A Survey of Outlier Detection Methodologies, pp.1-43, 2004. ,
On discordant observations, Philosoph Mag, vol.23, pp.364-375, 1887. ,
Procedures for Detecting Outlying Observations in Samples, Technometrics, vol.11, issue.1, pp.1-21, 1969. ,
Outliers in Statistical Data, 1994. ,
Bathymétrie -Sondeurs, traitement des données, modèles numériques de terrain, pp.88-125, 2013. ,
, IHO Standards for Hydrographic Surveys, Special Publication, vol.44, 2008.
Automatic processing of high-rate, highdensity multibeam echosounder data, Geochemistry Geophysics Geosystems, vol.4, issue.6, 2003. ,
Detection and Elimination of Bathymetric Outliers in Multibeam Echosounder System Based on Robust Multi-quadric Method and Median Parameter Model, Journal of Engineering Science and Technology Review, vol.11, pp.70-78, 2018. ,
An Approach to Automatic Detection of outliers in Multibeam Echo Sounding Data, The Hydrographic Journal, vol.79, 1996. ,
Automatic Detection of Outliers in Multibeam Echo Sounding data, 2001. ,
Multibeam echosounder data cleaning through a hierarchic adaptive and robust local surfacing, Computers & Geosciences, vol.46, pp.330-339, 2012. ,
URL : https://hal.archives-ouvertes.fr/hal-00672672
Le filtrage des sondes erronées dans les sondages multifaisceaux, International Hydrographic Review, issue.2, 1992. ,
Outlier Detection for Swath Bathymetric Data Sets, Oceanic Imaging Conference, 0200. ,
Adaptive, variable resolution grids for bathymetric applications using a quadtree approach, Journal of Applied Geodesy, vol.12, issue.4, 2018. ,
Depth and Position Error Budget for Multibeam Echosounding, International Hydrographic Review, issue.2, 1995. ,
Detecting outliers: Do not use standard deviations around the mean, do use the median absolute deviation around the median, Journal of experimental social Psychology, 2013. ,
LOF: identifying density-based local outliers, SIGMOD Rec, vol.29, pp.93-104, 2000. ,
Automatic Detection of Outliers in Multibeam Echo Sounding Data, 2001. ,
Applied Logistic Regression, SAGE, 2002. ,
Random decision forests, Proceedings of the 3rd International Conference on Document Analysis and Recognition, pp.278-282, 1995. ,
C4.5, class imbalance, and cost sensitivity:why undersampling beats over-sampling, ICML-2003 Workshop: Learning with Imbalanced Data Sets, vol.II, 2003. ,
Greedy Function Approximation a gradient boosting machine, Ann. Statist, vol.29, issue.5, pp.1189-1232, 2001. ,
Evaluation: From Precision, Recall and F-Measure to ROC, Informedness, Markedness & Correlation, Journal of Machine Learning Technologies, vol.2, pp.37-63, 2011. ,
Applications of Machine Learning in Hydrographic Data Processing, 2019. ,