Abstract

The brightness temperatures (Tbs) observed by the Special Sensor Microwave/Imager (SSM/I) radiometer are sensitive to the changes in land surface snow conditions. Previously developed SSM/I snow classification algorithms have limitations and do not work properly for terrain where forests overlay snow cover. In this study, the authors applied unsupervised cluster analysis to define 6 snow classes in Tb observations, assessing both sparseand medium-vegetated region classes. Typical SSM/I Tb signature, in terms of cluster means, of each snow class was determined by calculating the mean Tbs of the corresponding cluster. A single-hidden-layer backpropagation (backprop) artificial neural network (ANN) classifier was designed to learn the 6 Tb patterns. Classification performance, in terms of error rate (%), was as small as 2.4%. This study confirms the potential of using cluster means in ANN supervised learning, and suggests a nonlinear retrieval method towards making the inferences of snow classes from SSM/I data over varied terrain operational. Improvement is expected by identifying more SSM/I Tb signatures of different land surface types to train the ANN classifier.

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