4.6 Article

A prediction-based lossless image compression procedure using dimension reduction and Huffman coding

Journal

MULTIMEDIA TOOLS AND APPLICATIONS
Volume 82, Issue 3, Pages 4081-4105

Publisher

SPRINGER
DOI: 10.1007/s11042-022-13283-3

Keywords

Run-length; Huffman; Arithmetic coding; Lossless JPEG; JPEG 2000; CALIC; JPEG XR; JPEG-LS; Compression ratio

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This paper proposes a lossless image compression method by reducing image dimensions and using prediction techniques, which demonstrates an improvement compared to existing techniques.
Advanced therapeutic imaging innovation produces an immense amount of information, predominantly from processed tomography and other imaging modalities. This causes a significant challenge when storing them on a local personal computer or communicating them over cyberspace. Therefore, a proficient image compression system is fundamentally required. From this perspective, this paper proposes a lossless image compression procedure by reducing image dimension and using a prediction technique. In the proposed strategy, the column dimension of a grey-scale image is first reduced and then the prediction errors are encoded using Huffman coding. The decoding process is carried out in the reverse direction. The proposed method is executed and applied to several bench-marked images. The performance of this proposed algorithm is assessed and compared with the state-of-the-art techniques based on several assessment criteria, such as average code length (ACL), compression ratio (CR), encoding time, decoding time, efficiency, peak signal to noise ratio (PSNR) and normalised correlation (NC). The proposed algorithm also demonstrates an improvement in the average code length compared with the state-of-the-art techniques.

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