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Flying Insect Detection and Classification with Inexpensive Sensors
Authors:Yanping Chen  Adena Why  Gustavo Batista  Agenor Mafra-Neto  Eamonn Keogh
Affiliation:1Department of Computer Science and Engineering, University of California, Riverside;2Department of Entomology, University of California, Riverside;3Institute of Mathematics and Computer Sciences, University of São Paulo - USP;4ISCA Technologies
Abstract:An inexpensive, noninvasive system that could accurately classify flying insects would have important implications for entomological research, and allow for the development of many useful applications in vector and pest control for both medical and agricultural entomology. Given this, the last sixty years have seen many research efforts devoted to this task. To date, however, none of this research has had a lasting impact. In this work, we show that pseudo-acoustic optical sensors can produce superior data; that additional features, both intrinsic and extrinsic to the insect’s flight behavior, can be exploited to improve insect classification; that a Bayesian classification approach allows to efficiently learn classification models that are very robust to over-fitting, and a general classification framework allows to easily incorporate arbitrary number of features. We demonstrate the findings with large-scale experiments that dwarf all previous works combined, as measured by the number of insects and the number of species considered.
Keywords:Bioengineering   Issue 92   flying insect detection   automatic insect classification   pseudo-acoustic optical sensors   Bayesian classification framework   flight sound   circadian rhythm
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