  • NO-REFERENCE PERCEPTUAL QUALITY ASSESSMENT OF
    JPEG COMPRESSED IMAGES
  • Z. Wang, H. R. Sheikh and A. C. Bovik Laboratory
    for Image and Video EngineeringDepartment of
    Electrical and Computer EngineeringThe
    University of Texas at Austin, Austin, Austin, TX
    78712
  • Proceedings of IEEE 2002 International Conference
    on Image Processing
  • Rochester, NY, September 22-25, 2002

2
INTRODUCTION
  • In recent years, there has been an increasing
    need to develop objective measurement techniques
    that can predict image/video quality
    automatically.
  • Such methods an have various applications
  • They can be used to monitor image/video quality
    for quality control systems.
  • They can be employed to benchmark image/video
    processing systems and algorithms.
  • They can be embedded into image/video
    processing systems to optimize algorithms and
    parameter settings.
  • The most widely used objective measures are PSNR
    and MSE.
  • However, they do not correlate well with
    perceived quality measurement.
  • Most of the objective measures require the
    original image as a reference.
  • Human observers are able to assess the quality of
    distorted images without using any reference
    image.
  • Designing an no-reference (NR) objective measure
    is a difficult task.


3
SUBJECTIVE EXPERIMENTS
  • The subjective test was conducted on 8 bits/pixel
    gray level images.
  • There are 120 test images in the database.
  • 30 of them are original images.
  • These 30 images are randomly divided into two
    groups.
  • Each group contains 15 images.
  • The rest of the images are JPEG compressed
    using Matlab.
  • The quality factors are selected randomly between
    5 and 100.
  • The resulting bits rates range from 0.2 to 1.7
    bits/pixel.
  • 53 subjects were shown the database.
  • Most of the subjects were college students.
  • The subjects were asked to assign each image a
    quality score between 1 and 10 (10 is the best,
    1 is the worst).
  • the 53 scores were averaged to obtain a MOS.


4
TWO GROUPS OF IMAGES

5
PSNR VS. MOS
Correlation coefficient 0.3267

6
JPEG COMPRESSION
  • JPEG is a block DCT-based lossy image coding.
  • JPEG works as follows
  • DCT is applied to 8x8 blocks.
  • Each block goes though quantization and entropy
    coding.
  • Both blurring and blocking artifacts may be
    created during quantization.
  • The blurring effect is mainly do to the loss of
    high frequency DCT coefficients.
  • The blocking effect occurs due to the
    discontinuity at block boundaries.
  • One effective way to examine both blurring and
    blocking effects is to transform the signal into
    the frequency domain (DFT).
  • A disadvantage of the frequency domain method
    is the involvement of the Fast Fourier Transform
    (FFT). This is expensive.
  • FFT also requires more storage.


7
POWER SPECTRUM IN THE DFT DOMAIN
The blocking effect can easily be identified by
the peaks at frequencies 1/8, 2/8, 3/8, and
4/8. The blurring effect is characterized by the
energy shift from high frequency to low frequency
bands.

Test image signal x (m,n), where m ? 1,M and
n ? 1,N. Calculate a differencing signal along
each horizontal line dh(m,n)x(m,n1)-x(m,n),
where n ?1,N-1. fm(n)dh(m,n) 1-D
horizontal signal for a fixed value of
m. Compute the power spectrum of fm(n) for
m1,,M, and average them together.
8
OBJECTIVE NR QUALITY ASSESSMENT
  • The authors attempt to design a computationally
    inexpensive and memory efficient feature
    extraction method.
  • The features are calculated horizontal and then
    vertically.
  • First, the blockiness is estimated as the average
    difference across block boundaries.
  • Second, the activity of the image signal is
    estimated.
  • The activity is measures using 2 factors
  • The first is the average absolute difference
    between in-block image samples
  • The second activity measure is the
    zero-crossing (ZC) rate.
  • We define for n ? 1N - 2


9
OBJECTIVE NR QUALITY ASSESSMENT
  • The horizontal ZC rate then can be estimated as
  • Using similar methods, we calculate the vertical
    features
  • of Bv, Av, and Zv.
  • The overall features are given as
  • There are many ways to combine the features.
  • One method that gives good prediction performance
    is


10
SCATTER PLOTS FOR GROUP I AND GROUP II IMAGES

11
SCATTER PLOT FOR BOTH GROUPS OF IMAGES

12
CONCLUSIONS
  • A novel NR perceptual quality assessment method
    for JPEG compressed images is presented.
  • Subjective evaluation was conducted to evaluate
    the quality of JPEG compressed images.
  • The features described effectively capture the
    artifacts introduced by JPEG.
  • The agreement between PSNR and MOS is not good.
  • Nonlinear curve fitting gives good agreement with
    MOS.
  • The method is computationally efficient.
  • No complicated transforms.
  • The algorithm can be implemented without string
    the entire image in memory.
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