4.5 Article

Intrinsic Dimensionality as a Metric for the Impact of Mission Design Parameters

期刊

出版社

AMER GEOPHYSICAL UNION
DOI: 10.1029/2022JG006876

关键词

intrinsic dimensionality; mission design; hyperspectral; imaging spectroscopy; surface biology and geology

资金

  1. NSF [1638720]
  2. Space-based Imaging Spectroscopy and Thermal (SISTER) pathfinder
  3. Surface Biology and Geology (SBG) project
  4. NASA Earth Science Designated Observable
  5. Division Of Environmental Biology
  6. Direct For Biological Sciences [1638720] Funding Source: National Science Foundation

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High-resolution space-based spectral imaging is crucial for monitoring Earth's changes and resource management. The measure of intrinsic dimensionality (ID) can quantitatively evaluate the sensitivity of performance to different design parameters.
High-resolution space-based spectral imaging of the Earth's surface delivers critical information for monitoring changes in the Earth system as well as resource management and utilization. Orbiting spectrometers are built according to multiple design parameters, including ground sampling distance (GSD), spectral resolution, temporal resolution, and signal-to-noise ratio. Different applications drive divergent instrument designs, so optimization for wide-reaching missions is complex. The Surface Biology and Geology component of NASA's Earth System Observatory addresses science questions and meets applications needs across diverse fields, including terrestrial and aquatic ecosystems, natural disasters, and the cryosphere. The algorithms required to generate the geophysical variables from the observed spectral imagery each have their own inherent dependencies and sensitivities, and weighting these objectively is challenging. Here, we introduce intrinsic dimensionality (ID), a measure of information content, as an applications-agnostic, data-driven metric to quantify performance sensitivity to various design parameters. ID is computed through the analysis of the eigenvalues of the image covariance matrix, and can be thought of as the number of significant principal components. This metric is extremely powerful for quantifying the information content in high-dimensional data, such as spectrally resolved radiances and their changes over space and time. We find that the ID decreases for coarser GSD, decreased spectral resolution and range, less frequent acquisitions, and lower signal-to-noise levels. This decrease in information content has implications for all derived products. ID is simple to compute, providing a single quantitative standard to evaluate combinations of design parameters, irrespective of higher-level algorithms, products, applications, or disciplines.

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