Temporal Surface Reconstruction
Item
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Title
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en_US
Temporal Surface Reconstruction
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Creator
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en_US
Heel, Joachim
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Date
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2004-10-20T19:57:38Z
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Date Available
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2004-10-20T19:57:38Z
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Date Issued
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en_US
1991-05-01
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Identifier
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en_US
AITR-1296
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Abstract
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en_US
This thesis investigates the problem of estimating the three-dimensional structure of a scene from a sequence of images. Structure information is recovered from images continuously using shading, motion or other visual mechanisms. A Kalman filter represents structure in a dense depth map. With each new image, the filter first updates the current depth map by a minimum variance estimate that best fits the new image data and the previous estimate. Then the structure estimate is predicted for the next time step by a transformation that accounts for relative camera motion. Experimental evaluation shows the significant improvement in quality and computation time that can be achieved using this technique.
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Extent
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en_US
149 p.
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23730458 bytes
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8484961 bytes
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Format
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application/postscript
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application/pdf
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Language
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en_US
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Relation
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en_US
AITR-1296
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Subject
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en_US
3D reconstruction
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Kalman Filter
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en_US
temporal vision
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en_US
structuresestimation
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en_US
surface reconstruction