非线性端元提取在地球观测和天体信息学数据解释与压缩中的应用

A. Marinoni, P. Gamba
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引用次数: 0

摘要

近十年来,随着遥感大数据在天体物理学研究中的应用蓬勃发展,迫切需要一种新的技术和方法来有效地存储、压缩、检索和研究天文数据集。本文介绍了一种新的遥感数据集无损压缩策略。具体来说,新方法旨在将给定数据集的每个样本描述为多维空间中凸包内的一个点。因此,提出的框架旨在将每个样本表征为上述多维单纯形的极值点的非线性组合。因此,通过仅用驱动非线性混合的参数来描述这些样本,可以实现有效的压缩。实验结果表明,该架构可以有效地为地球观测和行星记录提供良好的压缩性能。
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Nonlinear endmember extraction in earth observations and astroinformatics data interpretation and compression
As remotely sensed Big Data applications in astrophysics research have been flourishing in the last decade, the need for a new class of techniques and methods for efficient storage, compression, retrieval and investigation of astronomical datasets has become urgent. In this paper, a novel strategy for lossless compression of large datasets composed by remote sensing records is introduced. Specifically, the new approach aims at describing each sample of the given dataset as a point living within a convex hull in a multidimensional space. Thus, the proposed framework aims at characterizing every sample as a nonlinear combination of the extremal points of the aforesaid multidimensional simplex. Therefore, efficient compression can be achieved by describing those samples by the parameters that drive the nonlinear mixture only. Experimental results show how the proposed architecture can effectively deliver great compression performance for both Earth observations and planetary records.
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