Some approaches to optimal cluster labeling with applications to remote sensing

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This paper presents some approaches for the problem of labeling clusters using information from a given set of labeled and unlabeled patterns. Assigning class labels to the clusters is formulated as finding the best label assignment over all possible label assignments with respect to a criterion. Labeling clusters is also viewed as obtaining probabilities of class labels to the clusters with the maximization of the likelihood function and probability of correct labeling as criteria. Closed form solutions are obtained for the probabilities of class labels to the clusters by maximizing a lower bound on the likelihood criterion. Fixed point iteration equations are developed for obtaining probabilities of class labels to the clusters. The problem of obtaining class labels to the clusters is further formulated as that of minimizing the variance of the proportion estimates of the classes that use both the given labeled and unlabeled patterns. Imperfections in the labels of the given labeled set are incorporated into the criteria. Furthermore, the results of application of these techniques in the processing of remotely sensed multispectral scanner imagery data are presented.

论文关键词:Aerospace imagery,Asymptotic variance,Cluster labeling,Label imperfections,Maximum likelihood,Mode,Probabilities of class labels,Probability of correct labeling,Probability of error,Remote sensing,Unlabeled patterns,Variance of proportion estimate

论文评审过程:Received 20 November 1980, Revised 5 May 1981, Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(82)90072-3