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The Cyborg Astrobiologist: Porting from a wearable computer to the Astrobiology Phone-cam

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 نشر من قبل Patrick C. McGuire
 تاريخ النشر 2007
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We have used a simple camera phone to significantly improve an `exploration system for astrobiology and geology. This camera phone will make it much easier to develop and test computer-vision algorithms for future planetary exploration. We envision that the `Astrobiology Phone-cam exploration system can be fruitfully used in other problem domains as well.



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