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Investigative study of multispectral lossy data compression using vector quantization

机译:矢量量化的多谱有损数据压缩研究

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Abstract: A feasibility study was conducted to investigate the advantages of data compression techniques on multispectral imagery data acquired from airborne scanners maintained and operated by NASA at the Stennis Space Center. The technique used was spectral vector quantization. The vector is defined in the multispectral imagery context as an array of pixels from the same location from each channel. The error obtained in substituting the reconstructed images for the original set is compared for different compression ratios. Also, the eigenvalues of the covariance matrix obtained from the reconstructed data set are compared with the eigenvalues of the original set. The effects of varying the size of the vector codebook on the quality of the compression and on subsequent classification are also presented. The rate of compression is programmable. However, the higher the compression ratio, the greater is the degradation between the original and the reconstructed images. The analysis for 6 channels of data acquired by the thermal infrared multispectral scanner (TIMS) resulted in compression ratios varying from 24:1 (RMS error of 8.8 pixels) to 7:1 (RMS error of 1.9 pixels). The analysis for 7 channels of data acquired by the calibrated airborne multispectral scanner (CAMS) resulted in compression ratios varying from 28:1 (RMS error of 15.2 pixels) to 8:1 (RMS error of 3.6 pixels). The technique of vector quantization can also be used to interpret the main features in the image, since those features are the ones that make up the codebook. Hence, vector quantization not only compresses the data, but also classifies it. The original and reconstructed images were not only analyzed for their RMS error but also for the similarity in their covariance matrices. Using the principal components analysis the eigenvalues of the covariance matrix of the original multispectral data-set were found to be highly correlated with those of the reconstructed data-set. The algorithms were implemented in software and interfaced with the help of dedicated image processing boards to an 80386 PC compatible computer. Modules were developed for the task of image compression and image analysis. These modules are very general in nature and are thus capable of analyzing any sets or types of images or voluminous data sets. Also, supporting software to perform image processing for visual display and interpretation of the compressed/classified images was developed. !10
机译:摘要:进行了一项可行性研究,以研究数据压缩技术对从Stennis航天中心的NASA维护和操作的机载扫描仪获取的多光谱图像数据的优势。使用的技术是频谱矢量量化。向量在多光谱图像上下文中定义为来自每个通道相同位置的像素阵列。对于不同的压缩率,比较了将重建图像替换为原始图像集所获得的误差。而且,将从重构数据集获得的协方差矩阵的特征值与原始集合的特征值进行比较。还介绍了改变矢量码本大小对压缩质量和后续分类的影响。压缩率是可编程的。但是,压缩率越高,原始图像和重建图像之间的降级就越大。通过热红外多光谱扫描仪(TIMS)对6个通道的数据进行分析,得出压缩率从24:1(8.8像素的RMS误差)到7:1(1.9像素的RMS误差)不等。通过校准的机载多光谱扫描仪(CAMS)对7个通道的数据进行分析,得出压缩比从28:1(RMS误差为15.2像素)到8:1(RMS误差为3.6像素)不等。矢量量化技术也可以用于解释图像中的主要特征,因为这些特征是构成码本的那些特征。因此,矢量量化不仅压缩数据,而且对数据进行分类。不仅分析原始图像和重建图像的RMS误差,还分析其协方差矩阵的相似性。使用主成分分析发现原始多光谱数据集的协方差矩阵的特征值与重建数据集的特征值高度相关。该算法在软件中实现,并在专用图像处理板的帮助下与80386 PC兼容计算机连接。开发了用于图像压缩和图像分析任务的模块。这些模块本质上是非常通用的,因此能够分析图像或大量数据集的任何集合或类型。另外,开发了用于执行图像处理以进行可视显示和对压缩/分类图像进行解释的支持软件。 !10

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