The SSIM Index for Image Quality Assessment - PowerPoint PPT Presentation

1 / 13
About This Presentation
Title:

The SSIM Index for Image Quality Assessment

Description:

(d) JPEG Compression. MSE=215. SSIM=0.2876. 10/9/09. 10. The SSIM Index for Image Quality Assessment ... http://mehdi.rabah.free.fr/SSIM/ http://perso.orange.fr ... – PowerPoint PPT presentation

Number of Views:1034
Avg rating:3.0/5.0
Slides: 14
Provided by: Arche4
Category:

less

Transcript and Presenter's Notes

Title: The SSIM Index for Image Quality Assessment


1
The SSIM Index for Image Quality Assessment
  • Presented by Wan Shu Cheng

2
Abstract
  • The Structural SIMilarity (SSIM) index is a novel
    method for measuring the similarity between two
    images.
  • The SSIM index can be viewed as a quality measure
    of one of the images being compared, provided the
    other image is regarded as of perfect quality.

3
PSNR error pooling
4
(No Transcript)
5
Diagram of the Structural Similarity (SSIM)
Measurement System
6
Structural Similarity (SSIM)
  • Similarity measure
  • Luminance comparison
  • Contrast comparison
  • Structure comparison

7
Specific form of SSIM Index Universal Quality
Index (UQI)
8
  • (a) Original
  • (b) Salt-Pepper Noise
  • MSE225
  • SSIM0.6494
  • (c)Additive Gaussian Noise
  • MSE225
  • SSIM0.3891
  • (d)Multi-Speckle Noise
  • MSE225
  • SSIM0.4408

9
  • (a) Original
  • (b) Contrast Stretching
  • MSE225
  • SSIM0.9372
  • (c) Blurring
  • MSE225
  • SSIM0.3461
  • (d) JPEG Compression
  • MSE215
  • SSIM0.2876

10
(No Transcript)
11
Source Code
  • Matlab Code
  • http//www.cns.nyu.edu/zwang/files/research/ssim/
    ssim_index.m
  • C Code
  • http//mehdi.rabah.free.fr/SSIM/
  • http//perso.orange.fr/reservoir/

12
Reference
  • Image quality assessment From error visibility
    to structural similarity, IEEE Transactions on
    Image Processing, vol. 13, no. 4, pp. 600-612,
    Apr. 2004.
  • An adaptive linear system framework for image
    distortion analysis, to appear in IEEE
    International Conference on Image Processing,
    Genoa, Italy, Sept. 11-14, 2005.
  • Translation insensitive image similarity in
    complex wavelet domain, IEEE International
    Conference on Acoustics, Speech and Signal
    Processing, vol. II, pp. 573-576, Philadelphia,
    PA, Mar. 2005.
  • Video quality assessment based on structural
    distortion measurement, Signal Processing Image
    Communication, special issue on Objective video
    quality metrics, vol. 19, no. 2, pp. 121-132,
    Feb. 2004.
  • Multi-scale structural similarity for image
    quality assessment, Invited Paper, IEEE Asilomar
    Conference on Signals, Systems and Computers,
    Nov. 2003.
  • Stimulus synthesis for efficient evaluation and
    refinement of perceptual image quality metrics,
    Human Vision and Electronic Imaging IX, Proc.
    SPIE, vol. 5292, Jan. 2004.
  • Structural Approaches to image quality
    assessment, to appear in Handbook of Image and
    Video Processing (Al Bovik, ed.), 2nd edition,
    Academic Press, June 2005.
  • A universal image quality index, IEEE Signal
    Processing Letters, vol. 9, no. 3, pp. 81-84,
    March 2002.
  • Why is image quality assessment so difficult?
    IEEE International Conference on Acoustics,
    Speech, Signal Processing, May 2002.
  • Objective video quality assessment, in The
    Handbook of Video Databases Design and
    Applications (B. Furht and O. Marqure, eds.), CRC
    Press, pp. 1041-1078, Sept. 2003.

13
Thanks for Your Attention!
Write a Comment
User Comments (0)
About PowerShow.com