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Huffman Code to Compress a Text file in 128, 64 and 32 bit encoding.

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Huffman algorithm is used for encoding the character codes in order to compress the text and save the space, in the algorithm which I have implemented in the code, minheap is used i.e. to extract the minimum frequency character and find the two lowest frequency characters and calculate the sum, and again reinsert the node into the minheap. The 0 and 1 are assigned to the left and right edges after the Huffman tree is built and the code is generated for each character by the tree traversal from the root to the corresponding leaf node where the character is stored at the leaf node with the corresponding frequency. The main important concepts and the functions implemented:

  1. There are three functions build_32(PATH), build_64(PATH) and build_128(PATH) which takes the parameters as the path of the file and build the Huffman tree with the specific character considerations.
  2. The frequency of the file is calculated by storing the frequency in the freq[256] array as it is declared of the size 256 since there are total 256 ascii codes and the index of the freq[i], I refers to the ascii code that is being stored.
  3. Here is the below steps executed in build_32 function:  Calculate the frequency and store the frequency corresponding to the ascii index in the frequency array iff out of 32 characters are encountered in the file, that is declared at the hash map in the calculatefrequency_32 function.

 Next the minheap is built using the Heap class that is implemented in the code of max size 256.

 The frequencies are assigned to the each node iff the freq[i] is not zero thus to ensure that the freq[i] is not empty since we are storing for 32 characters.

 Next the Huffman tree is built based on the Huffman algorithm which takes the heap object as the parameter.

 Code is generated and printed using the genCode function and this is recursively implemented explained correctly in the code.

 Printotallength function is used to print the bit savings and the other relevant data as shown below in the sample output.

I was able to save accordingly as mentioned below with one of the book Bhagvadgita. For 32-character comparison, the actual total number of the bits are 645385 Total Bits of all the characters in the Huffman Encoding: 541969 Total Bits Saved: 103416

For 64 bit comparison, the actual total number of the bits are 824418 Total Bits of all the characters in the Huffman Encoding: 624489 Total Bits Saved:
199929

For 128 characters comparison, the actual total number of the bits are 1030414 Total Bits of all the characters in the Huffman Encoding: 699533 Total Bits Saved:
330881

I have implemented the code and have implemented all the three character considerations i.e.. 32, 64 and 128 characters. I have chosen the book that is attached in the canvas along with the report, and the below is output of the bits that are saved for the each encoding, for the 32 character encoding I have compared it with the 5 bit fixed code length, and for the 64-bit I have compared it with the 6 bit fixed length, and for the 128 characters, I have compared it with the 7 bit fixed code length. Here is the below output of the program: Please note that we need to select the appropriate options to see the corresponding output for the 32, 64 or 128 character-code encodings. Here is the below output:
For 32 character encoding enter 1 For 64 character encoding enter 2 For 28 character encoding enter 3 For Exit 0 1 00 2 h 0100 4 s 0101 4 i 0110 4 n 0111 4 a 1000 4 o 1001 4 d 10100 5 l 10101 5 t 1011 4 w 110000 6 m 110001 6 c 110010 6 g 110011 6 v 1101000 7 b 1101001 7 f 110101 6 u 110110 6 , 110111 6 e 1110 4 r 11110 5 p 1111100 7 ! 11111010 8 q 1111101100 10 z 111110110100 12 ? 111110110101 12 x 11111011011 11 ' 1111101110 10 j 1111101111 10 . 11111100 8 k 11111101 8 y 1111111 7

For 32-bit comparison, the actual total number of the bits are 645385 Total Bits of all the characters in the Huffman Encoding: 541969 Total Bits Saved: 103416
*********************************** For 64 bit ***************************************** 2 00 2 i 0100 4 n 0101 4 a 0110 4 o 0111 4 y 100000 6 k 1000010 7 v 1000011 7 d 10001 5 w 100100 6 T 1001010 7 j 100101100 9 L 100101101 9 D 100101110 9 G 100101111 9 l 10011 5 t 1010 4 m 101100 6 c 101101 6 g 101110 6 S 10111100 8 R 101111010 9 V 1011110110 10 ? 10111101110 11 x 10111101111 11 b 1011111 7 f 110000 6 u 110001 6 U 1100100000 10 Y 1100100001 10 F 110010001 9 ! 11001001 8 P 110010100 9 W 110010101 9 N 110010110 9 K 1100101110 10 C 1100101111 10 , 110011 6 p 1101000 7 I 11010010 8 A 11010011 8 O 110101000 9 B 110101001 9 . 11010101 8 H 110101100 9 E 110101101 9 q 11010111000 11 Q 1101011100100 13 z 1101011100101 13 J 1101011100110 13 X 1101011100111 13 ' 1101011101 10 M 110101111 9 r 11011 5 e 1110 4 h 11110 5 s 11111 5 For 64 bit comparison, the actual total number of the bits are 824418 Total Bits of all the characters in the Huffman Encoding: 624489 Total Bits Saved:
199929

***********************************For 128 Character Encoding ************************* 3 x 0000000000 10 2 00000000010 11 8 000000000110 12 ) 000000000111 12 q 0000000010 10 : 0000000011 10 H 00000001 8 . 0000001 7 E 00000100 8 ; 00000101 8 k 0000011 7 y 000010 6 M 00001100 8 ' 000011010 9 ( 000011011000 12 J 000011011001 12

  • 000011011010 12 0 000011011011 12 ? 00001101110 11 7 0000110111100 13 9 0000110111101 13 X 000011011111 12 - 0000111 7 s 0001 4 i 0010 4 n 0011 4 a 0100 4

01010 5 01011 5 o 0110 4 d 01110 5 v 0111100 7 T 0111101 7 w 011111 6 l 10000 5 m 100010 6 j 100011000 9 L 100011001 9 D 100011010 9 G 100011011 9 S 10001110 8 R 100011110 9 V 1000111110 10 6 1000111111000 13 Q 1000111111001 13 5 1000111111010 13 4 1000111111011 13 # 10001111111 11 t 1001 4 c 101000 6 g 101001 6 " 101010000 9 U 1010100010 10 Y 1010100011 10 F 101010010 9 [ 10101001100 11 ] 10101001101 11 K 1010100111 10 b 1010101 7 f 101011 6 u 101100 6 ! 10110100 8 P 101101010 9 W 101101011 9 N 101101100 9 1 10110110100 11 3 101101101010 12 z 1011011010110 13 ` 1011011010111000 16 $ 1011011010111001 16 % 10110110101110100 17 @ 10110110101110101 17 & 1011011010111011 16 / 10110110101111 14 C 1011011011 10 I 10110111 8 , 101110 6 p 1011110 7 A 10111110 8 O 101111110 9 B 101111111 9 e 1100 4 r 11010 5 h 11011 5 111 3 For 128 characters comparison, the actual total number of the bits are 1030414 Total Bits of all the characters in the Huffman Encoding: 699533 Total Bits Saved:
330881

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