Presentation is loading. Please wait.

Presentation is loading. Please wait.

Image Compression-JPEG. Lossless and Lossy Compression Lossless Lossy 144:1.

Similar presentations


Presentation on theme: "Image Compression-JPEG. Lossless and Lossy Compression Lossless Lossy 144:1."— Presentation transcript:

1 Image Compression-JPEG

2 Lossless and Lossy Compression Lossless Lossy 144:1

3 JPEG ( Joint Photographic Experts Group)  Formed in 1986 by ISO and CCITT (ITU-T)  Became International Standard (IS) in 1991  Compression ratio 10 to 50; 0.5 to 2 bpp. At 1 bpp, one 256×256 image takes only 2 sec at 33.6 kbits/s  Digital Compression and Coding of Continuous-Tone Still Images (grayscale or color)  ISO/IEC IS 10918-1 (ITU-T T.81): Requirements and guidelines  ISO/IEC IS 10918-2 (ITU-T T.83): Compliance testing  ISO/IEC IS 10918-3 (ITU-T T.84): Extensions

4 Picture Formats  Up to 65535 lines and 65535 pels/line  8 or 12 bits precision  Color-space independent  Up to 255 color components  Each component can be subsampled  Interleaving  To save bits

5 JPEG (Encoder and Decoder)

6 Transform  Allow the most efficient representation  Energy concentration  Removal or heavy quantization of some coefficients  Allow perceptually weighted quantization  Easy for entropy coding  Discrete Cosine Transform (DCT)  Widely used in JPEG, H.26x, MPEG

7 YCbCr Color Space  Y ′ is the luma component and CB and CR are the blue-difference and red- difference chroma components.  Humans can see considerably more fine detail in the brightness of an image (the Y component) than in the color of an image (the Cb and Cr components).

8 Color Space  Luminance Eye Sensitivity

9 DCT

10 SHIFT  Before computing the DCT of the subimage, its gray values are shifted from a positive range to one centered around zero. For an 8-bit image each pixel has 256 possible values: [0,255]. To center around zero it is necessary to subtract by half the number of possible values, or 128  Subtracting 128 from each pixel value yields pixel values on [ − 128,127]

11 2D Discrete Cosine Transform  For 8*8 blocks  Inverse DCT

12 DCT  The DCT transforms 64 pixels to a linear combination of these 64 squares. Horizontally is u and vertically is v.

13 DCT Example  I=imread('lena.bmp');  x=I(1:8, 1:8);  imshow(x)  J=dct2(x);  imshow(log(abs(J)),[]),colormap(jet(64)), colorbar

14 DC and AC Coefficients  The DC coefficient is rather large value of the top-left corner. The remaining 63 coefficients are called the AC coefficients.  The DCT temporarily increases the bit-depth of the image, since the DCT coefficients of an 8- bit/component image take up to 11 or more bits

15 Quantization  The human eye is good at seeing small differences in brightness over a relatively large area, but not so good at distinguishing the exact strength of a high frequency brightness variation.  This allows one to greatly reduce the amount of information in the high frequency components.  This is done by simply dividing each component in the frequency domain by a constant for that component, and then rounding to the nearest integer.  This is the main lossy operation in the whole process. As a result of this, it is typically the case that many of the higher frequency components are rounded to zero, and many of the rest become small positive or negative numbers, which take many fewer bits to store.  The advantage of the DCT is its tendency to aggregate most of the signal in one corner of the result.

16 Quantization  The quantized DCT coefficients are computed with where G is the unquantized DCT coefficients; Q is the quantization matrix above; and B is the quantized DCT coefficients. The JPEG Still Picture Compression Standard, Summary by Gregory K. Wallace (ftp://ftp.uu.net/graphics/jpeg/wallace.ps.gz)

17 Quantization (cont.)  8×8 quantization table Q[u,v]  High-freq coefficients can be quantized more  Color components can be quantized more  q-factor (in some implementation)  A scale factor applied to a fixed Q  For example, using − 415 (the DC coefficient) and rounding to the nearest integer

18 Entropy Coding  It involves arranging the image components in a "zigzag" order employing run-length encoding (RLE) algorithm that groups similar frequencies together, inserting length coding zeros, and then using Huffman coding on what is left.

19 Entropy Coding  If the i-th block is represented by Bi and positions within each block are represented by (p,q) where p = 0, 1,..., 7 and q = 0, 1,..., 7, then any coefficient in the DCT image can be represented as Bi(p,q).  Thus, in the above scheme, the order of encoding pixels (for the i-th block) is Bi(0,0), Bi(0,1), Bi(1,0), Bi(2,0), Bi(1,1), Bi(0,2), Bi(0,3), Bi(1,2) and so on.  This encoding mode is called baseline sequential encoding.  Encodes similar-positioned coefficients of all blocks in one go, followed by the next positioned coefficients of all blocks, and so on.

20 Entropy Coding  So, if the image is divided into N 8×8 blocks {B0,B1,B2,..., Bn-1}, then progressive encoding encodes Bi(0,0) for all blocks, i.e., for all i = 0, 1, 2,...,N-1. This is followed by encoding Bi(0,1) coefficient of all blocks, followed by Bi(1,0)-the coefficient of all blocks, then Bi(2,0)- th coefficient of all blocks,  JPEG's other code words represent combinations of (a) the number of significant bits of a coefficient, including sign, and (b) the number of consecutive zero coefficients that precede it.

21 Lossy Compression  Since the quantization stage always results in a loss of information, JPEG standard is always a lossy compression codec. (Information is lost both in quantizing and rounding of the floating-point numbers.)

22 JPEG Encoder  Encoder  Decoder

23 DC Coding  DC Prediction  Diff(n) = DC(n) – DC(n–1) Histograms of the DC coefficients from the 8×8 DCT of Lenna, showing the entropy reduction with differential coding

24 Entropy  Entropy  Uncertainty of a signal source X  Bits needed to resolve uncertainty  Probability :  Entropy :

25 Huffman Coding

26 Decoding  Taking the DCT coefficient matrix (after adding the difference of the DC coefficient back in)  Using the quantization matrix  Taking the inverse DCT (type-III DCT) results in an image with values (still shifted down by 128)  Add 128  Average absolute error of about 5 values per pixels

27 Tradeoff Between Quality and Size  Full quality (Q = 100) 83,261 2.6:1  Average quality (Q = 50) 15,138 15:1  Lowest quality (Q = 1) 1,523 144:1

28 JPEG 2OOO  Image Coding System (JTC 1.29.14, ISO 15444)  Goals  Low bit-rate compression  e.g., below 0.25 bpp for highly detailed gray-level images  Lossless and lossy compression in a single bitstream  Large images  More than 64K by 64K  Single decompression architecture  Transmission in noisy environments  Computer generated imagery Compound documents: bi-level and gray-scale

29 Applications  Low bandwidth dissemination of imagery  Medical imagery lossless/lossy compression  Pre-press imagery  Client/server applications (World Wide Web)  Electronic photography  Photo and art digital libraries  Security  Facsimile  Laser print rendering  Scanner and digital copier memory buffers

30 References  JPEG – William B. Pennebaker, Joan L. Mitchell, JPEG: Still Image Data Compression Standard, Van Nostrand Reinhold, New York, NY, 1993

31 Any Questions?


Download ppt "Image Compression-JPEG. Lossless and Lossy Compression Lossless Lossy 144:1."

Similar presentations


Ads by Google