2020
DOI: 10.13168/agg.2020.0031
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Performance comparison of least squares, iterative and global L1 norm minimization and exhaustive search methods for outlier detection in leveling networks

Abstract: Different approaches have been proposed to determine the possible outliers existing in a dataset. The most widely used consists in the application of the data snooping test over the least squares adjustment results. This strategy is very likely to succeed for the case of zero or one outliers but, contrary to what is often assumed, the same is not valid for the multiple outlier case, even in its iterative application scheme. Robust estimation, computed by iteratively reweighted least squares or a global optimiz… Show more

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Cited by 12 publications
(13 citation statements)
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“…For all networks, the standard deviation of the observations was given by σ i � 1.0(mm) * �� K i , where K i (in km) is the length of the respective leveling line. In the ascending order of the observation index, the lengths (in km) of each leveling line were as follows: for network A, [42,38,27,22,23,33]; for network B, [37,28,33,26,40,32,39,29,34,41]; and for network C, [30,34,25,37,28,38,29,35,31,26,33,36,27,32,24]. erefore, for example, σ i of the 4 th observation of network A (which is also the lowest σ i of all networks) is σ 4(Network A) � 1.0(mm) * �� 22 √ � 4.69 mm.…”
Section: Experiments and Resultsmentioning
confidence: 99%
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“…For all networks, the standard deviation of the observations was given by σ i � 1.0(mm) * �� K i , where K i (in km) is the length of the respective leveling line. In the ascending order of the observation index, the lengths (in km) of each leveling line were as follows: for network A, [42,38,27,22,23,33]; for network B, [37,28,33,26,40,32,39,29,34,41]; and for network C, [30,34,25,37,28,38,29,35,31,26,33,36,27,32,24]. erefore, for example, σ i of the 4 th observation of network A (which is also the lowest σ i of all networks) is σ 4(Network A) � 1.0(mm) * �� 22 √ � 4.69 mm.…”
Section: Experiments and Resultsmentioning
confidence: 99%
“…In particular, Minimum L1-norm is likely to provide higher outlier identification success rate than IDS for low-redundancy networks [15,22]. e minimum L1-norm solution may not be unique [23], and its vector of residuals in geodetic networks tends to be sparse, with many residuals being equal to zero (see, e.g., [20,24]). is means that corresponding observations are accepted as "perfect" observations, without any measurement errors.…”
Section: Introductionmentioning
confidence: 99%
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“…Some metaheuristic methods have also been used to solve some optimization problems in geodesy and surveying techniques, e.g., [ 37 , 38 , 39 ], but applications of SA in this field are rather limited. They include research on geodetic network design [ 40 , 41 ], the adjustment of geodetic measurements [ 42 , 43 ], LIDAR survey design [ 44 ] or coordinate transformation [ 34 ]. Deformation measurements which are the subject of this work can be included in the same area.…”
Section: Methodsmentioning
confidence: 99%