Title :
Arctic Soil Hydraulic Conductivity and Soil Type Recognition Based on Aerial Gamma-Ray Spectroscopy and Topographical Data
Author :
Pohjankukka, J. ; Nevalainen, P. ; Pahikkala, T. ; Hanninen, P. ; Hyvonen, E. ; Sutinen, R. ; Heikkonen, J.
Author_Institution :
Dept. of Inf. Technol., Univ. of Turku, Turku, Finland
Abstract :
A central characteristic of soil in the arctic is its load bearing capacity since that property influences forest harvester mobility, flooding dynamics and infrastructure potential. The hydraulic conductivity has the greatest dynamical influence to bearing capacity and hence is essential to measure or estimate. In addition, the arctic soil type information is needed in many cases, e.g. in roads and railways building planning. In this paper we propose a method for hydraulic conductivity estimation via linear regression on aerial gamma-ray spectroscopy and publicly available topographical data with derived elevation based features. The same data is also utilized for the arctic soil type recognition, both logistics regression and nearest neighbor classification results are reported. The classification results for logistic regression resulted in 44.5% prediction performance and 50.5% for 8-nearest neighbor classifier respectively. Linear regression results for estimating the hydraulic conductivity of the soil resulted in C-index value of 0.63. The hydraulic conductivity and soil type estimation results are promising and the proposed topographic elevation features are apparently new for remote sensing community and should also have a wider general interest.
Keywords :
remote sensing; soil; Arctic soil hydraulic conductivity; Arctic soil type information; C-index value; aerial gamma-ray spectroscopy; bearing capacity; flooding dynamics; forest harvester mobility; hydraulic conductivity estimation; infrastructure potential; remote sensing community; soil central characteristic; soil type recognition; topographic elevation features; topographical data; Conductivity; Gamma-rays; Linear regression; Logistics; Machinery; Soil; Standards;
Conference_Titel :
Pattern Recognition (ICPR), 2014 22nd International Conference on
Conference_Location :
Stockholm
DOI :
10.1109/ICPR.2014.319