作物有害生物U-SegNet分类

A. A. Rani, K. L. Prasanna, Mohd. Shaikhul Ashraf, Amar Kumar Dey, Md. Abul Ala Walid, D. R. K. Saikanth
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引用次数: 5

摘要

农业病虫害是一个长期存在的问题,一直是造成年产量大幅下降的原因。深度学习(DL)模型在面部识别方面非常有效,这已经不是什么秘密了,因此许多农业行业的人都对它很好奇。由于现有有害生物识别方法的算法复杂,且缺乏相关数据,因此对有害生物识别和分类的准确性较低。当昆虫被误认为是另一种害虫时,可能会使用错误的杀虫剂,对作物生产力和环境产生负面影响。使用预训练的深度学习架构,如Unet和ResNet,将提出的模型与建议的U-SegNet进行昆虫分类比较。这项研究还加强了数据,以防止网络变得过于专业化。通过检查超参数的影响,分析了所提出模型的准确性。最高可能的准确分类率达到了93.54%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification for Crop Pest on U-SegNet
As a long-standing issue, pests and illnesses in agriculture consistently cause large annual yield decreases. It's no secret that deep learning (DL) models are quite effective in facial recognition, therefore many people in the agricultural industry are curious about them. Since the algorithms used in existing methods of pest identification are sophisticated and there is a shortage of relevant data, the methods' accuracy in recognising and categorizing pests is low. When insects are misidentified as another type of pest, the wrong pesticides may be used, negatively affecting both crop productivity and the environment. Pre-trained deep learning architectures like Unet and ResNet were used to compare the proposed model to the suggested U-SegNet for insect categorization. This study also enhances the data to stop the network from becoming overly specialized. The accuracy of the proposed model has been analyzed by examining the impact of hyperparameters. The highest possible accurate classification rate has been accomplished at 93.54%.
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