File: pcl_mls_smoothing.1

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.\" DO NOT MODIFY THIS FILE!  It was generated by help2man 1.40.10.
.TH PCL_MLS_SMOOTHING "1" "May 2014" "pcl_mls_smoothing 1.7.1" "User Commands"
.SH NAME
pcl_mls_smoothing \- pcl_mls_smoothing
.SH DESCRIPTION

Syntax is: pcl_mls_smoothing input.pcd output.pcd <options>


Moving Least Squares smoothing of a point cloud. For more information, use: pcl_mls_smoothing \fB\-h\fR

  where options are:

 \fB\-radius\fR X= sphere radius to be used for finding the k\-nearest neighbors used for fitting (default: 0.000000)

 \fB\-sqr_gauss_param\fR X = parameter used for the distance based weighting of neighbors (recommended = search_radius^2) (default: 0.000000)

 \fB\-use_polynomial_fit\fR X = decides whether the surface and normal are approximated using a polynomial or only via tangent estimation (default: 0)

 \fB\-polynomial_order\fR X = order of the polynomial to be fit (implicitly, use_polynomial_fit = 1) (default: 2)

.SH AUTHOR
pcl_mls_smoothing is part of Point Cloud Library (PCL) - www.pointclouds.org

The Point Cloud Library (PCL) is a standalone, large scale, open project for 2D/3D
image and point cloud processing.
.PP
This manual page was written by Leopold Palomo-Avellaneda <leo@alaxarxa.net> with
the help of help2man tool and some handmade arrangement for the Debian project
(and may be used by others).