Adaptive neighborhood selection for real-time surface normal estimation from organized point cloud data using integral images

Intelligent Robots and Systems(2012)

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摘要
In this paper we present two real-time methods for estimating surface normals from organized point cloud data. The proposed algorithms use integral images to perform highly efficient border- and depth-dependent smoothing and covariance estimation. We show that this approach makes it possible to obtain robust surface normals from large point clouds at high frame rates and therefore, can be used in real-time computer vision algorithms that make use of Kinect-like data.
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关键词
adaptive signal processing,computer vision,covariance analysis,integral equations,spatial variables measurement,Kinect-like data,adaptive neighborhood selection,border-dependent smoothing,computer vision algorithm,covariance estimation,depth-dependent smoothing,integral image,organized point cloud data,real-time surface normal estimation
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