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Arithmetic Coding
How we can do better than
Huffman? - I


As we have seen, the main drawback of
Huffman scheme is that it has problems when
there is a symbol with very high probability
Remember static Huffman redundancy bound
redundancy  p1  0.086
where
simbol
p1 is the probability of the most likely
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
2
How we can do better than
Huffman? - II


The only way to overcome this limitation is to
use, as symbols, “blocks” of several
characters.
In this way the per-symbol inefficiency is
spread over the whole block
However, the use of blocks is difficult to
implement as there must be a block for every
possible combination of symbols, so block
number increases exponentially with their
length
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
3
How we can do better than
Huffman? - III

Huffman Coding is optimal in its
framework


static model
adaptive Huffman
one symbol, one word
blocking
arithmetic
coding
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
4
The key idea


Arithmetic coding completely bypasses the
idea of replacing an input symbol with a
specific code.
Instead, it takes a stream of input symbols
and replaces it with a single floating point
number in [0,1)

The longer and more complex the message, the
more bits are needed to represents the output
number
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
5
The key idea - II


The output of an arithmetic coding is, as
usual, a stream of bits
However we can think that there is a prefix 0,
and the stream represents a fractional binary
number between 0 and 1
01101010  0.01101010

In order to explain the algorithm, numbers will
be shown as decimal, but obviously they are
always binary
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
6
An example - I





String bccb from the alphabet {a,b,c}
Zero-frequency problem solved initializing at 1
all character counters
When the first b is to be coded all symbols
have a 33% probability (why?)
The arithmetic coder maintains two numbers,
low and high, which represent a subinterval
[low,high) of the range [0,1)
Initially low=0 and high=1
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
7
An example - II

The range between low and high is divided
between the symbols of the alphabet,
according to their probabilities
high 1
c
(P[c]=1/3)
0.6667
b
(P[b]=1/3)
0.3333
(P[a]=1/3)
a
low 0
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
8
An example - III
b
high 1
high = 0.6667
c
0.6667
b
0.3333
a
low 0
low = 0.3333
 P[a]=1/4
new probabilities
 P[b]=2/4
 P[c]=1/4
9
An example - IV
c
high
0.6667
(P[c]=1/4)
0.5834
0.4167
low
c
new probabilities
 P[a]=1/5
 P[b]=2/5
 P[c]=2/5
b
(P[b]=2/4)
(P[a]=1/4)
high = 0.6667
0.3333
a
low = 0.5834
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
10
An example - V
c
high
0.6667
high = 0.6667
c
(P[c]=2/5)
new probabilities
 P[a]=1/6
 P[b]=2/6
 P[c]=3/6
0.6334
b
(P[b]=2/5)
(P[a]=1/5)
low
0.6001
0.5834
a
low = 0.6334
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
11
An example - VI
b
high
0.6667
(P[c]=3/6)
c
high = 0.6501

0.6501
b
(P[b]=2/6)
(P[a]=1/6)
low
0.6390
0.6334
a

Final interval
[0.6390,0.6501)
we can send 0.64
low = 0.6390
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
12
An example - summary


Starting from the range between 0 and 1 we
restrict ourself each time to the subinterval
that codify the given symbol
At the end the whole sequence can be codified
by any of the numbers in the final range (but
mind the brackets...)
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
13
An example - summary
1
c
1/3
2/4
b
2/5
1/4
a
2/5
0.6001
0.4167
0.3333
0
c
0. 6667
0. 6667
c
1/5
a
0. 5834
3/6
0.6501
0.6334
b
1/3
1/4
0.5834
0.6667
1/3
0.6667
2/6
b
a
c
b
0.6390
0.6334 a
1/6
0.3333
[0.6390, 0.6501)
0.64
14
Another example - I

Consider encoding the name BILL GATES
Again, we need the frequency of all the
characters in the text.
chr
space
A
B
E
G
I
L
S
T
freq.
0.1
0.1
0.1
0.1
0.1
0.1
0.2
0.1
0.1
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
15
Another example - II
character
space
A
B
E
G
I
L
S
T
probability
0.1
0.1
0.1
0.1
0.1
0.1
0.2
0.1
0.1
range
[0.00, 0.10)
[0.10, 0.20)
[0.20, 0.30)
[0.30, 0.40)
[0.40, 0.50)
[0.50, 0.60)
[0.60, 0.80)
[0.80, 0.90)
[0.90, 1.00)
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
16
Another example - III
chr
B
I
L
L
Space
G
A
T
E
S
low
0.0
0.2
0.25
0.256
0.2572
0.25720
0.257216
0.2572164
0.25721676
0.257216772
0.2572167752
high
1.0
0.3
0.26
0.258
0.2576
0.25724
0.257220
0.2572168
0.2572168
0.257216776
0.2572167756
The final low value, 0.2572167752 will uniquely encode
the name BILL GATES
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
17
Decoding - I



Suppose we have to decode 0.64
The decoder needs symbol probabilities, as it
simulates what the encoder must have been
doing
It starts with low=0 and high=1 and divides
the interval exactly in the same manner as the
encoder (a in [0, 1/3), b in [1/3, 2/3), c in
[2/3, 1)
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
18
Decoding - II



The trasmitted number falls in the interval
corresponding to b, so b must have been the
first symbol encoded
Then the decoder evaluates the new values for
low (0.3333) and for high (0.6667), updates
symbol probabilities and divides the range
from low to high according to these new
probabilities
Decoding proceeds until the full string has
been reconstructed
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
19
Decoding - III


0.64 in [0.3333, 0.6667)
0.64 in [0.5834, 0.6667)
b
c...
and so on...
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
20
Why does it works?



More bits are necessary to express a number
in a smaller interval
High-probability events do not decrease very
much interval range, while low probability
events result a much smaller next interval
The number of digits needed is proportional to
the negative logarithm of the size of the
interval
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
21
Why does it works?


The size of the final interval is the product of
the probabilities of the symbols coded, so the
logarithm of this product is the sum of the
logarithm of each term
So a symbol s with probability Pr[s]
contributes
 log Pr[ s ]
bits to the output, that is equal to symbol
probability content (uncertainty)!!
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
22
Why does it works?


For this reason arithmetic coding is nearly
optimum as number of output bits, and it is
capable to code very high probability events in
just a fraction of bit
In practice, the algorithm is not exactly
optimal because of the use of limited precision
arithmetic, and because trasmission requires
to send a whole number of bits
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
23
A trick - I



As the algorithm was described until now, the
whole output is available only when encoding
are finished
In practice, it is possible to output bits during
the encoding, which avoids the need for higher
and higher arithmetic precision in the
encoding
The trick is to observe that when low and high
are close they could share a common prefix
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
24
A trick - II



This prefix will remain forever in the two
values, so we can transmit it and remove from
low and high
For example, during the encoding of “bccb”, it
has happened that after the encoding of the
third character the range is low=0.6334,
high=0.6667
We can remove the common prefix, sending 6
to the output and transforming low and high
into 0.334 and 0,667
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
25
The encoding step






To code symbol s, where symbols are
numbered from 1 to n and symbol i has
probability Pr[i]
low_bound = i 1 Pr[i]
s
high_bound = i 1 Pr[i]
range = high - low
low = low + range * low_bound
high = low + range * high_bound
s 1
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
26
The decoding step


The symbols are numbered from 1 to n and
value is the arithmetic code to be processed
Find s such that
(value  low)
Pr[
i
]



(high  low)
i 1
s 1


s
 Pr[i]
i 1
Return symbol s
Perform the same range-narrowing step of the encoding step
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
27
Implementing arithmetic coding



As mentioned early, arithmetic coding uses
binary fractional number with unlimited
arithmetic precision
Working with finite precision (16 or 32 bits)
causes compression be a little worser than
entropy bound
It is possible also to build coders based on
integer arithmetic, with another little
degradation of compression
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
28
Arithmetic coding vs. Huffman coding
In tipical English text, the space character is
the most common, with a probability of about
18%, so Huffman redundancy is quite small.
Moreover this is an upper bound
 On the contrary, in black and white images,
arithmetic coding is much better than Huffman
coding, unless a blocking technique is used
A A. coding requires less memory, as symbol
representation is calculated on the fly
A A. coding is more suitable for high
performance models, where there are
confident predictions

29
Arithmetic coding vs. Huffman coding
H H. decoding is generally faster than a.
decoding
H In a. coding it is not easy to start decoding in
the middle of the stream, while in H. coding
we can use “starting points”
 In large collections of text and images,
Huffman coding is likely to be used for the
text, and arithmeting coding for the images
Gabriele Monfardini - Corso di Basi di Dati Multimediali a.a. 2005-2006
30
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