DocumentCode :
2288246
Title :
Training of a crater detection algorithm for Mars crater imagery
Author :
Vinogradova, Tatiana ; Burl, Michael ; Mjolsness, Eric
Author_Institution :
Jet Propulsion Lab., California Inst. of Technol., Pasadena, CA, USA
Volume :
7
fYear :
2002
fDate :
2002
Firstpage :
475364
Abstract :
Automatic feature identification from orbital imagery would be of wide use in planetary science. For example, the ability to count craters on homogeneous surfaces would enable relative dating of geological processes. The scaling of crater densities and impact rates with crater size is another important issue which could be addressed by automated crater counting. Geological feature cataloging can practically be achieved by hand-labeled imagery only for restricted numbers of features. To handle massive new data sets and higher resolutions such as those arising from Mars Global Surveyor, automated feature identification will be required. Many pattern recognition algorithms could be applied to this problem, but a systematic validation process will be required to select the best method for each scientific application and to determine its reliability for scientific use. We demonstrate such a validation process applied to a particular trainable feature identification algorithm when used to detect craters in synthetic imagery and in Mars Global Surveyor imagery. The feature identification algorithm is the continuously scalable template matching algorithm of Burl et al. (2001). The validation process involves separate experiments for subpopulations selected from a labeled crater corpus. The subpopulations are defined by crater density. For the selected subpopulations, the validation process includes training the algorithm on some craters and testing its identification accuracy on others. These results can be summarized in terms of statistical efficiency measures. Efficiency results depend on the subpopulation tested. We illustrate algorithm performance on data from Martian regions of high scientific interest.
Keywords :
Mars; computer vision; edge detection; feature extraction; geophysical techniques; identification technology; image matching; image recognition; meteorite craters; planetary surfaces; statistical analysis; Mars Global Surveyor; Mars crater imagery; automated crater counting; automatic feature identification; continuously scalable template matching algorithm; crater counting; crater density scaling; crater detection algorithm training; crater size; crater subpopulations; data resolutions; data sets; feature identification algorithm; geological feature cataloging; hand-labeled imagery; homogeneous surfaces; identification accuracy; impact rates; orbital imagery; pattern recognition algorithms; planetary science; relative geological process dating; reliability; scientific application; statistical efficiency measures; synthetic imagery; systematic validation process; trainable feature identification algorithm; validation process; Detection algorithms; Extraterrestrial measurements; Fault diagnosis; Geology; History; Laboratories; Mars; Planetary orbits; Propulsion; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Aerospace Conference Proceedings, 2002. IEEE
Print_ISBN :
0-7803-7231-X
Type :
conf
DOI :
10.1109/AERO.2002.1035297
Filename :
1035297
Link To Document :
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