2021
DOI: 10.7717/peerj-cs.774
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Gutter oil detection for food safety based on multi-feature machine learning and implementation on FPGA with approximate multipliers

Abstract: Since consuming gutter oil does great harm to people’s health, the Food Safety Administration has always been seeking for a more effective and timely supervision. As laboratory tests consume much time, and existing field tests have excessive limitations, a more comprehensive method is in great need. This is the first time a study proposes machine learning algorithms for real-time gutter oil detection under multiple feature dimensions. Moreover, it is deployed on FPGA to be low-power and portable for actual use… Show more

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