Limited Receptive Area Neural Classifier for Larvae Recognition

نویسندگان

  • Tatiana Baidyk
  • Oleksandr Makeyev
  • Ernst Kussul
  • Marco Antonio Rodríguez Flores
چکیده

In recent years, large amounts of pesticides are used to achieve record harvests (for example, DDT has been used in Mexico for more than 50 years) [1], [2]). DDT is forbidden in the U.S., Canada and Europe because causes cancer. To reduce the pesticide amount it is necessary to locate precisely the distribution of insects and caterpillars. This task is very important not only for crops but also for monitoring forests. The forest health demands the efforts to fight threats of different kinds of insects and caterpillars [3], for example with Emerald ash borer, Agrilus planipennis Fairmaire [4].

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تاریخ انتشار 2012