River ice breakup classification using dual- (HH&HV) or compact-polarization RADARSAT Constellation Mission data

被引:1
|
作者
Geldsetzer, Torsten [1 ]
Svacina, Nicolas [1 ]
Tolszczuk-Leclerc, Simon [1 ]
van der Sanden, Joost [1 ]
机构
[1] Nat Resources Canada, Canada Ctr Mapping & Earth Observat, 580 Booth St, Ottawa, ON K1A 0E4, Canada
关键词
River ice breakup; Ice jams; Synthetic aperture radar; RADARSAT Constellation Mission; Compact polarimetry; Recursive partitioning; WIND; BACKSCATTER; PARAMETERS; SURFACE; LAKE;
D O I
10.1016/j.rse.2024.114313
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Ice jams and associated flooding during river ice breakup are seasonal hazards for many northern communities. Synthetic Aperture Radar (SAR) data enable timely monitoring of river ice conditions in inclement weather. River ice types and open water are discriminated during breakup using dual-polarized (HH & HV; DPH) and compact polarimetric (CP) C-band SAR imagery from the RADARSAT Constellation Mission (RCM). Study areas comprise nineteen locations on rivers in northern Ontario, the Northwest Territories, and Alberta, Canada. Rubble ice, sheet ice, and open water areas are sampled in RCM imagery using corroborating evidence from shoreline cameras and oblique airborne photography. Samples are obtained in the incidence angle range 19 degrees to 48 degrees, for open water with various wind speeds and flow conditions, and for rubble ice and sheet ice with varying surface roughness, snow cover, and wetness. Discrimination relies on a primary classification of rubble ice, sheet ice, and open water, and a secondary classification of ice roughness. The primary classification model development uses a recursive-partitioning machine-learning technique. Overall accuracies for the best DPH models are 83.8% to 89.6%, depending on image noise floor. DPH models use both HH and HV polarizations for low noise floor image modes, whereas only HH is used for higher noise floor image modes. The best CP model accuracy is 90.2%, using the RL, RR, and RVRH parameters. Secondary classification associates increasing ice roughness with increasing HH backscatter for DPH data, and with increasing RH backscatter for CP data. The angular dependencies of rubble ice or sheet ice are used to normalize backscatter, which is then divided into roughness categories. The DPH and CP classification models are named IceBC-DP and IceBC-CP, respectively. Qualitative analysis illustrates good overall ice type and open water classification. Confounding situations are mixed pixel issues, whitewater and wind roughening of water, moist snow microwave absorption, and superficial water on sheet ice. The development of robust methods for monitoring ice jam formation with RCM is an operational concern for departments within the Government of Canada and within Provincial and Territorial Governments.
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页数:14
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