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Artificial intelligence in pest insect monitoring

机译:人工智能在害虫监测中

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Global problems of hunger and malnutrition induced us to introduce a new tool for semi-automated pest insect identification and monitoring: an artificial neural network system. Multilayer perceptrons, an artificial intelligence method, seem to be efficient for this purpose. We evaluated 101 European economically important thrips (Thysanoptera) species: extrapolation of the verification test data indicated 95% reliability at least for some taxa analysed. Mainly quantitative morphometric characters, such as head, clavus, wing, ovipositor length and width, formed the input variable computation set in a Trajan neural network simulator. The technique may be combined with digital image analysis.
机译:饥饿和营养不良的全球性问题促使我们引入了一种用于半自动化病虫害识别和监测的新工具:人工神经网络系统。多层感知器(一种人工智能方法)似乎对于此目的是有效的。我们评估了101种欧洲经济上重要的蓟马(Thysanoptera)物种:外推验证测试数据表明,至少对于某些经分析的分类单元而言,可靠性为95%。在Trajan神经网络模拟器中,主要是定量形态特征,例如头部,锁骨,翅膀,产卵器的长度和宽度,形成了输入变量计算集。该技术可以与数字图像分析相结合。

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