Generalization and Validation of MACHI: Minimal Atmospheric Compensation for Hyperspectral Images
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Atmospheric correction (AC) is essential for deriving accurate surface reflectance
from satellite imagery for ocean color studies. Previous attempts to apply AC to
satellite data from the Norwegian small-satellite mission HYPSO (HYPerspectral
Smallsat for Ocean observation) have been unsuccessful, with a problem of pro ducing negative blue-band reflectance. To address this, the Minimal Atmospheric
Compensation for Hyperspectral Images (MACHI) algorithm was developed as a
fast, unsupervised alternative that requires no external atmospheric data or sensor specific tuning. MACHI estimates atmospheric parameters in a simplified atmo spheric model by optimizing for spectral smoothness in the retrieved ground re flectance under physical constraints.
This thesis generalizes the theoretical framework of MACHI to support arbitrary
smoothing kernels and introduces a new Python implementation capable of efficient
batch processing. The algorithm was applied to a selection of scenes from HYPSO-2,
the second satellite of the HYPSO mission, and evaluated through a convergence
analysis and validation against ground-based measurements from the AERONET OC program, as well as a comparison to retrievals from POLYMER, an established
AC algorithm for water applications.
Convergence analysis shows fast and stable convergence of MACHI. Validation indi cates that MACHI retrieves physically plausible atmospheric parameters and surface
reflectance spectra that are comparable to both ground measurements and estab lished AC methods. This while also avoiding the negative reflectance artifacts ob served in previous attempts. However, the validation results also reveal a systematic
overestimation, particularly in the blue region, as well as a residual absorption fea ture near 760 nm, indicating a need for further development and testing of MACHI.
Overall, this work demonstrates the potential of smoothness-based optimization for
hyperspectral AC and provides a foundation for future enhancements, such as more
detailed atmospheric modeling, refined initialization, and testing on other sensors.
Beskrivning
Ämne/nyckelord
atmospheric correction, hyperspectral imagery, earth observation, re mote sensing, surface reflectance retrieval, regularization, optimization, MACHI
