4.7 Article

Lossless Compression of Color Filter Array Mosaic Images With Visualization via JPEG 2000

期刊

IEEE TRANSACTIONS ON MULTIMEDIA
卷 20, 期 2, 页码 257-270

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2017.2741426

关键词

Bayer color filter array (CFA); color filter arrays; image compression; JPEG 2000

资金

  1. FEDER
  2. Spanish Government (MINECO)
  3. Catalan Government [TIN2015-71126-R, TIN2012-38102-C03-03, FPU AP2010-0172, 2014SGR-691]

向作者/读者索取更多资源

Digital cameras have become ubiquitous for amateur and professional applications. The raw images captured by digital sensors typically take the form of color filter array (CFA) mosaic images, which must be developed (via digital signal processing) before they can be viewed. Photographers and scientists often repeat the development process using different parameters to obtain images suitable for different purposes. Since the development process is generally not invertible, it is commonly desirable to store the raw (or undeveloped) mosaic images indefinitely. Uncompressed mosaic image file sizes can be more than 30 times larger than those of developed images stored in JPEG format. Thus, data compression is of interest. Several compression methods for mosaic images have been proposed in the literature. However, they all require a custom decompressor followed by development-specific software to generate a displayable image. In this paper, a novel compression pipeline that removes these requirements is proposed. Specifically, mosaic images can be losslessly recovered from the resulting compressed files, and, more significantly, images can be directly viewed (decompressed and developed) using only a JPEG 2000 compliant image viewer. Experiments reveal that the proposed pipeline attains excellent visual quality, while providing compression performance competitive to that of state-of-the-art compression algorithms for mosaic images.

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