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Lossless Image Compression in CT Images Processing
Peter Ivanov, Agata Manolova, Roumen Kountchev
Faculty of Telecommunications at Technical University of Sofia 8 Kl. Ohridski Blvd, Sofia 1000 Bulgaria
Abstract: In the CT images, during compression, the loss of quality is reported and hence research has been conducted to offset this limitation. We in this paper, have presented a lossless compression system and to ensure complexity. The Hierarchical Adaptive Karhunenloeve transform method is used which ensured good energy for the decorrelation process. It is found to have better compression rate than others. This process helped to achieve the high decorrelation for the whole population of images. The main energy in the images is found to be place over the eigen images. The new algorithm introduced helped to decrease the complexity and found to be more effective.
Keywords: Decorrelation of CT Image Sequences, Lossless Compression, Hierarchical Adaptive KLT Transform, JPEG Lossless Image Compression in CT Images Processing
DOI:https://doi.org/10.6025/jmpt/2022/13/3/59-66
Full_Text   PDF 1.99 MB   Download:   105  times
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