Hyperspectral Image Analysis Using Genetic Programming 2002: Unterschied zwischen den Versionen
(Die Seite wurde neu angelegt: „== Reference == Brian J. Ross, A.G. Gualtieri, F. Fueten, P. Budkewitsch: Hyperspectral Image Analysis Using Genetic Programming_2002 | Hyperspectral Ima…“) |
(kein Unterschied)
|
Aktuelle Version vom 14. Januar 2015, 11:31 Uhr
Inhaltsverzeichnis
Reference
Brian J. Ross, A.G. Gualtieri, F. Fueten, P. Budkewitsch: Hyperspectral Image Analysis Using Genetic Programming. W.B.Langdon et al.: GECCO 2002, CA, Morgan Kaufmann. 2002. pp. 1196-1203.
DOI
Abstract
Genetic programming is used to evolve min- eral identification functions for hyperspec- tral images. The input image set comprises 168 images from different wavelengths rang- ing from 428 nm (visible blue) to 2507 nm (invisible shortwave in the infrared), taken over Cuprite, Nevada, with the AVIRIS hy- perspectral sensor. A composite mineral im- age indicating the overall reflectance percent- age of three minerals (alunite, kaolnite, bud- dingtonite) is used as a reference or “solu- tion” image. The training set is manually se- lected from this composite image. The task of the GP system is to evolve mineral identifiers, where each identifier is trained to identify one of the three mineral specimens. A number of different GP experiments were undertaken, which parameterized features such as thresh- olded mineral reflectance intensity and target GP language. The results are promising, es- pecially for minerals with higher reflectance thresholds (more intense concentrations).
Extended Abstract
Bibtex
Used References
Aguilar, D.P.K., D.P.M. Cobo, D..R.P. Utrero and D.M.A.H. Nieves (2000). Abundance Extractions from AVIRIS Image Using a Self-Organizing Neu- ral Network. In: Proceedings of the Ninth Annual JPL Airborne Earth Science Workshop.
Brumby, S.P., J. Theiler, S. Perkins, N.R. Harvey and J.J. Szymanski (2001). Genetic programming approach to extracting features from remotely sensed imagery. In: Proceedings FUSION 2001.
Civco, D.L. (1993). Artificial neural networks for land-cover classification and mapping. Interna- tional Journal of Geographical Information Sys- tems 7(2), 173–186.
Clark, R.N. and G.A. Swayze (1995). Mapping Min- erals, Amorphous Materials, Environmental Ma- terials, Vegetation, Water, Ice and Snow, and Other Materials: The USGS Tricorder Algorithm. In: Proceedings of the Fifth Annual JPL Air- borne Earth Science Workshop (R.O. Green, Ed.). pp. 39–40. JPL Publication 95-1.
Daida, J.M., J.D. Hommes, T.F. Bersano-Begey, S.J. Ross and J.F. Vesecky (1996). Algorithm Discov- ery Using the Genetic Programming Paradigm: Extracting Low-Contrast Curvilinear Features from SAR Images of Arctic Ice. In: Advances in Genetic Programming II (P. Angeline and K.E. Kinnear, Eds.). pp. 417–442. MIT Press.
Dreyer, P. (1993). Classification of Land Cover Us- ing Optimized Neural Nets on SPOT Data. Pho- togrammetric Engineering and Remote Sensing 59(5), 617–621.
Foody, G.M. and M.K. Arora (1997). An evaluation of some factors affecting the accuracy of classifica- tion by an artificial neural network. International Journal of Remote Sensing 18(4), 799–810.
Green, R.O., M.L. Eastwood, C.M. Sarture, T.G. Chrien, M. Aronsson, B.J. Chippendale, J.A. Faust, B.E. Pavri, C.J. Chovit, M. Solis, M.R. Olah and O. Williams (1998). Imaging Spectrom- etry and the Airborne Visible/Infrared Imaging Spectrometer (AVIRIS). Remote Sensing of En- vironment 65, 227–248.
Harvey, N.R., S.P. Brumby, S.J. Perkins, R.B. Porter, J. Theiler, A.C. Young, J.J. Szymanski and J.J. Bloch (2000). Parallel evolution of image process- ing tools for multispectral imagery. In: Proceed- ings Imaging Spectrometry IV: SPIE-4132. Intl. Soc. for Opt. Eng.. pp. 72–80.
Howard, D. and S.C. Roberts (1999). A Staged Ge- netic Programming Strategy for Image Analysis. In: Proc. GECCO-99 (W. Banzhaf et al, Ed.). pp. 1047–1052.
Larch, D. (1994). Genetic Algorithms for Terrain Cat- egorization of Landsat Images. In: Proceedings SPIE-2231: Algorithms for Multispectral and Hy- perspectral Imagery. Intl. Soc. for Opt. Eng.. pp. 2–6.
Merenyi, E., R.B. Singer and W.H. Farrand (1993). Classification of the LCVF AVIRIS Test Site with a Kohonen Artificial Neural Network. In: Proceedings of the Fourth Annual JPL Airborne Earth Science Workshop. pp. 117–120.
Montana, D.J. (1995). Strongly Typed Genetic Pro- gramming. Evolutionary Computation 3(2), 199– 230.
Neville, R.A., C. Nadeau, J. Levesque, T. Szeredi, K. Staenz, P. Hauff and G.A. Borstad (1998). Hyperspectral Imagery for Mineral Exploration: Comparison of Data from Two Airborne Sensors. In: Proceedings Imaging Spectrometry VI: SPIE- 3438. Intl. Soc. for Opt. Eng.. pp. 74–83.
Perkins, S.J., J. Theiler, S.P. Brumby, N.R. Har- vey R.B. Porter, J.J. Szymanski and J.J. Bloch (2000). GENIE: A Hybrid Genetic Algorithm for Feature Classification in Multi-Spectral Images. In: Applications and Science of Neural Networks, Fuzzy Systems, and Evolutionary Computation III (B. Bosacchi, D.B. Fogel and J.C. Bezdel, Eds.). pp. 52–62.
Rauss, P.J., J.M. Daida and S. Chaudhary (2000). Classification of Spectral Imagery Using Genetic Programming. In: GECCO-2000 (D. Whitley et al., Ed.). Morgan Kaufmann. pp. 726–733.
Resmini, R.G., M.E. Jappus, W.S Aldrich, J.C. Harsanyi and M. Anderson (1997). Mineral map- ping with Hyperspectral Digital Imagery Col- lection Experiment (HYDICE) sensor data at Cuprite, Nevada, U.S.A.. International Journal of Remote Sensing 18(7), 1553–1570.
Ridd, M.K., N.D. Ritter, N.A. Bryant and R.O Green (1992). AVIRIS Data and Neural Networks Ap- plied to an Urban Ecosystem. In: Proceedings of the Second Annual JPL Airborne Earth Science Workshop. pp. 129–131.
Staenz, K. and D.J. Williams (1997). Retrieval of sur- face reflectance from hyperspectral data using a look-up table approach. Canadian Journal Re- mote Sensing 23, 345–368.
Yang, H., F. van der Meer, W. Bakker and Z.J. Tan (1999). A back-propagation neural network for mineralogical mapping from AVIRIS data. Inter- national Journal of Remote Sensing 20(1), 97– 110.
Zongker, D. and B. Punch (1995). lil-gp 1.0 User’s Manual. Dept. of Computer Science, Michigan State University.
Links
Full Text
http://www.cosc.brocku.ca/~bross/research/RWA008.pdf