Matches in SemOpenAlex for { <https://semopenalex.org/work/W2802602836> ?p ?o ?g. }
- W2802602836 endingPage "737" @default.
- W2802602836 startingPage "737" @default.
- W2802602836 abstract "We propose to replace traditional spectral index methods by unsupervised spectral unmixing methods for the exploration of large datasets of planetary hyperspectral images. The main goal of this article is to test the ability of these analysis techniques to automatically extract the spectral signatures of the species present on the surface and to map their abundances accurately and with an acceptable processing time. We consider observations of the surface of Mars acquired by the imaging spectrometer OMEGA aboard MEX as a case study. The moderate spatial resolution (≈300 m/pixel at best) of this instrument implies the systematic existence of geographical mixtures possibly conjugated with non-linear (e.g., intimate) mixtures. We examine the sensitivity of a series of state-of-the-art methods of unmixing to the intrinsic spectral variability of the species in the image and to intimate assemblages of compounds. This study is made possible thanks to the use of well-controlled synthetic data and a real OMEGA image, for which the present icy species (water and carbon dioxide ices) and their characteristic spectra are widely known by the planetary community. Furthermore, reference maps of component abundances are built by the inversion of a more realistic physical model (simulating the propagation of solar light through the atmosphere and reflected back to the sensor) in order to validate the methods with the real image by comparison with the maps extracted by unmixing. The results produced by the processing pipeline of the eigenvalue likelihood maximization (ELM), vertex component analysis (VCA) and non-negativity condition least squares error estimators (NNLS) are the most robust to non-linear effects, highly-mixed pixels and different types of mixtures. Despite this fact, the produced results are not always the best because the VCA method assumes the existence of pure pixels in the image, that is pixels completely occupied by a single species. However, this pipeline is very fast and provides endmember spectra that are always interpretable. Finally, it produces more accurate distribution maps than the spectral index methods. More generally, the potential benefits of unsupervised spectral unmixing methods in planetary exploration is emphasized." @default.
- W2802602836 created "2018-05-17" @default.
- W2802602836 creator A5027835055 @default.
- W2802602836 creator A5035508615 @default.
- W2802602836 creator A5036983420 @default.
- W2802602836 creator A5059241598 @default.
- W2802602836 date "2018-05-10" @default.
- W2802602836 modified "2023-10-12" @default.
- W2802602836 title "Exploration of Planetary Hyperspectral Images with Unsupervised Spectral Unmixing: A Case Study of Planet Mars" @default.
- W2802602836 cites W1540305567 @default.
- W2802602836 cites W1554810399 @default.
- W2802602836 cites W1902027874 @default.
- W2802602836 cites W1957094454 @default.
- W2802602836 cites W1961730324 @default.
- W2802602836 cites W1963659868 @default.
- W2802602836 cites W1969207135 @default.
- W2802602836 cites W1978094987 @default.
- W2802602836 cites W2008692765 @default.
- W2802602836 cites W2009155303 @default.
- W2802602836 cites W2019249717 @default.
- W2802602836 cites W2020635637 @default.
- W2802602836 cites W2030753668 @default.
- W2802602836 cites W2032944446 @default.
- W2802602836 cites W2036530005 @default.
- W2802602836 cites W2049693129 @default.
- W2802602836 cites W2050041778 @default.
- W2802602836 cites W2058484777 @default.
- W2802602836 cites W2061104252 @default.
- W2802602836 cites W2063069198 @default.
- W2802602836 cites W2063790512 @default.
- W2802602836 cites W2064472443 @default.
- W2802602836 cites W2070424424 @default.
- W2802602836 cites W2074010031 @default.
- W2802602836 cites W2079964288 @default.
- W2802602836 cites W2084293854 @default.
- W2802602836 cites W2091535610 @default.
- W2802602836 cites W2095343758 @default.
- W2802602836 cites W2098150948 @default.
- W2802602836 cites W2101837437 @default.
- W2802602836 cites W2107222994 @default.
- W2802602836 cites W2125678373 @default.
- W2802602836 cites W2126172406 @default.
- W2802602836 cites W2126344578 @default.
- W2802602836 cites W2127062304 @default.
- W2802602836 cites W2135099653 @default.
- W2802602836 cites W2137110328 @default.
- W2802602836 cites W2138075810 @default.
- W2802602836 cites W2140501674 @default.
- W2802602836 cites W2145781461 @default.
- W2802602836 cites W2146376665 @default.
- W2802602836 cites W2156944376 @default.
- W2802602836 cites W2157321686 @default.
- W2802602836 cites W2162514207 @default.
- W2802602836 cites W2163886442 @default.
- W2802602836 cites W2165755981 @default.
- W2802602836 cites W2170609420 @default.
- W2802602836 cites W2318512420 @default.
- W2802602836 cites W2527329788 @default.
- W2802602836 cites W2963982292 @default.
- W2802602836 cites W2993330478 @default.
- W2802602836 cites W3099737951 @default.
- W2802602836 cites W3101353736 @default.
- W2802602836 cites W3122463936 @default.
- W2802602836 cites W4233760599 @default.
- W2802602836 doi "https://doi.org/10.3390/rs10050737" @default.
- W2802602836 hasPublicationYear "2018" @default.
- W2802602836 type Work @default.
- W2802602836 sameAs 2802602836 @default.
- W2802602836 citedByCount "6" @default.
- W2802602836 countsByYear W28026028362018 @default.
- W2802602836 countsByYear W28026028362019 @default.
- W2802602836 countsByYear W28026028362020 @default.
- W2802602836 countsByYear W28026028362021 @default.
- W2802602836 crossrefType "journal-article" @default.
- W2802602836 hasAuthorship W2802602836A5027835055 @default.
- W2802602836 hasAuthorship W2802602836A5035508615 @default.
- W2802602836 hasAuthorship W2802602836A5036983420 @default.
- W2802602836 hasAuthorship W2802602836A5059241598 @default.
- W2802602836 hasBestOaLocation W28026028361 @default.
- W2802602836 hasConcept C121332964 @default.
- W2802602836 hasConcept C127313418 @default.
- W2802602836 hasConcept C153180895 @default.
- W2802602836 hasConcept C154945302 @default.
- W2802602836 hasConcept C158479148 @default.
- W2802602836 hasConcept C159078339 @default.
- W2802602836 hasConcept C160633673 @default.
- W2802602836 hasConcept C41008148 @default.
- W2802602836 hasConcept C44870925 @default.
- W2802602836 hasConcept C51244244 @default.
- W2802602836 hasConcept C62649853 @default.
- W2802602836 hasConcept C83260615 @default.
- W2802602836 hasConcept C87355193 @default.
- W2802602836 hasConceptScore W2802602836C121332964 @default.
- W2802602836 hasConceptScore W2802602836C127313418 @default.
- W2802602836 hasConceptScore W2802602836C153180895 @default.
- W2802602836 hasConceptScore W2802602836C154945302 @default.
- W2802602836 hasConceptScore W2802602836C158479148 @default.
- W2802602836 hasConceptScore W2802602836C159078339 @default.