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Video s3
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    Presenter(s)
    Xiaoyu Huang Headshot
    Display Name
    Xiaoyu Huang
    Affiliation
    Affiliation
    University of Edinburgh
    Country
    Abstract

    this paper presents detailed methodology of a Spiking Neural Network (SNN) based low-power design for radioisotope identification. A low power cost of 72 mW has been achieved on FPGA with the inference accuracy of 100% at 10 cm test distance and 97% at 25 cm. The design verification and chip validation methods are presented. It also discusses SNN simulation on SpiNNaker for rapid prototyping and various considerations specific to the application such as test distance, integration time and SNN hyperparameter selections.