使用大规模并行SIMD机器的多光谱图像数据的渐进矢量量化

M. Manohar, J. Tilton
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引用次数: 30

摘要

采用矢量量化(VQ)的渐进传输(PT)被称为渐进矢量量化(PVQ),用于通过计算机网络对多光谱图像数据进行有效的远程浏览和传播。理论上,任何压缩技术都可以用于PT模式。这里选择VQ作为基线压缩技术,因为VQ编码的图像可以通过简单的表查找过程进行解码,这样用户就不会因为使用压缩数据而产生计算问题。码本生成或训练阶段是VQ中最关键的部分。为此目的使用了两种不同的算法。第一种是基于著名的林德-布佐-格雷(LBG)算法。另一种是基于自组织特征映射(SOFM)。由于训练和编码都是计算密集型任务,因此作者为此使用了SIMD机器MasPar。从先进甚高分辨率辐射计(AVHRR)仪器图像中获得的多光谱图像构成了测试平台。这两种VQ技术的结果在给定均方误差(MSE)的压缩比中进行了比较。使用这种渐进式压缩技术传输图像数据而不丢失所需的字节数通常少于标准unix压缩算法所需的字节数
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progressive vector quantization of multispectral image data using a massively parallel SIMD machine
Progressive transmission (PT) using vector quantization (VQ) is called progressive vector quantization (PVQ) and is used for efficient telebrowsing and dissemination of multispectral image data via computer networks. Theoretically any compression technique can be used in PT mode. Here VQ is selected as the baseline compression technique because the VQ encoded images can be decoded by simple table lookup process so that the users are not burdened with computational problems for using compressed data. Codebook generation or training phase is the most critical part of VQ. Two different algorithms have been used for this purpose. The first of these is based on well-known Linde-Buzo-Gray (LBG) algorithm. The other one is based on self organizing feature maps (SOFM). Since both training and encoding are computationally intensive tasks, the authors have used MasPar, a SIMD machine for this purpose. The multispectral imagery obtained from Advanced Very High Resolution Radiometer (AVHRR) instrument images form the testbed. The results from these two VQ techniques have been compared in compression ratios for a given mean squared error (MSE). The number of bytes required to transmit the image data without loss using this progressive compression technique is usually less than the number of bytes required by standard unix compress algorithm.<>
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