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首页> 外文期刊>AI communications >Drone-assisted automated plant diseases identification using spiking deep conventional neural learning
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Drone-assisted automated plant diseases identification using spiking deep conventional neural learning

机译:无人机辅助自动化植物疾病鉴定使用尖锐的常规神经学习

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Detection and diagnosis of the plant diseases in the early stage significantly minimize yield losses. Image-based automated plant diseases identification (APDI) tools have started to been widely used in pest managements strategies. The current APDI systems rely on images captured in laboratory conditions, which hardens the usage of the APDI systems by smallholder farmers. In this study, we investigate whether the smallholder farmers can exploit APDI systems using their basic and cheap unmanned autonomous vehicles (UAVs) with standard cameras. To create the tomato images like the one taken by UAVs, we build a new dataset from a public dataset by using image processing tools. The dataset includes tomato leaf photographs separated into 10 classes (diseases or healthy). To detect the diseases, we develop a new hybrid detection model, called SpikingTomaNet, which merges a novel deep convolutional neural network model with spiking neural network (SNN) model. This hybrid model provides both better accuracy rates for the plant diseases identification and more energy efficiency for the battery-constrained UAVs due to the SNN's event-driven architecture. In this hybrid model, the features extracted from the CNN model are used as the input layer for SNNs. To assess our approach's performance, firstly, we compare the proposed CNN model inside the developed hybrid model with well-known AlexNet, VggNet-5 and LeNet models. Secondly, we compare the developed hybrid model with three hybrid models composed of combinations of the well-known models and SNN model. To train and test the proposed neural network, 32022 images in the dataset are exploited. The results show that the SNN method significantly increases the success, especially in the augmented dataset. The experiment result shows that while the proposed hybrid model provides 97.78% accuracy on original images, its success on the created datasets is between 59.97%-82.98%. In addition, the results shows that the proposed hybrid model provides better overall accuracy in the classification of the diseases in comparison to the well-known models and LeNet and their combination with SNN.
机译:早期植物疾病的检测和诊断显着降低了产量损失。基于图像的自动化植物疾病识别(APDI)工具已经开始广泛用于害虫管理策略。目前的APDI系统依赖于在实验室条件下捕获的图像,这使小农农民使用APDI系统的使用。在这项研究中,我们调查小农农民是否可以利用其基本和廉价的无人驾驶自动车辆(无人机)使用标准相机来利用APDI系统。要创建像UAVS所拍摄的番茄图像,我们使用图像处理工具从公共数据集中构建新数据集。数据集包括番茄叶照片分为10级(疾病或健康)。为了检测疾病,我们开发了一种名为SpikingTomanet的新的混合检测模型,该模型合并了一种具有尖峰神经网络(SNN)模型的新型深度卷积神经网络模型。由于SNN的事件驱动的架构,该混合模型为植物疾病识别和电池受限的无人机提供的更好的能效。在该混合模型中,从CNN模型中提取的特征用作SNN的输入层。为了评估我们的方法的性能,首先,我们将建议的混合动力模型内的提议的CNN模型与众所周知的AlexNet,VGGNet-5和Lenet模型进行比较。其次,我们将开发的混合模型与三种混合模型进行了比较,由着名的模型和SNN模型组成。要培训和测试所提出的神经网络,利用数据集中的32022个图像。结果表明,SNN方法显着提高了成功,尤其是在增强数据集中。实验结果表明,虽然所提出的混合模型在原始图像上提供97.78%的精度,但其在创建的数据集中的成功介于59.97%-82.98%之间。此外,结果表明,与公知的模型和伦齿及其与SNN的组合相比,该提出的混合模型在疾病的分类中提供了更好的整体准确性。

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