Unsupervised Learning for Spectral Data Analysis as a Novel Sensor for Identifying Rodent Infestation in Urban Environments

Omar Costilla Reyes, Zachary Coldrick, Bruce Grieve

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    Abstract

    Rodent urine is known to fluoresce. This research aims to use spectral imaging data to detect rodent activity via chromophores. We introduce unsupervised learning techniques for classification and clustering of rodent urine samples from the
    spectral data directly. We classify and compare the rodent urine against additional chemical compounds such as human urine and coffee to validate our analysis and models. In order to facilitate the visualisation of the chemical compound’s spectral data, we use manifold techniques for spectral clustering visualisation.
    Original languageEnglish
    Pages993
    Number of pages995
    DOIs
    Publication statusPublished - 6 Nov 2017
    EventIEEE Sensors 2017 Conference - SEC, Glasgow, United Kingdom
    Duration: 29 Oct 20171 Nov 2017

    Conference

    ConferenceIEEE Sensors 2017 Conference
    Country/TerritoryUnited Kingdom
    CityGlasgow
    Period29/10/171/11/17

    Keywords

    • rodent infestation detection
    • rodent urine classification
    • urine metabolites
    • unsupervised learning
    • manifold learning

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