This paper develops a new approach to fraud detection in honey. Specifically, we examine
adulterating honey with sugar and use hyperspectral imaging and machine learning techniques
to detect adulteration. The main contributions of this paper are introducing a new
feature smoothing technique to conform to the classification model used to detect
the adulterated samples and the perpetration of an adulterated honey data set using
hyperspectral imaging, which has been made available online for the first time. Above
95%
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