When applying single outlier detection techniques, such as the Tau (Ï„) test, to examine the residuals of observations for outliers, the number of detected observations in any iteration of adjustment is most often more numerous than the actual number of true outliers. A new technique is proposed which estimates the number of outliers in a network by evaluating the redundancy contributions of the detected observations. In this way, a number of potential outliers can be identified and eliminated in each iteration of an adjustment. This leads to higher efficiency in data snooping of geodetic networks. The technique is illustrated with some numerical examples.
History
Publication title
Journal of Geodesy
Volume
70
Issue
8
Pagination
489-498
ISSN
0949-7714
Department/School
School of Geography, Planning and Spatial Sciences
Publisher
Springer-Verlag
Place of publication
Berlin, Germany
Repository Status
Restricted
Socio-economic Objectives
Expanding knowledge in philosophy and religious studies