“…We therefore define the neighboring CM's by means of the original central sample CM, i.e., , with the factors being real scalars. Solving the log likelihood equation with respect to these factors, i.e., , yields (27) This shows, that the overall highest probability (26) is obtained, if the neighbors within the connection filter are given as . The mean CM estimate from this specific filter is biased as , and to derive the expression of the bias resulting from this filter, we insert in the MLE for the mean CM (17) giving (28) This expression only depends on the number of looks of the original data, , on the number of neighbors within the connection filter, , and on the dimension of the CM, .…”