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Author (up) Damkjer, Kristian L.; Foroosh, Hassan pdf  url
doi  openurl
  Title Mesh-free sparse representation of multidimensional LiDAR data Type Conference Article
  Year 2014 Publication Image Processing (ICIP), 2014 IEEE International Conference on Abbreviated Journal  
  Volume Issue Pages 4682-4686  
  Keywords optical radar; radar computing; statistical analysis; very large databases; arbitrary dimensions; compression techniques; light detection and ranging collection systems; local multidimensional statistics; mesh-free sparse representation; multidimensional LiDAR data; multidimensional information content; point clouds; spatial coordinates; surface model simplification algorithms; surface reconstruction; user data; very large data sets; entropy; equations; laser radar; mathematical model; surface reconstruction; surface treatment; three-dimensional displays; LiDAR; mesh-free simplification; multidimensional systems; point cloud; principal component analysis  
  Abstract Modern LiDAR collection systems generate very large data sets approaching several million to billions of point samples per product. Compression techniques have been developed to help manage the large data sets. However, sparsifying LiDAR survey data by means other than random decimation remains largely unexplored. In contrast, surface model simplification algorithms are well-established, especially with respect to the complementary problem of surface reconstruction. Unfortunately, surface model simplification algorithms are often not directly applicable to LiDAR survey data due to the true 3D nature of the data sets. Further, LiDAR data is often attributed with additional user data that should be considered as potentially salient information. This paper makes the following main contributions in this area: (i) We generalize some features defined on spatial coordinates to arbitrary dimensions and extend these features to provide local multidimensional statistics. (ii) We propose an approach for sparsifying point clouds similar to mesh-free surface simplification that preserves saliency with respect to the multidimensional information content. (iii) We show direct application to LiDAR data and evaluate the benefits in terms of level of sparsity versus entropy.  
  Address  
  Corporate Author Thesis  
  Publisher IEEE Place of Publication Editor  
  Language Summary Language Original Title  
  Series Editor Series Title Abbreviated Series Title  
  Series Volume Series Issue Edition  
  ISSN ISBN Medium  
  Area Expedition Conference IEEE International Conference on Image Processing (ICIP) 2014  
  Notes author copyright Approved yes  
  Call Number UCF @ kdamkjer @ Damkjer_2014 Serial 72  
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