Title :
New clustering algorithm for Vector Quantization using Slant transform
Author :
Thepade, Sudeep D. ; Mhaske, Vandana ; Kurhade, Vedant
Author_Institution :
Dean of R&D, Pimpri Chinchwad Coll. of Eng., Nigdi, Pune, India
Abstract :
Vector Quantization is an effective and simple method for lossy image compression. Codebook generation acts as important phase in Vector Quantization (VQ). The codebook is used to encode the image blocks for image compression. The codebook generation algorithm is generally chosen to have minimum distortion between the original image and the reconstructed image. The paper presents an effective clustering algorithm to generate codebook for vector quantization. In Kekre´s Error Vector Rotation (KEVR) while splitting the cluster every time new orientation is introduced using error vector sequence. This error vector sequence is binary representation of numbers, so cluster orientation change slowly in every iteration. The Kekre´s Error Vector Rotation using Walsh (KEVRW) uses Walsh sequence to rotate the error vector. Because of this cluster orientation change rapidly in every iteration. The proposed codebook generation technique Thepade´s Slant Error Vector Rotation (TSlEVR) is based on KEVR algorithm. Here the error vector used for splitting the clusters in Vector Quantization is proposed to be prepared using discrete Slant transform matrix. The proposed methodology is tested on different images for various codebook sizes. The obtained results show that TSlEVR gives less MSE as well as less distortion as compared to KEVR, KEVRW indicating better image compression.
Keywords :
discrete transforms; image coding; image reconstruction; image sequences; iterative methods; matrix algebra; pattern clustering; vector quantisation; KEVR; Kekre error vector rotation; TSlEVR; Thepade slant error vector rotation; Walsh sequence; binary number representation; cluster orientation; clustering algorithm; codebook generation; discrete slant transform matrix; error vector sequence; image block encoding; image reconstruction; lossy image compression; vector quantization; Clustering algorithms; Image coding; Image reconstruction; Training; Transforms; Vector quantization; Vectors; Codebook; Image Compression; KEVR; KEVRW; Slant transform; TSlEVR; Vector Quantization;
Conference_Titel :
Emerging Trends and Applications in Computer Science (ICETACS), 2013 1st International Conference on
Conference_Location :
Shillong
Print_ISBN :
978-1-4673-5249-9
DOI :
10.1109/ICETACS.2013.6691415