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Interpolation of a surface from sets of discrete height data of different statistical characteristicsThis paper presents and analyzes a method for the interpolation of a unique surface from two sets of independent digital height data of differing statistical characteristics. This method is based on linear prediction and thus relies on the concepts of auto- and cross-covariance functions. The linear prediction algorithm for two sets of digital height measurements is first derived and then evaluated using the method of moving averages and bilinear interpolation for comparison. It is found that the overall root mean square interpolation errors of linear prediction are similar to those from moving averages and bilinear interpolation. This accuracy performance, together with the well known potential for controlled filtering of measuring errors and good-behavior in areas of poor control, makes linear prediction a versatile and general method for interpolating a unique surface from two sets of digital height data, with applications in photogrammetric mapping, remote sensing, and other fields.
Document ID
19770036137
Acquisition Source
Legacy CDMS
Document Type
Conference Proceedings
Authors
Leberl, F.
(California Institute of Technology, Jet Propulsion Laboratory, Space Sciences Div., Pasadena Calif., United States)
Date Acquired
August 9, 2013
Publication Date
January 1, 1976
Subject Category
Earth Resources And Remote Sensing
Meeting Information
Meeting: Annual Meeting of American Society of Photogrammetry
Location: Washington, DC
Start Date: February 22, 1976
End Date: February 28, 1976
Accession Number
77A18989
Distribution Limits
Public
Copyright
Other

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