Intelligent Lighting in Rain Peter Barnum September 18, 2008.

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Presentation transcript:

Intelligent Lighting in Rain Peter Barnum September 18, 2008

A scene at night

Lighting with a projector

The naïve adaptive solution

Is the naïve solution feasible? 1.2 m 9 m/s 1.2 m 600 pixels =.002 m/pixel.002 m/pixel 9 m/s =.0002 s/pixel This is too fast! A standard video camera can only capture one frame every.03 seconds

Detection and prediction Time=0 seconds Time=1/50 seconds

Now what? Wow, are we done?!Wow, are we done?! Not quite. Time measurements are inaccurate.Not quite. Time measurements are inaccurate. The solution?The solution? Additional detection planes?Additional detection planes? Additional cameras?Additional cameras? Suggestions?Suggestions?