handout #20
CSE143X—Computer Programming I & II
Programming Assignment #10
due: Friday, 12/6/19, 11 pm
This
assignment is worth a total of 30 points.
It is divided into two parts, each worth approximately half of the
points. Please note that solutions to this homework will not be accepted after
11 pm on Friday, December 6th, as described in handout #1.
This
program will give you practice with binary trees and priority queues. In this program you will explore how text
files can be compressed by using a coding scheme based on the frequency of
characters. We will use a coding scheme
called Huffman coding. The basic idea is
to abandon the way that text files are usually stored. Instead of using the usual seven or eight
bits per character, Huffman's method uses only a few bits for characters that
are used often, more bits for those that are rarely used.
You
will solve this problem using a structure known as a priority queue. In a priority queue each value inserted into
the queue has a priority that determines when it will be removed. There are many ways to specify the
priorities. For this program you will
construct objects that implement the Comparable interface, with objects that
are “less” being given a higher priority (to be removed first).
The
first step is to compute the frequency of each character in the file you wish
to encode. This allows you to determine
which characters should have the fewest bits, etc. The next step is to build a “coding tree”
from the bottom up according to the frequencies. An example will help make this clear. To make the example easier, suppose we only
want to encode the five letters (a, b, c, x, y) and they have frequencies 3, 3,
1, 1, and 2, respectively.
We
first create a leaf node for each character/frequency pair and put them into a
priority queue, so that the characters with lower frequencies appear first:
+----+ +----+
+----+ +----+ +----+
| 1 |
| 1 | | 2
| |
3 | | 3 |
+----+ +----+ +----+
+----+ +----+
'c' 'x'
'y' 'a' 'b'
Now
we pick the two nodes with the smallest frequencies (the two at the front of
the priority queue) and create a new node with those two nodes as children (the
first value from the queue becomes the left, the second value from the queue
becomes the right). We assign this new
branch node a frequency that is the sum of the frequencies of the two
children. This new node is then put back
into the priority queue:
+----+ +----+
+----+ +----+
| 2 |
| 2 | | 3
| |
3 |
+----+ +----+ +----+
+----+
'y'
/ \ 'a'
'b'
+----+ +----+
|
1 | | 1 |
+----+ +----+
'c' 'x'
Continuing
in this way, we build up larger and larger subtrees. Here are the rest of the steps:
+----+ +----+
+----+
| 3 |
| 3 | | 4
|
+----+ +----+ +----+
'a' 'b'
/ \
+----+ +----+
| 2 |
| 2 |
+----+ +----+
'y' /
\
+----+
+----+
| 1 |
| 1 |
+----+ +----+
'c' 'x'
+----+ +----+
| 4 | | 6 |
+----+ +----+
/ \ / \
+----+ +----+
+----+ +----+
|
2 | | 2 |
| 3 | | 3
|
+----+ +----+
+----+ +----+
'y' /
\ 'a' 'b'
+----+ +----+
| 1 |
| 1 |
+----+
+----+
'c' 'x'
+----+
| 10 |
+----+
/ \
/ \
+----+ +----+
| 4 | |
6 |
+----+ +----+
/ \ / \
+----+ +----+
+----+ +----+
|
2 | | 2 |
| 3 | | 3
|
+----+ +----+
+----+ +----+
'y' /
\ 'a' 'b'
+----+ +----+
| 1 |
| 1 |
+----+ +----+
'c' 'x'
Note
that the nodes with low frequencies end up far down in the tree, and nodes with
high frequencies end up near the root of the tree. It turns out that this structural description
is exactly what is needed to create an efficient encoding. The Huffman code is derived from this coding
tree simply by assigning a zero to each left branch and a one to each right
branch. The code can be read directly
from the tree. The code for a is 10, the
code for b is 11, the code for c is 010, the code for x is 011 and the code for
y is 00.
An
interesting feature of the Huffman code is that delimiters between characters
are not stored, even though different characters may be coded with different
numbers of bits. The key is that a code
created by this method exhibits what is known as the prefix property, which means that no code for a character is the
prefix of the code of any other character.
Thus, to decode a message we need only traverse our tree. When we reach a leaf, we know that we have
decoded one character, and can now start decoding the next character.
Part 1:
Making a Code
For our
purposes, we will encode what are known as “bytes” (8 bits). This will allow us to encode standard text
files and binary files as well. From the
point of view of your Huffman code, you can think about the individual bytes as
simple integers in the range of 0 to 255, each representing the integer value
of a particular character. In part 1,
you are working with a program called MakeCode.
It prompts the user for a file to examine and it computes the frequency
of each character in the file. These
counts are passed as an array to your HuffmanTree constructor.
The
array passed to your constructor will have exactly 256 values in it, but your
program should not depend on this.
Instead, you can use the length field of the array to know how many
there are. In your constructor, you
should use a priority queue to build up the tree as described above. First you will add a leaf node for each
character that has a frequency greater than 0 (we don’t include the other
characters in our tree). These should be
added in increasing character order (character 0, character 1, and so on).
Then
you build the tree. Initially you have a
bunch of leaf nodes. Your goal is to get
a single tree. While you haven’t gotten
down to a single tree, you remove two values from the priority queue and
combine them to make a new branch node which you put back into the queue, as
described above. You continue combining
subtrees until you get down to one tree.
This becomes your Huffman tree.
You are to
define a class called HuffmanTree with the following public methods (more
methods will be added in part 2 of this assignment):
Method |
Description |
HuffmanTree(int[] count) |
This is the method that will construct your initial Huffman tree using the given array of frequencies where count[i] is the number of occurrences of the character with integer value i. |
void write(PrintStream output) |
This should write your tree to the given output stream in standard format. |
In
defining your class, you will also define a node class called HuffmanNode. You should decide what data fields are
appropriate to include in the node class.
We
will use a standard format for Huffman trees.
The output should contain a sequence of line pairs, one for each leaf of
the tree. The first line of each pair
should have the integer value of the character stored in that leaf. The second line should have the code (0's and
1's) for the character with this integer value. The codes should appear in “traversal
order.” In other words, they should
appear in the order that any standard traversal of the tree would visit them.
For the example above, the output would
be as follows (the letter “a” has integer value 97):
121
00
99
010
120
011
97
10
98
11
It
turns out that Huffman coding works best if one character is designated as “end
of file,” meaning that every file is guaranteed to end with such a character
and it will be used for no other purpose.
Some operating systems have such a character, but if we want to write a
general-purpose program, we have to do something that is not specific to any
one operating system. So in addition to
encoding the actual characters that appear in the file, we will create a code
for a fictitious end-of-file character that will be used only by the Huffman
encoding and decoding programs. That
means that in addition to all of the legal characters, you are also going to
introduce a special character that will be used to signal end-of-file. We will refer to this as the “pseudo-eof”
character. Its value should be one
higher than the value of the highest character in the frequency array passed to
the constructor. For example, if the
character array has entries up to character value 100, then the pseudo-eof
should have value 101 and this should be true even if the count for character
100 is 0. It will always have a
frequency of 1 because it appears exactly once at the end of each file to be
encoded. You will have to manually add
this character to your priority queue because it will not be included as part
of the frequency array.
The
output listed above does not include the pseudo-eof character. When you include the pseudo-eof character
with a frequency of 1, the output becomes:
121
00
256
010
99
0110
120
0111
97
10
98
11
The
java.util package includes a PriorityQueue<E> class that implements the
Queue<E> interface. You must use
these to build your Huffman tree. The
only difference between a priority queue and a standard queue is that it uses
the natural ordering of the objects to decide which object to dequeue first,
with objects considered “less” returned first.
You are going to be putting subtrees into your priority queue, which
means you’ll be adding values of type HuffmanNode. This means that your HuffmanNode class will
have to implement the Comparable<E> interface. It should use the frequency of the subtree to
determine its ordering relative to other subtrees, with lower frequencies
considered “less” than higher frequencies.
If two frequencies are equal, the nodes should be considered equal.
It
would have been best for Sun to define PriortyQueue as an interface because
there are many ways to implement a priority queue, but that's not how they did
it. In this case we have a
tradeoff. We would like to make it clear
that we need a priority queue rather than a simple queue. On the other hand, we prefer to use
interfaces when possible to keep our code flexible. There isn't necessarily a “right” choice in
this case, so we have to pick one. You
should go with interfaces and flexibility.
So you are once again required to use an interface (in this case,
Queue<E>) to define the type of variables, parameters and return values..
The
Huffman solution is not unique. You can
obtain any one of several different equivalent trees depending upon how certain
decisions are made. But if you implement
it as we have specified, then you should get exactly the same tree for any
particular implementation of PriorityQueue.
Make sure that you use the built-in PriorityQueue class and that when
you are combining pairs of values taken from the priority queue, you make the
first value removed from the queue the left subtree and you make the second value
removed the right subtree.
We
often add debugging code that we use while developing a program and that we
then remove from the final version.
Below are some debugging suggestions:
·
Add a
println to the constructor of your node class that will report the data for every
leaf node that it constructs. The output
comparison tool will have correct output for the short file and for Hamlet
where each line has a character code followed by one space followed by
frequency, as in:
10 2
13 2
32 22
97 7
Remember
that nodes are supposed to be added to the PriorityQueue in increasing
character order. If any of the
frequencies don’t match, then you probably have a damaged version of the input
file (e.g., you might have used copy/paste instead of directly saving the
file).
·
You
won’t be able to figure out the order of elements in the PriorityQueue by
viewing it in jGRASP or by using a foreach loop or iterator. But you can write some testing code that
repeatedly calls remove on your PriorityQueue, printing the frequency of each
node as it is removed from the PriorityQueue.
You should see an increasing sequence of values (from low frequency to
high).
Using
jGRASP
Remember
that in jGRASP you can use a structure viewer to see what your tree looks
like. You do so by dragging one of your
fields from the debug window outside the window and jGRASP will launch a
viewer. This viewer will show you the
structure of the list, but may not show you the contents of the nodes. You can fix this by selecting the wrench icon
(“Configure the structure to view mapping”).
Under “Value Expressions” say:
_node_.<field>
Where
“<field>” is the name of the field you want to view. You can also say:
_node_.<field1>#_node_.<field2>
Where “<field1>” and
“<field2>” are the names of two fields you want to view. Once you have indicated the fields you want
to view, click on apply and you should see the names in the nodes. You can also adjust settings like the Width
(to see more of the name) or Scale (to stretch/shrink the diagram).
You will find that you can use a viewer to
see the contents of the priority queue, but this is unlikely to be helpful to
you. The priority queue has an internal
structure that won’t make much sense to you.
Part 2: Encoding
and Decoding a File
There
are two new main programs that are used in this part of the assignment. Recall that MakeCode.java examined an input
file and produced a code file for compressing it. The program Encode.java uses this code and
the original file to produce a binary file that is the compressed version of
the original. The program Decode.java
uses the code and the binary file from Encode to reconstruct the original
file. Encode is a complete program that
doesn’t need the Huffman tree. Decode
depends on your HuffmanTree class to do most of the work.
In particular, you will have to add two
new methods to your HuffmanTree class:
Method |
Description |
HuffmanTree(Scanner input) |
This is your constructor that will reconstruct the tree from a file. You can assume that the Scanner contains a tree stored in standard format. |
void decode(BitInputStream input, PrintStream output, int eof) |
This method should read individual bits from the input stream and should write the corresponding characters to the output. It should stop reading when it encounters a character with value equal to the eof parameter. This is a pseudo-eof character, so it should not be written to the PrintStream. Your method can assume that the input stream contains a legal encoding of characters for this tree’s Huffman code. |
The
first of these methods is an alternative constructor. In part 1 you wrote a constructor that took
an array of frequencies and constructed an appropriate tree given those
frequencies. In this part you are given
a Scanner that contains the file produced by your write method from part
1. In other words, the input for this
part is the output you produced in part 1.
You are using your own output to recreate the tree. For this second part, the frequencies are
irrelevant because the tree has already been constructed once, but you are
using the same node class as before. You
can set all of the frequencies to some standard value like 0 or -1 for this
part.
Remember
that the standard format was a series of pairs of lines where the first line
has an integer representing the character’s integer value and the second line
has the code to use for that character.
You might be tempted to call nextInt() to read the integer and
nextLine() to read the code, but remember that mixing token-based reading and
line-based reading is not simple. Here
is an alternative that uses a method called parseInt in the Integer class that
allows you to use two successive calls on nextLine():
int n = Integer.parseInt(input.nextLine());
String code = input.nextLine();
For
the decoding part, you have to read a BitInputStream. This is a special class that Stuart wrote
that works in conjunction with another class called BitOutputStream. They each have a very simple interface. They allow you to write and read compact
sequences of bits.
The only method you’ll use for
BitInputStream is the following which returns the next bit from the file:
public int readBit()
Your
method is doing the reverse of the encoding process. It is reading sequences of bits that
represent encoded characters and it is figuring out what the original
characters must have been. Your method
should start at the top of your tree and should read bits from the input
stream, going left or right depending upon whether you get a 0 or 1 from the
stream. When you hit a leaf node, you
know you’ve found the end of an encoded sequence. At that point, you should write the integer
code for that character to the output file.
In doing so, call this method from the PrintStream class:
public void write(int b)
You
don’t need to cast to char. You just
write the integer for this particular character (the value between 0 and 255
that is stored in this leaf). Once
you’ve written this character’s integer, you go back to the top of your tree
and start over, reading more bits and descending the tree until you hit a leaf
again. At that point you write again, go
back to the top of the tree, read more bits and descend until you hit a leaf,
then write the leaf, go back to the top of the tree, and so on.
Recognizing
the end of the input is tricky. Remember
that we introduced a pseudo-eof character with a special value (256). The Encode program will write exactly one
occurrence of this character at the end of the file. At some point your decoding method will come
across this eof character. At that point
it should stop decoding. It should not
write this integer to the PrintStream because it isn’t actually part of the
original file. The eof value will be 256
for this particular program, but your code isn’t supposed to depend on this
specific value, which is why it is passed to your decode method as the third
parameter.
If
you fail to recognize the pseudo-eof character, you might end up accidentally
reading past the end of the bit stream.
When that happens, the readBit method returns a value of -1. So if you see a value of -1 appearing, it’s
because you’ve read too far in the bit stream.
You
will have to be careful if you use recursion in your decode method. Java has a limit on the stack depth you can
use. For a file like hamlet.txt, there
are hundreds of thousands of characters to decode. That means it would not be appropriate to
write code that requires a stack that is hundreds of thousands of levels
deep. You might be forced to write some
or all of this using loops to make sure that you don’t exceed the stack depth.
You should include Encode.java,
Decode.java, BitInputStream.java and BitOutputStream.java in the same directory
as your other program files. The zip
file for the assignment includes encoded versions of the sample files called
short.short and hamlet.short. Your
Decode program should be able to take one of these files and the corresponding
code file to reconstruct the original file.
You are being given two data files for this assignment called short.txt and hamlet.txt. The file short.txt is a short input file suitable for preliminary testing. The file hamlet.txt contains the full text of Shakespeare’s play Hamlet.
In terms of correctness, your class must
provide all of the functionality described above. In terms of style, we will be grading on your
use of comments, good variable names, consistent indentation and good coding
style to implement these operations.
Remember that you will lose points if you declare variables as data
fields that can instead be declared as local variables. You should also avoid extraneous cases (e.g.,
don’t make something into a special case if it doesn’t have to be). Your HuffmanNode should have at least two
constructors and should include only constructors that are actually used in the
HuffmanTree code.
The
table below describes the naming conventions we use for the files involved in
this assignment.
Extension |
Example |
Description |
.txt |
hamlet.txt |
Original text
file |
.code |
hamlet.code |
List of codes to
use |
.short |
hamlet.short |
Compressed file
(binary—not human readable) |
.new |
hamlet.new |
Decompressed
file (should match the original) |
You should name your files
HuffmanNode.java and HuffmanTree.java and you should turn it in electronically
from the “homework” link on the class web page.
A collection of files needed for the assignment is included on the web
page as ass10.zip. You will need to have
MakeCode.java, Encode.java and Decode.java in the same directory as your files
in order to run them. The zip file will
also include the sample data files (short.txt and hamlet.txt) along with their
code files (short.code and hamlet.code).
The code files will also be available with the output comparison tool on
the class web page.
It can be challenging to debug the
decoding part of the assignment because the encoded files are not readable in a
normal text editor and because the character boundaries are not obvious. Below is a list of the bits from short.short
with character boundaries indicated using square brackets and with the actual
character included after its code inside the brackets.
[1110t][10000h][0000i][1011s][110 ][0000i][1011s][110 ][0100a][110 ][1011s][10000h][1010o][0101r][1110t][110 ][0000i][0010n][10010p][111101u][1110t][110 ][111100f][0000i][0001l][011e][110 ][0011c][1010o][1000100m][10010p][1010o][1011s][011e][10011d][110 ][011e][0010n][1110t][0000i][0101r][011e][0001l][111110y][110 ][1010o][111100f][110 ][1011s][10010p][0100a][0011c][011e][1011s][110 ][0100a][0010n][10011d][110 ][0001l][1010o][1000101w][011e][0101r][0011c][0100a][1011s][011e][110 ][0001l][011e][1110t][1110t][011e][0101r][1011s][1111111\r][100011\n][0100a][0010n][10011d][110 ][011e][0010n][10011d][110 ][1010o][111100f][110 ][0001l][0000i][0010n][011e][110 ][0011c][10000h][0100a][0101r][0100a][0011c][1110t][011e][0101r][1011s][110 ][1110t][1010o][110 ][10000h][011e][0001l][10010p][110 ][111110y][1010o][111101u][110 ][1110t][011e][1011s][1110t][110 ][111110y][1010o][111101u][0101r][110 ][0011c][1010o][10011d][011e][1111111\r][100011\n][1111110eof]