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Convolutional Neural Network for Automatic Identification of Plant Diseases with Limited Data

机译:卷积神经网络用于自动鉴定有限数据的植物疾病

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摘要

Automated identification of plant diseases is very important for crop protection. Most automated approaches aim to build classification models based on leaf or fruit images. These approaches usually require the collection and annotation of many images, which is difficult and costly process especially in the case of new or rare diseases. Therefore, in this study, we developed and evaluated several methods for identifying plant diseases with little data. Convolutional Neural Networks (CNNs) are used due to their superior ability to transfer learning. Three CNN architectures (ResNet18, ResNet34, and ResNet50) were used to build two baseline models, a Triplet network and a deep adversarial Metric Learning (DAML) approach. These approaches were trained from a large source domain dataset and then tuned to identify new diseases from few images, ranging from 5 to 50 images per disease. The proposed approaches were also evaluated in the case of identifying the disease and plant species together or only if the disease was identified, regardless of the affected plant. The evaluation results demonstrated that a baseline model trained with a large set of source field images can be adapted to classify new diseases from a small number of images. It can also take advantage of the availability of a larger number of images. In addition, by comparing it with metric learning methods, we found that baseline model has better transferability when the source domain images differ from the target domain images significantly or are captured in different conditions. It achieved an accuracy of 99% when the shift from source domain to target domain was small and 81% when that shift was large and outperformed all other competitive approaches.
机译:植物疾病的自动鉴定对于作物保护非常重要。大多数自动化方法旨在建立基于叶片或果实图像的分类模型。这些方法通常需要许多图像的收集和注释,这是困难且昂贵的过程,特别是在新的或罕见的疾病的情况下。因此,在本研究中,我们开发并评估了几种识别植物疾病的方法,少量数据。由于其卓越的转移学习能力,使用卷积神经网络(CNNS)。三个CNN架构(Reset18,Resnet34和Reset50)用于构建两个基线模型,三重网络和深度对冲度量学习(DIML)方法。这些方法从大源域数据集接受培训,然后调整以识别来自少数图像的新疾病,从每种疾病的5到50张图像。在鉴定疾病和植物种类的情况下,也可以在鉴定疾病的情况下进行评估,拟议的方法是在鉴定的情况下,无论受影响的植物如何。评估结果表明,用大集源场图像训练的基线模型可以适于对少量图像进行分类新疾病。它还可以利用更大数量的图像的可用性。另外,通过将其与度量学习方法进行比较,我们发现当源域图像显着与目标域图像不同或被捕获在不同的条件下时,基线模型具有更好的可转换性。当从源域转移到目标领域的转变时​​,它达到了99%的准确性,并且当该换档大而优于所有其他竞争方法时,81%。

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