Space-time multi type log Gaussian Cox processes with a view to modelling weeds (Q2771552)
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scientific article; zbMATH DE number 1705794
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Space-time multi type log Gaussian Cox processes with a view to modelling weeds |
scientific article; zbMATH DE number 1705794 |
Statements
17 February 2002
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bivariate point processes
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stationarity
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anisotropy
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covariance
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Space-time multi type log Gaussian Cox processes with a view to modelling weeds (English)
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The authors consider a bivariate point process \(X(t)=(X_1(t),X_2(t))\) on the plane \(R^2\) such that for some Gaussian \(Y_i(s)\), \(s\in R^2,\) conditionally on \((Y_1,Y_2)\), \(X_1(t)\) and \(X_2(t)\) are independent Poisson point processes with intensity functions \(\exp(Y_1(s))\) and \(\exp(Y_2(s))\), respectively. This model is called log Gaussian Cox process. The couple \((Y_1, Y_2)\) is supposed to be stationary and isotropic. Parametric and nonparametric (kernel) estimates for the covariances of \(Y_i\) are considered. Testing of nonstationarity and anisotropy is discussed. This technique is applied to the analysis of weeds proliferation.
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