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FROS: A fuzzy logic-based recogniser of olfactory signals. (English) Zbl 0994.68614

Summary: We describe FROS, a fuzzy logic-based recogniser of olfactory signals. FROS integrates two recognisers, namely the shapebased recogniser and the dynamic range-based recogniser. While the former uses a linguistic description of the shape of the signals, the latter exploits a fuzzy classification of their dynamic ranges. FROS was designed to classify signals produced by a sensor array that comprises conducting polymer sensors with partially overlapping sensitivities. The sensors are exposed to odorants and the resistance values are used for classification. Results of the application of FROS to two different test cases are also presented.

MSC:

68U99 Computing methodologies and applications
68T10 Pattern recognition, speech recognition
Full Text: DOI

References:

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