基于注意力密度的海藻群算法在精准农业中实现植物叶片病害检测与分类

S. Devi, A. Muthukumaravel
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引用次数: 3

摘要

最近的技术进步使精准农业能够提高作物的生产力和质量。由于植物病害主要影响作物生产和降低利润,因此需要必要的工具来早期发现植物病害。植物病害的自动检测对于识别植物病害的发生和采取补救措施至关重要。计算机视觉和人工智能技术的最新进展可用于设计有效的植物叶片病害检测模型。提出了一种新的基于关注的海藻群算法——基于densenet的植物叶片病害检测与分类(SSADN-PLDDC)技术。SSADN-PLDDC技术的主要目的是利用计算机视觉和图像处理方法识别植物叶片病害的存在。SSADN-PLDDC技术最初采用Gabor滤波对输入图像进行预处理。此外,利用带极限学习机(ELM)模型的SSA作为图像分类技术,利用SSA对ELM中涉及的参数进行最优调整。使用基准数据集验证了SSADN-PLDDC技术的实验结果分析,实验结果报告了SSADN-PLDDC技术相对于最近的方法的增强结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Salp Swarm Algorithm With Attention-Densenet Enabled Plant Leaf Disease Detection And Classification In Precision Agriculture
Recent technological advancements enable precision agriculture to improve crop productivity and quality. Since plant diseases mainly affect crop production and reduce profit, necessary tools are needed to detect plant diseases at an earlier stage. Automatic detection of plant diseases becomes essential to identify the occurrence of plant diseases and take remedial actions. The latest advancements of computer vision and artificial intelligence techniques can be used to design effective plant leaf disease detection models. This paper presents a novel salp swarm algorithm with attention-DenseNet enabled plant leaf disease detection and classification (SSADN-PLDDC) technique for precision agriculture. The major intention of the SSADN-PLDDC technique is to recognize the presence of plant leaf diseases using computer vision and image processing methods. The SSADN-PLDDC technique initially employs Gabor filtering to pre-process the input images. In addition, SSA with extreme learning machine (ELM) model is utilized as an image classification technique where the parametersinvolved in the ELM are optimally adjusted by using SSA. The experimental result analysis of the SSADN-PLDDC technique is validated using benchmark dataset and the experimental results reported the enhanced outcomes of the SSADN-PLDDC technique over the recent approaches.
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