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Using a one-dimensional convolutional neural network with a conditional generative adversarial network to classify plant electrical signals

机译:使用具有条件生成的对冲网络的一维卷积神经网络来分类工厂电信号

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摘要

Identification of salt tolerance of crops usually requires long-term observation of morphology, or physiological and biochemical experiments, which are time-consuming and laborious tasks. This paper proposes a model, based on a one-dimensional convolutional neural network (1D-CNN) with a conditional generative adversarial network (CGAN), which can quickly and effectively identify the salt tolerance of the seedlings using plant electrical signals at the early seedling stage. To address the problem of the small-scale dataset, the improved CGAN was used for sample augmentation of plant electrical signals under salt stress. The 1D-CNN can extract features efficiently and automatically and distinguish between salt-tolerant and salt-sensitive varieties. Furthermore, the 1D-CNN was trained using real samples and a training set augmented with generated samples, separately. After data augmentation by the improved CGAN, the accuracy of the CNN increased to 92.31%, and the classification performance was better than that of the traditional method. In conclusion, this method is useful and promising for identifying the salt tolerance of plants at the early seedling stage. It is also applicable to other 1D signals with small-scale datasets, and to other types of crops.
机译:鉴定作物的耐盐通常需要长期观察形态,或生理和生化实验,这些实验是耗时和费力的任务。本文提出了一种基于一维卷积神经网络(1D-CNN)的模型,其具有条件生成的对抗网络(CGAN),可以快速有效地识别在早期幼苗的植物电信号幼苗的耐盐性阶段。为了解决小规模数据集的问题,改进的Cgan用于盐胁迫下的植物电信号的样品增强。 1D-CNN可以有效地和自动提取特征,并区分耐盐性和盐敏感品种。此外,使用真实样本训练1D-CNN,并分别使用产生的样品进行训练。通过改进的CGAN增强后,CNN的准确性增加到92.31%,分类性能优于传统方法的分类。总之,该方法是有用的,并且有助于鉴定早期幼苗阶段植物的耐盐性。它还适用于具有小规模数据集的其他1D信号,以及其他类型的作物。

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