A REVIEW OF INTEGRATION OF WAVELET AND HUFFMAN COMPRESSION MECHANISM TO IMPROVE SECURITY WITH FINE IMAGE QUALITY
Keywords:
Image Compression, Huffman, Wavelet Mechanism, Mean square errorAbstract
The Huffman and wavelet compression mechanism have been discussed to
improve security with fine image quality. There are several researches related to the
compression of graphical content which are discussed here. Huffman compression
has been applied on first layer and wavelet mechanism has been applied to compress
the content on second layer. The first step of Huffman coding technique is to reduce
input graphical contents to order histogram. Two performance parameters are
considered to measure the performance of graphical content compression algorithm.
The proposed integration is beneficial to compress the data without losing its quality.
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