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LOSSY COMPRESSION OF HYPERSPECTRAL DATA USING VECTOR QUANTIZATION

机译:矢量量化的高光谱数据的有损压缩

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Efficient compression techniques are required for the coding of hyperspectral data. Lossless compression is required in the transmission and storage of data within the distribution system. Lossy techniques have a role in the initial analysis of hyperspectral data where large quantities of data are evaluated to select smaller al-eas for more detailed evaluation. Central to lossy compression is the development of a suitable distortion measure, and this work discusses the applicability of extant measures in video coding to the compression of hyperspectral imagery. Criteria for a remote sensing distortion measure are developed and suitable distortion. measures are discussed One measure [the percentage maximum absolute distortion (PMAD) measure] is considered to be a suitable candidate for application to remotely sensed images. The effect of lossy compression is then investigated on the maximum likelihood classification of hyperspectral images, both directly on the original reconstructed data and on. features extracted by the decision boundary feature extraction (DBFE) technique. The effect of the PMAD measure is determined on the classification of an image reconstructed with varying degrees of distortion. Despite some anomalies caused by challenging discrimination tasks, the classification accuracy of both the total image and its constituent classes remains predictable as the level of distortion increases. Although total classification accuracy is reduced from 96.8% for the original image to 82.8% for the image compressed with 4% PMAD, the loss in accuracy is not significant (less that 8%) for most classes other than those that present a challenging classification problem. Yet the compressed image is 1/17 the size of the original. (C) Elsevier Science Inc., 1997. [References: 10]
机译:对于高光谱数据的编码,需要有效的压缩技术。分发系统中数据的传输和存储需要无损压缩。有损技术在高光谱数据的初始分析中起作用,在该分析中,对大量数据进行评估以选择较小的区域进行更详细的评估。有损压缩的核心是开发合适的失真度量,并且这项工作讨论了视频编码中现有度量对高光谱图像压缩的适用性。制定了遥感失真测量的标准和适当的失真。讨论了这些措施一种措施[最大绝对失真百分比(PMAD)措施]被认为是适用于遥感图像的合适候选方法。然后研究有损压缩对高光谱图像的最大似然分类的影响,无论是直接在原始重建数据上还是在原始数据上。通过决策边界特征提取(DBFE)技术提取的特征。 PMAD措施的效果取决于以不同程度的失真重建的图像的分类。尽管挑战性的区分任务导致一些异常,但是总图像及其组成类别的分类精度随着失真程度的提高仍是可预测的。尽管总分类准确度从原始图像的96.8%降低为使用4%PMAD压缩的图像的82.8%,但是对于大多数类别,除了那些具有挑战性的分类问题之外,其他类别的准确性损失并不显着(小于8%) 。压缩后的图像只有原始图像的1/17。 (C)Elsevier Science Inc.,1997年。[参考:10]

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