2016
DOI: 10.1117/12.2228154
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Instance influence estimation for hyperspectral target signature characterization using extended functions of multiple instances

Abstract: The Extended Functions of Multiple Instances (eFUMI) algorithm 1 is a generalization of Multiple Instance Learning (MIL). In eFUMI, only bag level (i.e. set level) labels are needed to estimate target signatures from mixed data. The training bags in eFUMI are labeled positive if any data point in a bag contains or represents any proportion of the target signature and are labeled as a negative bag if all data points in the bag do not represent any target. From these imprecise labels, eFUMI has been shown to be … Show more

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