Capturing global redundancy to improve compression of large images

B. L. Kess, S. Reichenbach
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引用次数: 2

Abstract

A Source Specific Model for Global Earth Data (SSM-GED) is a lossless compression method for large images that captures global redundancy in the data and achieves a significant improvement over CALIC and DCXT-BT/CARP, two leading lossless compression schemes. The Global Land 1-km Advanced Very High Resolution Radiometer (AVHRR) data, which contains 662 Megabytes (MB) per band, is an example of a large data set that requires decompression of regions of the data. For this reason, SSM-GED compresses the AVHRR data as a collection of subwindows. This approach defines the statistical parameters for the model prior to compression. Unlike universal models that assume no a priori knowledge of the data, SSM-GED captures global redundancy that exists among all of the subwindows of data. The overlap in parameters among subwindows of data enables SSM-GED to improve the compression rate by increasing the number of parameters and maintaining a small model cost for each subwindow of data.
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捕获全局冗余以改善大图像的压缩
全球地球数据源特定模型(SSM-GED)是一种用于大图像的无损压缩方法,它捕获了数据中的全局冗余,并且比CALIC和dxt - bt /CARP这两种领先的无损压缩方案取得了显着改进。全球陆地1公里高级甚高分辨率辐射计(AVHRR)数据,每个波段包含662兆字节(MB),是需要对数据区域进行解压的大型数据集的一个例子。出于这个原因,SSM-GED将AVHRR数据压缩为一个子窗口的集合。这种方法在压缩之前为模型定义统计参数。与假定没有数据先验知识的通用模型不同,SSM-GED捕获存在于数据所有子窗口之间的全局冗余。数据子窗口间参数的重叠使得SSM-GED可以通过增加参数数量和保持每个数据子窗口较小的模型代价来提高压缩率。
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