Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T DIRSIG Video Simulation Tim Hattenberger Paul Lee.

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Presentation transcript:

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T DIRSIG Video Simulation Tim Hattenberger Paul Lee

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T MegaScene Overview North Rochester, NY Ikonos North

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T MegaScene Tiles 4 &

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T

R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Scene Construction Overview CAD Models from Rhino3D ASD and Cary Reflectances Tree Models from Tree Pro DIRSIG Scene Building Tools Facetize Terrain Terrain Attribute Maps

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Moving Targets: Truck

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Moving Targets: Tank

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Moving Targets: Jet

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Moving Targets: Cars

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Moving Targets: Helicopter

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Moving Targets: People

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T JetFlightLine Tank Helicopter People Convoy Path Line Car #2 Path Line Car #1 Path Line North

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Platform Parameters PositionPosition –Stationary/static flight profile –85 degrees elevation AltitudeAltitude –99619 meters Solar orientationSolar orientation –60 degrees elevation –230 degrees azimuth (East of North)

Digital Imaging and Remote Sensing Laboratory R.I.TR.I.TR.I.TR.I.T R.I.TR.I.TR.I.TR.I.T Instrument Parameters Detector array sizeDetector array size –2048 x 2048 Focal lengthFocal length –3964 millimeters Detector sizeDetector size –12 microns GSDGSD –0.3 meters (12 inches) Spectral bandsSpectral bands –Pan:0.400 – –Blue:0.450 – –Green:0.510 – –Red: – –NIR: – 0.900