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EE 5359 Multimedia Project -Shreyanka Subbarayappa

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Presentation on theme: "EE 5359 Multimedia Project -Shreyanka Subbarayappa"— Presentation transcript:

1 COMPARATIVE STUDY OF H.264 INTRA FRAME CODING, JPEG, JPEG-LS, JPEG-2000 AND JPEG-XR
EE 5359 Multimedia Project -Shreyanka Subbarayappa Electrical Engineering Department

2 NEED FOR IMAGE OR VIDEO COMPRESION
Need for Compression  Reduce redundancy of the image or video data in order to be able to store or transmit data in an efficient form. Compressed video can effectively reduce the bandwidth required to transmit video via terrestrial broadcast, via cable TV, or via satellite TV services Increasing importance of multimedia communication NEED FOR IMAGE OR VIDEO COMPRESION

3 Lossless or Lossy Compression
Lossless compression There is no information loss, and the image can be reconstructed exactly the same as the original Applications: Medical imagery, Archiving Lossy compression Information loss is tolerable. Applications: commercial distribution (DVD) and rate constrained environment where lossless methods cannot provide enough compression ratio

4 VIDEO COMPRESSION STANDARDS
SOFTWARE MAIN APPLICATION YEAR JPEG JPEG-Baseline Ref. IMAGE JPEG-LS (Part 1) (Part 2 JPEG-LS DLL 1999 2000 JPEG2000 JasPer JPEG-XR JPEG-XR ref. 2009 H.264/MPEG-4 part 10 JM software ADVANCED VIDEO CODING 2003

5 JPEG ENCODER AND DECODER

6 JPEG-Baseline The name "JPEG" stands for Joint Photographic Experts Group. 8x8 block based DCT Scalar quantization Different quantization tables for luminance and chrominance components Huffman coding JPEG2000 Extensions are .jp2, .j2k, .jpf, .jpx, .jpm,.mj2 Relies on wavelet transform  Another difference, in comparison with JPEG, is in terms of visual artifacts JPEG 2000 produces ringing artifacts. The codestream obtained after compression of an image with JPEG is scalable in nature, meaning that it can be decoded in a number of ways; for instance, by truncating the codestream at any point.

7 Block Diagram of JPEG-LS Encoder [13]
 It uses a predictive scheme based on the three nearest (causal) neighbors (upper, left, and upper- left.  The lossless coding process employs a simple predictive coding model called differential pulse code modulation (DPCM) Once all the samples are predicted, the differences between the samples can be obtained and entropy-coded in a lossless fashion using Huffman coding or arithmetic coding. Block Diagram of JPEG-LS Encoder [13] JPEG-XR JPEG XR (Joint Photographic Experts Group- Extended Range) was formerly known as Windows Media Photo and HD Photo File extensions are given as .hdp, .jxr, .wdp  HD Photo uses a type of integer transform employing a lifting scheme, which resembles a 4 × 4 DCT but is lossless (exactly invertible).

8 H.264 BLOCK DIAGRAM Encoder[14]

9 DECODER [15]

10 H.264/MPEG-4 AVC H.264/MPEG-4 AVC is a block-oriented motion- compensation-based codec standard developed by the ITU-T  Video Coding Experts Group (VCEG) together with the ISO/IEC Moving Picture Experts Group (MPEG) Provides good video quality at substantially lower bit rates than previous standards. H.264 is used in such applications as players for Blu- ray Discs, videos from YouTube and the iTunes Store, web software such as Adobe Flash Player and Microsoft Silverlight.

11 Image Quality Measures
Criteria to evaluate compression quality Two types of quality measures Objective quality measure- PSNR, MSE Structural quality measure- SSIM MSE and PSNR for a NxM pixel image are defined as (1) (2) where x is the original image and y is the reconstructed image. M and N are the width and height of an image and ‘L’ is the maximum pixel value in the NxM pixel image.

12 Structural Similarity Method[SSIM]
SSIM emphasizes that the human visual system is highly adapted to extract structural information from visual scenes. Therefore, structural similarity measurement should provide a good approximation to perceptual image quality. The SSIM index is defined as a product of luminance (l), contrast (c) and structural (s) comparison functions. ….[1] where , α>0, β>0 and γ >0 are parameters used to adjust the relative importance of the three components

13 …[2] ….[3] where μ is the mean intensity, and σ is the standard deviation as a round estimate of the signal contrast. C1 and C2 are constants. M is the number of samples in the quality map.

14 References [1] AIC website: [2] T. Wiegand, G. Sullivan, G. Bjontegaard and A. Luthra, “Overview of the H.264/AVC Video Coding Standard”, IEEE Transactions on Circuits and Systems for Video Technology, vol. 13, pp , July 2003 [3] K. Sayood, “Introduction to Data Compression”, Third Edition, Morgan Kaufmann Publishers, [4] P. Topiwala, T. Tran and W.Dai, “Performance comparison of JPEG2000 and H.264/AVC high profile intra-frame coding on HD video sequences,” Proc. SPIE Int’l Symposium, Digital Image Processing, San Diego, Aug [5] G. K. Wallace, “The JPEG still picture compression standard,” Communication of the ACM, vol. 34, pp , April [6] I. Richardson, “The H.264 advanced video compression standard”, Wiley publication, 2nd edition, 2010.

15 [8] JPEG2000 latest reference software (Jasper Version 1.900.0)
[7] JPEG reference software website: ftp://ftp.simtel.net/pub/simtelnet/msdos/graphics/jpegsr6.zip [8] JPEG2000 latest reference software (Jasper Version ) Website: [9] JPEG-LS reference software website [10] Microsoft HD photo specification: [11] H.264/AVC reference software (JM 17.2) Website: [12] JPEG Encoder and Decoder Block Diagram : [13] JPEG-LS Block Diagram: [14] H.264 Encoder Block Diagram :

16 [15] H. 264 Decoder Block Diagram : http://www. allgosystems
[15] H.264 Decoder Block Diagram : [16] A.Skodras, C. Christopoulos and T. Ebrahimi, “The JPEG 2000 still Image Compression Standard”, IEEE Signal Processing, vol.17, pp.1-144, Jan [17] M. J. Weinberger, G. Seroussi, G. Sapiro, “The LOCO-I lossless image compression algorithm: principles and standardization into JPEG-LS”, IEEE Trans. on Image Processing, vol.9, pp , Aug [18] C. Christopoulos, A. Skodras, T.Ebrahimi, “The JPEG2000 still image coding system: an overview”, IEEE Trans. on Consumer Electronics, vol.46, pp , Nov [19] G. K. Wallace, “The JPEG still picture compression standard,” Communication of the ACM, vol. 34, pp , April [20] P. Schelkens, A. Skodras and T. Ebrahimi, “The JPEG 2000 suite”, Hoboken, NJ: Wiley, [21] P. Topiwala, “Comparative study of JPEG2000 and H.264/AVC FRExt I- frame coding on high definition video sequences,” Proc. SPIE Int’l Symposium, Digital Image Processing, vol. 5909, issue.1, San Diego ,Aug

17 THANK YOU...


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