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A Python package for Hyperspectral quality estimation in hyperspectral imaging (imaging spectroscopy)

Project description

HyperQuest

Build Status PyPI PyPI - Python Version Downloads

hyperquest: A Python package for estimating image-wide quality estimation metrics of hyperspectral imaging (imaging spectroscopy). Computations are sped up and scale with number of cpus.

Important: this package assumes the following about input hyperspectral data:

  • Radiance (if using radiative transfer model must be in microW/cm2/nm/sr (for now))
  • Data must be in NetCDF (.nc) or ENVI (.hdr)
  • Pushbroom imaging spectrometer, such as:
    • AVIRIS-Classic, AVIRIS-NG, AVIRIS-3, DESIS, EnMAP, EMIT, GaoFen-5, HISUI, Hyperion EO-1, HySIS, PRISMA, SEBASS, Tanager
  • For smile estimation you must use data that has not been georeferenced.

Installation Instructions

The latest release can be installed via pip:

pip install hyperquest

All Methods

Category Method Description
SNR hrdsdc() Homogeneous regions division and spectral de-correlation (Gao et al., 2008)
rlsd() Residual-scaled local standard deviation (Gao et al., 2007)
ssdc() Spectral and spatial de-correlation (Roger & Arnold, 1996)
Co-Registration sub_pixel_shift() Computes sub pixel co-registration between the VNIR & VSWIR imagers using skimage phase_cross_correlation
Smile smile_metric() Similar to MATLAB "smileMetric". Computes derivatives of O2 and CO2 absorption features across-track (Dadon et al., 2010).
nodd_o2a() Similar to method in Felde et al. (2003) to solve for nm shift at O2-A across-track. Requires radiative transfer model run.
Radiative Transfer run_libradtran() Runs libRadtran based on user input geometry and atmosphere at 1.0 cm-1. Saves to a .csv file for use in methods requiring radiative transfer.

Usage example

libRadtran install instructions

References:

  • Cogliati, S., Sarti, F., Chiarantini, L., Cosi, M., Lorusso, R., Lopinto, E., ... & Colombo, R. (2021). The PRISMA imaging spectroscopy mission: overview and first performance analysis. Remote sensing of environment, 262, 112499.
  • Curran, P. J., & Dungan, J. L. (1989). Estimation of signal-to-noise: a new procedure applied to AVIRIS data. IEEE Transactions on Geoscience and Remote sensing, 27(5), 620-628.
  • Dadon, A., Ben-Dor, E., & Karnieli, A. (2010). Use of derivative calculations and minimum noise fraction transform for detecting and correcting the spectral curvature effect (smile) in Hyperion images. IEEE Transactions on Geoscience and Remote Sensing, 48(6), 2603-2612.
  • Felde, G. W., Anderson, G. P., Cooley, T. W., Matthew, M. W., Berk, A., & Lee, J. (2003, July). Analysis of Hyperion data with the FLAASH atmospheric correction algorithm. In IGARSS 2003. 2003 IEEE International Geoscience and Remote Sensing Symposium. Proceedings (IEEE Cat. No. 03CH37477) (Vol. 1, pp. 90-92). IEEE.
  • Gao, L., Wen, J., & Ran, Q. (2007, November). Residual-scaled local standard deviations method for estimating noise in hyperspectral images. In Mippr 2007: Multispectral Image Processing (Vol. 6787, pp. 290-298). SPIE.
  • Gao, L. R., Zhang, B., Zhang, X., Zhang, W. J., & Tong, Q. X. (2008). A new operational method for estimating noise in hyperspectral images. IEEE Geoscience and remote sensing letters, 5(1), 83-87.
  • Mayer, B., & Kylling, A. (2005). The libRadtran software package for radiative transfer calculations-description and examples of use. Atmospheric Chemistry and Physics, 5(7), 1855-1877.
  • Roger, R. E., & Arnold, J. F. (1996). Reliably estimating the noise in AVIRIS hyperspectral images. International Journal of Remote Sensing, 17(10), 1951-1962.
  • Scheffler, D., Hollstein, A., Diedrich, H., Segl, K., & Hostert, P. (2017). AROSICS: An automated and robust open-source image co-registration software for multi-sensor satellite data. Remote sensing, 9(7), 676.
  • Thompson, D. R., Green, R. O., Bradley, C., Brodrick, P. G., Mahowald, N., Dor, E. B., ... & Zandbergen, S. (2024). On-orbit calibration and performance of the EMIT imaging spectrometer. Remote Sensing of Environment, 303, 113986.

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