Carroll, Raymond; Delaigle, Aurore; Hall, Peter - In: Journal of the American Statistical Association 107 (2012) 499, pp. 1166-1177
In the present study, we consider the problem of classifying spatial data distorted by a linear transformation or convolution and contaminated by additive random noise. In this setting, we show that classifier performance can be improved if we carefully invert the data before the classifier is...