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Lossless Compression of Microarray Images Using Image-Dependent Finite-Context Models

机译:使用图像相关的有限上下文模型对微阵列图像进行无损压缩

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摘要

The use of microarray expression data in state-of-the-art biology has been well established. The widespread adoption of this technology, coupled with the significant volume of data generated per experiment, in the form of images, has led to significant challenges in storage and query retrieval. In this paper, we present a lossless bitplane-based method for efficient compression of microarray images. This method is based on arithmetic coding driven by image-dependent multibitplane finite-context models. It produces an embedded bitstream that allows progressive, lossy-to-lossless decoding. We compare the compression efficiency of the proposed method with three image compression standards (JPEG2000, JPEG-LS, and JBIG) and also with the two most recent specialized methods for microarray image coding. The proposed method gives better results for all images of the test sets and confirms the effectiveness of bitplane-based methods and finite-context modeling for the lossless compression of microarray images.
机译:微阵列表达数据在最先进的生物学中的用途已得到广泛确立。这项技术的广泛采用,再加上每个实验以图像形式生成的大量数据,给存储和查询检索带来了巨大挑战。在本文中,我们提出了一种基于无损位平面的有效压缩微阵列图像的方法。该方法基于图像相关的多位平面有限上下文模型驱动的算术编码。它产生嵌入式比特流,可进行渐进的,无损至无损解码。我们将所提出的方法的压缩效率与三种图像压缩标准(JPEG2000,JPEG-LS和JBIG)以及两种最新的用于微阵列图像编码的专门方法进行了比较。所提出的方法为测试集的所有图像提供了更好的结果,并证实了基于位平面的方法和有限上下文建模对于微阵列图像无损压缩的有效性。

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