Fuzzy ARTMAP systems with graded signal function and with point-box coding
نویسندگان
چکیده
This study presents an analysis of two modified fuzzy ARTMAP neural networks. The modifications are first introduced mathematically and their performance is studied on benchmark examples. Then, the performance of the systems is examined on data from the domain of remote sensing. It is shown that each modified ARTMAP system achieves classification accuracy superior to that of standard fuzzy ARTMAP, while retaining comparable complexity of the internal code.
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